This following section contains a list of all components which are available in Isaac SDK. For each component, the incoming and outgoing message channels and the corresponding message types are listed. Additionally, all parameters with their names and types and corresponding default values are explained.
The following table gives an overview over all components. The columns ‘# Incoming’, ‘# Outgoing’ and ‘# Parameters’ indicate how many incoming message channels, outgoing message channels and parameters the corresponding module has.
Namespace |
Name |
# Incoming |
# Outgoing |
# Parameters |
---|---|---|---|---|
isaac | AdafruitNeoPixelLedStrip | 1 | 0 | 1 |
isaac | ArgusCsiCamera | 0 | 1 | 5 |
isaac | ImageComparison | 2 | 0 | 2 |
isaac | Joystick | 0 | 1 | 7 |
isaac | LivoxLidar | 0 | 1 | 4 |
isaac | PanTiltDriver | 1 | 2 | 14 |
isaac | RealsenseCamera | 0 | 4 | 16 |
isaac | SegwayRmpDriver | 1 | 1 | 5 |
isaac | SerialBMI160 | 0 | 1 | 1 |
isaac | SimpleLed | 0 | 1 | 0 |
isaac | SlackBot | 1 | 1 | 2 |
isaac | StereoVisualOdometry | 5 | 3 | 8 |
isaac | TorchInferenceTestDisplayOutput | 1 | 0 | 0 |
isaac | TorchInferenceTestSendInput | 0 | 1 | 1 |
isaac | V4L2Camera | 0 | 1 | 16 |
isaac | Vicon | 0 | 2 | 3 |
isaac | ZedCamera | 0 | 5 | 17 |
isaac.alice | BufferAllocatorReport | 0 | 0 | 0 |
isaac.alice | ChannelMonitor | 0 | 0 | 2 |
isaac.alice | CheckJetsonPerformanceModel | 0 | 0 | 3 |
isaac.alice | CheckOperatingSystem | 0 | 0 | 10 |
isaac.alice | Config | 0 | 0 | 0 |
isaac.alice | ConfigLoader | 0 | 0 | 1 |
isaac.alice | Failsafe | 0 | 0 | 1 |
isaac.alice | FailsafeHeartbeat | 0 | 0 | 3 |
isaac.alice | JsonToProto | 0 | 1 | 0 |
isaac.alice | LifecycleReport | 0 | 0 | 0 |
isaac.alice | MessageLedger | 0 | 0 | 1 |
isaac.alice | MessagePassingReport | 0 | 0 | 0 |
isaac.alice | Pose | 0 | 0 | 0 |
isaac.alice | Pose2Comparer | 0 | 0 | 5 |
isaac.alice | PoseFromFile | 0 | 0 | 3 |
isaac.alice | PoseInitializer | 0 | 0 | 9 |
isaac.alice | PoseMessageInjector | 1 | 0 | 0 |
isaac.alice | PoseToFile | 0 | 0 | 3 |
isaac.alice | PoseToMessage | 0 | 1 | 2 |
isaac.alice | PoseTree | 0 | 0 | 0 |
isaac.alice | PoseTreeRelink | 0 | 0 | 3 |
isaac.alice | ProtoToJson | 0 | 1 | 0 |
isaac.alice | PyCodelet | 0 | 0 | 1 |
isaac.alice | Random | 0 | 0 | 2 |
isaac.alice | Recorder | 0 | 0 | 4 |
isaac.alice | Replay | 0 | 0 | 6 |
isaac.alice | ReplayBridge | 1 | 1 | 1 |
isaac.alice | Scheduling | 0 | 0 | 4 |
isaac.alice | Sight | 0 | 0 | 0 |
isaac.alice | Subgraph | 0 | 0 | 0 |
isaac.alice | Subprocess | 0 | 0 | 2 |
isaac.alice | TcpPublisher | 0 | 0 | 1 |
isaac.alice | TcpSubscriber | 0 | 0 | 4 |
isaac.alice | Throttle | 0 | 0 | 6 |
isaac.alice | TimeOffset | 0 | 0 | 3 |
isaac.alice | TimeSynchronizer | 0 | 0 | 0 |
isaac.audio | AudioCapture | 0 | 1 | 5 |
isaac.audio | AudioEnergyCalculation | 1 | 1 | 2 |
isaac.audio | AudioFileLoader | 1 | 1 | 3 |
isaac.audio | AudioPlayback | 1 | 0 | 1 |
isaac.audio | SaveAudioToFile | 1 | 0 | 2 |
isaac.audio | SoundSourceLocalization | 1 | 1 | 4 |
isaac.audio | TensorToAudioDecoder | 1 | 1 | 2 |
isaac.audio | TextToMel | 1 | 1 | 1 |
isaac.audio | VoiceCommandConstruction | 1 | 1 | 7 |
isaac.audio | VoiceCommandFeatureExtraction | 1 | 1 | 7 |
isaac.composite | CompositeAtlas | 0 | 0 | 1 |
isaac.composite | CompositeMetric | 0 | 0 | 4 |
isaac.composite | CompositePublisher | 0 | 1 | 5 |
isaac.composite | FollowPath | 2 | 1 | 3 |
isaac.deepstream | Pipeline | 0 | 0 | 1 |
isaac.detect_net | DetectNetDecoder | 2 | 1 | 7 |
isaac.dynamixel | DynamixelDriver | 1 | 1 | 10 |
isaac.flatscan_localization | GradientDescentLocalization | 1 | 0 | 4 |
isaac.flatscan_localization | GridSearchLocalizer | 2 | 0 | 12 |
isaac.flatscan_localization | LocalizationMonitor | 1 | 0 | 8 |
isaac.flatscan_localization | ParticleFilterLocalization | 2 | 1 | 12 |
isaac.flatscan_localization | ParticleSwarmLocalization | 1 | 0 | 6 |
isaac.flatsim | DifferentialBasePhysics | 1 | 1 | 8 |
isaac.flatsim | DifferentialBaseSimulator | 2 | 2 | 7 |
isaac.flatsim | FlatscanNoiser | 1 | 1 | 7 |
isaac.flatsim | SimRangeScan | 0 | 1 | 7 |
isaac.fuzzy | EfllFuzzyEngineExample | 0 | 0 | 0 |
isaac.fuzzy | LfllFuzzyEngineExample | 0 | 0 | 0 |
isaac.gtc_china | PanTiltGoto | 1 | 1 | 3 |
isaac.hgmm | HgmmPointCloudMatching | 1 | 0 | 10 |
isaac.imu | IioBmi160 | 0 | 1 | 2 |
isaac.imu | ImuCalibration2D | 1 | 0 | 3 |
isaac.imu | ImuCorrector | 1 | 1 | 3 |
isaac.imu | ImuSim | 1 | 1 | 7 |
isaac.json | JsonMockup | 0 | 2 | 4 |
isaac.json | JsonReplay | 0 | 1 | 1 |
isaac.json | JsonTcpClient | 0 | 0 | 5 |
isaac.json | JsonWriter | 2 | 0 | 3 |
isaac.kaya | KayaBaseDriver | 2 | 2 | 4 |
isaac.kinova_jaco | KinovaJaco | 1 | 1 | 5 |
isaac.laikago | LaikagoDriver | 1 | 2 | 5 |
isaac.lidar_slam | Cartographer | 1 | 0 | 6 |
isaac.lidar_slam | GMapping | 2 | 0 | 15 |
isaac.map | AdditionFlatmapCost | 0 | 0 | 0 |
isaac.map | KinematicTree | 0 | 0 | 1 |
isaac.map | Map | 0 | 0 | 2 |
isaac.map | MapBridge | 1 | 1 | 0 |
isaac.map | MultiplicationFlatmapCost | 0 | 0 | 0 |
isaac.map | ObstacleAtlas | 0 | 0 | 1 |
isaac.map | OccupancyFlatmapCost | 0 | 0 | 4 |
isaac.map | OccupancyGridMapLayer | 0 | 0 | 3 |
isaac.map | PolygonFlatmapCost | 0 | 0 | 5 |
isaac.map | PolygonMapLayer | 0 | 0 | 5 |
isaac.map | PolylineFlatmapCost | 0 | 0 | 8 |
isaac.map | Spline | 0 | 1 | 1 |
isaac.map | SurfletModelAtlas | 0 | 0 | 1 |
isaac.map | SurfletModelPublisher | 0 | 1 | 5 |
isaac.map | WaypointMapLayer | 0 | 0 | 1 |
isaac.message_generators | BinaryTensorGenerator | 0 | 1 | 2 |
isaac.message_generators | CameraGenerator | 0 | 3 | 2 |
isaac.message_generators | ConfusionMatrixGenerator | 0 | 1 | 0 |
isaac.message_generators | Detections2Generator | 0 | 1 | 1 |
isaac.message_generators | Detections3Generator | 0 | 1 | 4 |
isaac.message_generators | DifferentialBaseControlGenerator | 0 | 1 | 2 |
isaac.message_generators | DifferentialBaseStateGenerator | 0 | 1 | 4 |
isaac.message_generators | FlatscanGenerator | 0 | 1 | 6 |
isaac.message_generators | HolonomicBaseControlGenerator | 0 | 1 | 3 |
isaac.message_generators | ImageFeatureGenerator | 0 | 3 | 4 |
isaac.message_generators | ImageLoader | 0 | 2 | 12 |
isaac.message_generators | LatticeGenerator | 0 | 1 | 5 |
isaac.message_generators | PanTiltStateGenerator | 0 | 1 | 8 |
isaac.message_generators | Plan2Generator | 0 | 1 | 5 |
isaac.message_generators | PointCloudGenerator | 0 | 1 | 5 |
isaac.message_generators | PoseGenerator | 0 | 0 | 4 |
isaac.message_generators | RangeScanGenerator | 0 | 1 | 11 |
isaac.message_generators | RigidBody3GroupGenerator | 0 | 1 | 7 |
isaac.message_generators | TensorGenerator | 0 | 1 | 2 |
isaac.message_generators | TrajectoryListGenerator | 0 | 1 | 4 |
isaac.ml | BoundingBoxPadding | 1 | 1 | 2 |
isaac.ml | ColorCameraEncoderCpu | 1 | 1 | 4 |
isaac.ml | ColorCameraEncoderCuda | 1 | 1 | 5 |
isaac.ml | ConfusionMatrixAggregator | 1 | 1 | 1 |
isaac.ml | Detection3Encoder | 1 | 1 | 1 |
isaac.ml | DetectionComparer | 2 | 1 | 2 |
isaac.ml | DetectionEncoder | 1 | 1 | 2 |
isaac.ml | DetectionImageExtraction | 2 | 1 | 4 |
isaac.ml | Detections3Comparer | 2 | 1 | 0 |
isaac.ml | EvaluateSegmentation | 2 | 0 | 0 |
isaac.ml | FilterDetectionsByLabel | 1 | 1 | 3 |
isaac.ml | GenerateKittiDataset | 2 | 0 | 3 |
isaac.ml | HeatmapDecoder | 1 | 1 | 2 |
isaac.ml | HeatmapEncoder | 1 | 1 | 0 |
isaac.ml | ImageDetectionExtraction | 2 | 1 | 3 |
isaac.ml | LabelToBoundingBox | 1 | 1 | 2 |
isaac.ml | ResizeDetections | 1 | 1 | 2 |
isaac.ml | RigidbodyToDetections3 | 1 | 1 | 1 |
isaac.ml | SampleAccumulator | 0 | 0 | 3 |
isaac.ml | SegmentationComparer | 2 | 1 | 2 |
isaac.ml | SegmentationDecoder | 1 | 1 | 1 |
isaac.ml | SegmentationEncoder | 1 | 1 | 7 |
isaac.ml | Teleportation | 1 | 2 | 26 |
isaac.ml | TensorArgMax | 1 | 1 | 2 |
isaac.ml | TensorChannelSum | 1 | 1 | 2 |
isaac.ml | TensorRTInference | 0 | 0 | 13 |
isaac.ml | TensorReshape | 1 | 1 | 1 |
isaac.ml | TensorflowInference | 0 | 0 | 4 |
isaac.ml | TorchInference | 0 | 0 | 4 |
isaac.ml | WaitUntilDetection | 1 | 1 | 2 |
isaac.navigation | BinaryToDistanceMap | 2 | 1 | 5 |
isaac.navigation | CollisionMonitor | 1 | 1 | 3 |
isaac.navigation | DetectionsToAtlas | 1 | 0 | 1 |
isaac.navigation | DifferentialBaseMockup | 1 | 2 | 8 |
isaac.navigation | DifferentialBaseOdometry | 1 | 1 | 6 |
isaac.navigation | DifferentialBaseWheelImuOdometry | 2 | 1 | 9 |
isaac.navigation | DistanceMap | 0 | 0 | 1 |
isaac.navigation | FollowPath | 2 | 1 | 7 |
isaac.navigation | GoToBehavior | 1 | 0 | 0 |
isaac.navigation | GoalMonitor | 2 | 1 | 3 |
isaac.navigation | GoalToPlan | 1 | 1 | 0 |
isaac.navigation | GotoWaypointBehavior | 1 | 0 | 2 |
isaac.navigation | HolonomicBaseWheelImuOdometry | 2 | 1 | 8 |
isaac.navigation | LocalMap | 2 | 2 | 7 |
isaac.navigation | MapWaypointAsGoal | 1 | 1 | 2 |
isaac.navigation | MapWaypointAsGoalSimulator | 1 | 0 | 3 |
isaac.navigation | MapWaypointsAsPlan | 0 | 1 | 3 |
isaac.navigation | MoveAndScan | 1 | 1 | 1 |
isaac.navigation | MoveUntilArrival | 2 | 0 | 3 |
isaac.navigation | NavigationMap | 0 | 0 | 4 |
isaac.navigation | NavigationMonitor | 1 | 1 | 5 |
isaac.navigation | OccupancyMapCleanup | 2 | 1 | 3 |
isaac.navigation | OccupancyToBinaryMap | 2 | 1 | 3 |
isaac.navigation | PoseAsGoal | 0 | 1 | 4 |
isaac.navigation | PoseHeatmapGenerator | 1 | 1 | 4 |
isaac.navigation | RandomMapPoseSampler | 0 | 0 | 2 |
isaac.navigation | RandomWalk | 1 | 1 | 2 |
isaac.navigation | RangeScanModelClassic | 0 | 0 | 5 |
isaac.navigation | RangeScanModelFlatloc | 0 | 0 | 7 |
isaac.navigation | RangeScanRobotRemoval | 1 | 1 | 2 |
isaac.navigation | RangeScanToObservationMap | 1 | 2 | 6 |
isaac.navigation | RobotPoseGenerator | 0 | 0 | 4 |
isaac.navigation | RobotRemoteControl | 2 | 1 | 8 |
isaac.navigation | RobotViewer | 1 | 0 | 5 |
isaac.navigation | TemporaryObstacle | 0 | 0 | 3 |
isaac.navigation | TravellingSalesman | 0 | 1 | 5 |
isaac.navigation | VirtualGamepadBridge | 1 | 2 | 3 |
isaac.navsim | ScenarioManager | 1 | 2 | 6 |
isaac.navsim | ScenarioMonitor | 4 | 1 | 9 |
isaac.object_pose_estimation | BoundingBoxEncoder | 1 | 1 | 2 |
isaac.object_pose_estimation | CodebookLookup | 1 | 2 | 2 |
isaac.object_pose_estimation | CodebookPoseSampler | 0 | 1 | 12 |
isaac.object_pose_estimation | CodebookWriter | 2 | 1 | 0 |
isaac.object_pose_estimation | ImagePoseEncoder | 3 | 1 | 0 |
isaac.object_pose_estimation | PoseCnnDecoder | 4 | 1 | 0 |
isaac.object_pose_estimation | PoseEncoder | 2 | 2 | 1 |
isaac.object_pose_estimation | PoseEstimation | 4 | 1 | 0 |
isaac.object_pose_refinement | PoseRefinement | 3 | 1 | 17 |
isaac.orb | ExtractAndVisualizeOrb | 1 | 2 | 5 |
isaac.perception | AprilTagsDetection | 1 | 1 | 3 |
isaac.perception | BirdViewProjection | 3 | 2 | 1 |
isaac.perception | ColorSpaceConverter | 1 | 1 | 3 |
isaac.perception | CropAndDownsample | 1 | 1 | 4 |
isaac.perception | CropAndDownsampleCuda | 1 | 1 | 3 |
isaac.perception | DisparityToDepth | 2 | 1 | 0 |
isaac.perception | FiducialAsGoal | 1 | 2 | 6 |
isaac.perception | ImageWarp | 1 | 1 | 5 |
isaac.perception | PointCloudAccumulator | 1 | 1 | 1 |
isaac.perception | RangeScanFlattening | 1 | 1 | 5 |
isaac.perception | RangeToPointCloud | 1 | 1 | 4 |
isaac.perception | ScanAccumulator | 1 | 1 | 3 |
isaac.perception | StereoDisparityNet | 2 | 1 | 3 |
isaac.perception | StereoImageSplitting | 1 | 2 | 9 |
isaac.perception | StereoRectification | 4 | 4 | 3 |
isaac.planner | DifferentialBaseControl | 1 | 1 | 11 |
isaac.planner | DifferentialBaseLqrPlanner | 2 | 1 | 40 |
isaac.planner | DifferentialBaseModel | 0 | 0 | 3 |
isaac.planner | DifferentialBaseVelocityIntegrator | 1 | 1 | 1 |
isaac.planner | GlobalPlanSmoother | 1 | 1 | 9 |
isaac.planner | GlobalPlanner | 2 | 1 | 16 |
isaac.planner | HolonomicBaseControl | 1 | 1 | 7 |
isaac.planner | MultiJointController | 2 | 1 | 3 |
isaac.planner | MultiJointLqrPlanner | 2 | 1 | 9 |
isaac.planner | Pose2GraphPlanner | 1 | 1 | 4 |
isaac.planner | Pose2GridGraphBuilder | 0 | 0 | 9 |
isaac.planner | SphericalRobotShapeComponent | 0 | 0 | 2 |
isaac.pwm | PwmController | 2 | 0 | 2 |
isaac.rgbd_processing | DepthEdges | 1 | 1 | 4 |
isaac.rgbd_processing | DepthImageFlattening | 1 | 1 | 12 |
isaac.rgbd_processing | DepthImageToPointCloud | 2 | 1 | 1 |
isaac.rgbd_processing | DepthNormals | 2 | 1 | 2 |
isaac.rgbd_processing | DepthPoints | 1 | 1 | 1 |
isaac.rgbd_processing | FreespaceFromDepth | 1 | 1 | 15 |
isaac.rl | DollyDockingAuxDecoder | 2 | 1 | 0 |
isaac.rl | DollyDockingBirth | 0 | 0 | 12 |
isaac.rl | DollyDockingDeath | 0 | 0 | 4 |
isaac.rl | DollyDockingReward | 0 | 0 | 6 |
isaac.rl | DollyDockingStateDecoder | 2 | 1 | 3 |
isaac.rl | DollyDockingStateNoiser | 0 | 0 | 1 |
isaac.rl | StateMachineGymFlow | 3 | 6 | 7 |
isaac.rl | TemporalBatching | 5 | 6 | 5 |
isaac.rl | TensorAggregator | 0 | 1 | 1 |
isaac.rl | TensorDeaggregator | 1 | 0 | 0 |
isaac.rl | TensorToCompositeVelocityProfile | 1 | 1 | 5 |
isaac.ros_bridge | CameraImageToRos | 0 | 0 | 1 |
isaac.ros_bridge | CameraInfoToRos | 0 | 0 | 1 |
isaac.ros_bridge | FlatscanToRos | 0 | 0 | 1 |
isaac.ros_bridge | GoalToRos | 0 | 0 | 2 |
isaac.ros_bridge | GoalToRosAction | 2 | 1 | 5 |
isaac.ros_bridge | OdometryToRos | 0 | 0 | 2 |
isaac.ros_bridge | PosesToRos | 0 | 0 | 2 |
isaac.ros_bridge | RosNode | 0 | 0 | 1 |
isaac.ros_bridge | RosToDifferentialBaseCommand | 0 | 0 | 0 |
isaac.ros_bridge | RosToImage | 0 | 0 | 0 |
isaac.ros_bridge | RosToPoses | 0 | 0 | 2 |
isaac.sight | AliceSight | 0 | 0 | 0 |
isaac.sight | SightWidget | 0 | 0 | 9 |
isaac.sight | WebsightServer | 0 | 0 | 6 |
isaac.skeleton_pose_estimation | OpenPoseDecoder | 3 | 1 | 14 |
isaac.stereo_depth | CoarseToFineStereoDepth | 2 | 1 | 3 |
isaac.superpixels | RgbdSuperpixelCostMap | 2 | 2 | 6 |
isaac.superpixels | RgbdSuperpixels | 5 | 2 | 18 |
isaac.superpixels | SuperpixelImageLabeling | 2 | 1 | 1 |
isaac.surflets | MinimumDistanceAssignment | 0 | 0 | 1 |
isaac.surflets | PointDistance | 0 | 0 | 0 |
isaac.surflets | PositionNormalDistance | 0 | 0 | 0 |
isaac.surflets | SurfletMasking | 3 | 1 | 1 |
isaac.utils | ColorCameraProtoSplitter | 1 | 3 | 1 |
isaac.utils | CompositeToDifferentialTrajectoryConverter | 1 | 1 | 1 |
isaac.utils | DetectionUnprojection | 2 | 1 | 3 |
isaac.utils | Detections3Filter | 1 | 1 | 6 |
isaac.utils | DetectionsToPoseTree | 1 | 0 | 4 |
isaac.utils | DifferentialTrajectoryToPlanConverter | 1 | 1 | 1 |
isaac.utils | FlatscanToPointCloud | 1 | 1 | 0 |
isaac.utils | JoystickConfirmation | 1 | 0 | 2 |
isaac.utils | Plan2Converter | 1 | 1 | 1 |
isaac.utils | Pose2GaussianDistributionEstimation | 1 | 1 | 2 |
isaac.utils | PoseEvaluation | 0 | 1 | 8 |
isaac.utils | PoseMonitor | 0 | 1 | 2 |
isaac.utils | PoseTreeFeed | 0 | 1 | 0 |
isaac.utils | RigidBodiesToDetections | 1 | 1 | 1 |
isaac.utils | SegmentationCameraProtoSplitter | 1 | 3 | 0 |
isaac.utils | SendTextMessages | 0 | 1 | 2 |
isaac.utils | WaitUntilDetection | 1 | 0 | 1 |
isaac.velodyne_lidar | VelodyneLidar | 0 | 1 | 3 |
isaac.viewers | BinaryMapViewer | 2 | 0 | 2 |
isaac.viewers | ColorCameraViewer | 1 | 0 | 4 |
isaac.viewers | DepthCameraViewer | 1 | 0 | 7 |
isaac.viewers | Detections3Viewer | 1 | 0 | 6 |
isaac.viewers | DetectionsViewer | 1 | 0 | 9 |
isaac.viewers | FiducialsViewer | 1 | 0 | 2 |
isaac.viewers | FlatscanViewer | 1 | 0 | 4 |
isaac.viewers | GoalViewer | 1 | 0 | 1 |
isaac.viewers | ImageKeypointViewer | 2 | 0 | 3 |
isaac.viewers | MosaicViewer | 0 | 0 | 4 |
isaac.viewers | ObjectViewer | 0 | 0 | 3 |
isaac.viewers | OccupancyMapViewer | 2 | 0 | 1 |
isaac.viewers | PointCloudViewer | 1 | 0 | 4 |
isaac.viewers | PoseTrailViewer | 0 | 0 | 4 |
isaac.viewers | SegmentationCameraViewer | 1 | 0 | 3 |
isaac.viewers | SegmentationViewer | 2 | 0 | 6 |
isaac.viewers | SkeletonViewer | 1 | 0 | 2 |
isaac.viewers | TensorViewer | 1 | 1 | 6 |
isaac.viewers | TrajectoryListViewer | 1 | 0 | 1 |
isaac.ydlidar | YdLidar | 0 | 1 | 1 |
isaac.zed | ZedImuReader | 0 | 1 | 2 |
isaac.AdafruitNeoPixelLedStrip
Description
This class interfaces with an Arduino Trinket which receives I2C signals dictating color patterns for the Adafruit NeoPixels strip. The Arduino Trinket is loaded with a program that interprets the I2C signals into appropriately-timed PWM signals for the light strip. See the NeoPixels documentation under “Hardware Reference Designs” for more detailed setup instructions.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
led_strip [LedStripProto]: The desired LED strip configuration message
- Outgoing messages
(none)
Parameters
bus [int] [default=1]: The I2C bus of the LED strip. Default value is 1
isaac.ArgusCsiCamera
Description
Interfaces the libargus library to support CSI camera. Only supported on L4T systems like the Jetson Nano.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
image [ColorCameraProto]: Channel to broad cast image extracted from argus feed
Parameters
- mode [int32_t] [default=]: Resolution mode of the camera. Supported values are:
0: 2592 x 1944, 1: 2592 x 1458, 2: 1280 x 720
camera_id [int32_t] [default=]: System device numeral for the camera. For example select 0 for /dev/video0.
framerate [int32_t] [default=]: desired framerate
focal_length [Vector2d] [default=]: Focal length of the camera in pixels
optical_center [Vector2d] [default=]: Optical center in pixels
isaac.ImageComparison
Description
Compare two images and report the correlation (similarity) between them
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image_a [ColorCameraProto]: First input image
input_image_b [ColorCameraProto]: Second input image
- Outgoing messages
(none)
Parameters
correlation_threshold [float] [default=0.99]: The minimum correlation between two images where we will consider them the same
down_scale_factor [int] [default=4]: Scaling of the displayed images in Sight
isaac.Joystick
Description
Publishes state for a joystick like an Xbox gamepad or other input device.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
js_state [JoystickStateProto]: The joystick message
Parameters
deadzone [double] [default=0.05]: Size of the “deadzone” region, applied to both positive and negative values for each axis. For example, a deadzone of 0.05 will result in joystick readings in the range [-0.05, 0.05] being clamped to zero. Readings outside of this range are rescaled to fully cover [-1, 1]. In other words, the range [0.05, 1] is linearly mapped to [0, 1], and likewise for negative values.
num_axes [int] [default=4]: Number of joystick axes (e.g., 4 axes might correspond to two 2-axis analogue sticks)
num_buttons [int] [default=12]: Number of joystick buttons
reconnect_interval [double] [default=1.0]: Reconnect interval, in seconds. This is the period between joystick connection attempts (i.e., attempts to open the joystick device file) when the initial attempt fails.
input_timeout_interval [double] [default=0.1]: Input timeout interval, in seconds. This determines how long tick() will wait for input before giving up until tick() is called again. Note that stop() cannot succeed while tick() is waiting for input, so this timeout value should not be overly long.
device [string] [default=”/dev/input/js0”]: Joystick device file (system-dependent)
print_unsupported_buttons_warning [bool] [default=false]: Option controlling whether a warning will be logged when an event is received from an axis or button whose index exceeds num_axes or num_buttons, respectively
isaac.LivoxLidar
Description
A driver for the Livox Mid-40 lidar. The driver opens and maintains the UDP sockets for communication with the lidar. The driver accumulates samples and publish them as a range point cloud. A missing lidar or incorrect configuration results in the component stopping. The lidar publishes 100,000 points per second in size-configurable batches. A drop in communication (e.g. loose cable, network interface change) will result in the component stopping.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
accumulated_point_cloud [PointCloudProto]: Output 3D point cloud samples. The point cloud is published when the point count reaches the configured minimum point count or when the time between message publishing is greater than the configured published interval.
Parameters
device_ip [string] [default=”0.0.0.0”]: The IP address of the lidar device we want to connect to and receive data from. This parameter is changeable at configuration time.
port_command [int] [default=50001]: The UDP port to send commands to the lidar. This parameter is changeable at configuration time.
port_data [int] [default=50002]: The UDP port from which the data samples will be received. This parameter is changeable at configuration time.
batch_count [int] [default=10]: Minimum number of accumulated point batches before publishing the point cloud. It can be configured and changed at runtime. The point cloud is published when the point count reaches the configured point batch count. Each batch is 100 data points per Livox communication protocol.
isaac.PanTiltDriver
Description
The PanTiltDriver class is a driver for a pan/tilt unit based on Dynamixel motors. As its name indicates, the unit is composed of two joints, the first one performing a rotation along the z axis (pan), the second performing a rotation along the y axis (tilt). Each joint have a name (for example ‘pan’ and ‘tilt’), and this driver will in addition to controlling the pan/tilt updates the PoseTree: the two transformations corresponding to each joint will be updated. The name of the edge in the PoseTree are: pan_in_T_pan_out and tilt_in_T_tilt_out where “pan” and “tilt” are the name of both joint. In order to make these transform useful you should add to the PoseTree (for example using a PoseInitializer codelet) the transformations from the robot to the pan_in and from the pan joint to the tilt joint (pan_out_T_tilt_in).
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
command [StateProto]: Current command for pan/tilt unit
Outgoing messages
state [StateProto]: The state of the pan tilt unit
motors [DynamixelMotorsProto]: State of Dynamixel motors
Parameters
use_speed_control [bool] [default=true]: If set to true dynamixels are controlled in speed mode, otherwise they are controlled in position mode
usb_port [string] [default=”/dev/ttyUSB0”]: USB port used to connect to the bus (A2D2 USB adapter)
pan_servo_id [int] [default=1]: Dynamixel ID for pan servo
tilt_servo_id [int] [default=2]: Dynamixel ID for tilt servo
tilt_min [double] [default=-0.5]: Minimum value valid for tilt
tilt_max [double] [default=2.0]: Maximum value valid for tilt
pan_min [double] [default=-Pi<double>]: Minimum value valid for pan
pan_max [double] [default=Pi<double>]: Maximum value valid for pan
pan_offset [double] [default=5.83]: Constant offset in the pan angle such as pan = 0 has the end effector looking forward (X axis)
tilt_offset [double] [default=4.73]: Constant offset in the tilt angle such as tilt = 0 has the end effector looking horizontally
baudrate [int] [default=static_cast<int>(dynamixel::Baudrate::k1M)]: Baudrate of the Dynamixel bus. See packages/dynamixel/gems/registers.hpp for options. TODO Remove when refactored to use DynamixelDriver class
model [int] [default=static_cast<int>(dynamixel::Model::XM430)]: What kind of dynamixel model it is: (AX12A = 0, XM430 = 1, MX12W = 2) TODO(jberling) refactor pan tilt to use DynamixelDriver class and switch to enum
pan_joint_frame [string] [default=”pan”]: Name of the pan joint frame. The edge pan_in_T_pan_out will be added to the PoseTree.
tilt_joint_frame [string] [default=”tilt”]: Name of the tilt joint frame. The edge tilt_in_T_tilt_out will be added to the PoseTree.
isaac.RealsenseCamera
Description
RealsenseCamera is an Isaac codelet for the Realsense D435 camera, which can provide color, depth, and infrared (IR) images.
You can change the resolution of the camera via various configuration parameters. However only certain modes are supported:
1280x720 (at most 30 Hz)
848x480
640x480
640x360
424x240
Valid framerate for the color image are 60, 30, 15, 6 FPS. Valid framerate for the depth image are 90, 60, 30, 15, 6 FPS. The camera can also produce images at a 1080p resolution. However, this is currently not supported as color and depth are set to the same resolution.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
left_ir [ColorCameraProto]: The left IR camera image and intrinsics
right_ir [ColorCameraProto]: The right IR camera image and intrinsics
color [ColorCameraProto]: The color camera image, which can be of type Image3ub for color or Image1ui16 for grayscale.
depth [DepthCameraProto]: The depth image (in meters) in the left IR camera frame
Parameters
rows [int] [default=360]: The vertical resolution for both color and depth images.
cols [int] [default=640]: The horizontal resolution for both color and depth images.
ir_framerate [int] [default=30]: The framerate of the left and right IR sensors. Valid values are 90, 60, 30, 25, 15, 6. It should match the depth map framerate due to the RS 435 firmware constraints.
color_framerate [int] [default=30]: The framerate of the RGB camera acquisition. Valid values are 60, 30, 15, 6.
depth_framerate [int] [default=30]: The framerate of the depth map generation. Valid values are 90, 60, 30, 15, 6. It should match the IR framerate due to the RS 435 firmware constraints.
align_to_color [bool] [default=true]: If enabled, the depth image is spatially aligned to the color image to provide matching color and depth values for every pixel. This is a CPU-intensive process and can reduce frame rates.
frame_queue_size [int] [default=2]: Max number of frames you can hold at a given time. Increasing this number reduces frame drops but increase latency, and vice versa; ranges from 0 to 32.
auto_exposure_priority [bool] [default=false]: Limit exposure time when auto-exposure is ON to preserve a constant FPS rate.
laser_power [int] [default=150]: Amount of power used by the depth laser, in mW. Valid values are between 0 and 360, in increments of 30.
enable_ir_stereo [bool] [default=false]: Enable acquisition and publication of the IR stereo pair. This setting can’t be changed at runtime.
enable_color [bool] [default=true]: Enable acquisition and publication of the color frames. This setting can’t be changed at runtime.
enable_depth [bool] [default=true]: Enable depth map computation and publication. This setting can’t be changed at runtime.
enable_depth_laser [bool] [default=true]: Enable the depth laser projector to improve the depth image accuracy. Disabling it helps the visual odometry tracker by removing the dot pattern from the IR stereo pair. This setting can’t be changed at runtime.
enable_auto_exposure [bool] [default=true]: Enable auto exposure. Disabling it can reduce motion blur
dev_index [int] [default=0]: The index of the Realsense device in the list of devices detected. This indexing is dependent on the order the Realsense library detects the cameras, and may vary based on mounting order. By default the first camera device in the list is chosen. This camera choice can be overridden by the serial number parameter below.
serial_number [string] [default=”“]: An alternative way to specify the desired device in a multicamera setup. The serial number of the Realsense camera can be found printed on the device. If specified, this parameter will take precedence over the dev_index parameter above.
isaac.SegwayRmpDriver
Description
A driver for the Segway RMP base.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segway_cmd [StateProto]: Linear and angular speed command for driving segway (navigation::DifferentialBaseControl type)
Outgoing messages
segway_state [StateProto]: State of the segway consisting of linear and angular speeds and accelerations (DifferentialBaseDynamics)
Parameters
ip [string] [default=”192.168.0.40”]: Isaac will use this IP to talk to segway
port [int] [default=8080]: Isaac will use this port to talk to segway
flip_orientation [bool] [default=true]: If true, segway’s forward direction will be flipped
speed_limit_linear [double] [default=1.1]: Maximum linear speed segway is allowed to travel with
speed_limit_angular [double] [default=1.0]: Maximum angular speed segway is allowed to rotate with
isaac.SerialBMI160
Description
SerialBMI160 is a driver that uses a serial connection to talk to the BMI160 Internal Measurement Unit (IMU).
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
imu [ImuProto]: IMU data including linear accelerations and angular velocities
Parameters
device [string] [default=”/dev/ttyUSB0”]: Dev path where for the IMU device
isaac.SimpleLed
Description
Simple codelet to cycle through red, green, and blue colors to test LED display
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
led_strip [LedStripProto]: The outgoing LED strip message for the driver to display
- Parameters
(none)
isaac.SlackBot
Description
A SlackBot to perform authentication and listen for incoming commands
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
slack_message [ChatMessageProto]: Messages to be sent to the slack server
Outgoing messages
user_instruction [ChatMessageProto]: Messages received from the slack server
Parameters
bot_token [string] [default=]: Slack bot token given on the slack app config page. A token can only be used by one Slackbot. Multiple robots on same token is not supported.
slack_connect_url [string] [default=”https://slack.com/api/rtm.connect”]: Slack URL we will be sending the connection request too
isaac.StereoVisualOdometry
Description
This is a Stereo Visual Odometry codelet based on an implementation from nvidia. The input to the codelet is left and right grayscale image image pair with known intrinsics and extrinsics(relative transformation between cameras) The output of the codelet is a 6DOF pose of the left camera. The co-ordinate frame for this 6DOF pose is X front, Y left and Z up. Front here means the direction of the optical axis of the camera
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
left_image [ImageProto]: Images should be rectified prior to being passed in here. Gray input left image
left_intrinsics [CameraIntrinsicsProto]: Left image intrinsics parameters
right_image [ImageProto]: Gray input right image
right_intrinsics [CameraIntrinsicsProto]: Right image intrinsics parameters
imu [ImuProto]: IMU readings
Outgoing messages
left_camera_pose [Pose3dProto]: The 6 DOF pose of the left camera. The pose is not published if the tracker is lost.
coordinates [TensorProto]: Output keypoint coordinates
features [TensorProto]: Output features ids
Parameters
denoise_input_images [bool] [default=false]: Enable image denoising. Disable if the input images have already passed through a denoising filter.
horizontal_stereo_camera [bool] [default=true]: Enable fast and robust left-to-right tracking for rectified cameras with principal points on the horizontal line.
process_imu_readings [bool] [default=true]: Enable IMU data acquisition and integration
num_points [int] [default=100]: number of points to include in the pose trail debug visualization
lhs_camera_frame [string] [default=]: Defines the name of the left camera frame. It is used to calculate the left_T_right camera extrinsics.
rhs_camera_frame [string] [default=]: Defines the name of the right camera frame. It is used to calculate the left_T_right camera extrinsics.
imu_frame [string] [default=]: Defines the name of the IMU camera frame used to calculate left_camera_T_imu The IMU to left camera transformation
gravitational_force [Vector3d] [default=Vector3d(0.0, -9.80665, 0.0)]: The gravitational force vector
isaac.TorchInferenceTestDisplayOutput
Description
This component is specially designed to test TorchInference component and is specific to torch_inference app. This class displays the output received from the TorchInference component.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
test_output [TensorProto]: Receives tensor output from the Torch inference
- Outgoing messages
- Parameters
(none)
(none)
isaac.TorchInferenceTestSendInput
Description
This component is specially designed to test TorchInference component and is specific to torch_inference app. This class sends input to the TorchInference component which loads given model and does inference with this input.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
test_input [TensorProto]: Sends tensors as input to Torch inference
Parameters
input_value [float] [default=]:
isaac.V4L2Camera
Description
V4L2Camera is a camera driver implemented using V4L2. Currently this driver only accepts images from cameras in yuyv and automatically converts them to RGB.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
frame [ColorCameraProto]: Each frame output by the camera
Parameters
device_id [int32_t] [default=0]: Which camera should be opened
rows [int32_t] [default=720]: Parameters of the image requested by the camera These must match exactly with what the camera is able to produce. Number of pixels in the height dimension
cols [int32_t] [default=1280]: Number of pixels in the width dimension
rate_hz [int32_t] [default=30]: Frames per second.
hardware_image_queue_length [int32_t] [default=3]: Buffers are queued with the V4L2 driver so that the driver can write out images at the specified frame rate without delays. This may be changed by the camera when we are initializing.
focal_length [Vector2d] [default=(Vector2d{700.0, 700.0})]: Focal length (in pixels) for the pinhole camera model
optical_center [Vector2d] [default=(Vector2d{360.0, 640.0})]: Optical center of the projection for the pinhole camera model
brightness [int32_t] [default=]: Adjustable camera parameters. v4l2-ctl can be used to check values, e.g., “v4l2-ctl –device=/dev/video0 –list-ctrls”. Descriptions below are taken from video4linux API documentation. Picture brightness, or more precisely, the black level
contrast [int32_t] [default=]: Picture contrast or luma gain
saturation [int32_t] [default=]: Picture color saturation or chroma gain
gain [int32_t] [default=]: Gain control
white_balance_temperature_auto [bool] [default=]: If true, white balance temperature will be automatically adjusted.
white_balance_temperature [int32_t] [default=]: This control specifies the white balance settings as a color temperature in Kelvin. White balance temperature needs to be between 2000 abd 6500. This parameter is inactive if white_balance_temperature_auto is true
exposure_auto [int32_t] [default=]: Exposure time and/or iris aperture. 0: Automatic exposure time, automatic iris aperture. 1: Manual exposure time, manual iris. 2: Manual exposure time, auto iris. 3: Auto exposure time, manual iris.
exposure_absolute [int32_t] [default=]: Determines the exposure time of the camera sensor. The exposure time is limited by the frame interval. Drivers should interpret the values as 100 mus units, where the value 1 stands for 1/10000th of a second, 10000 for 1 second and 100000 for 10 seconds.
use_cuda_color_conversion [bool] [default=true]: Whether to convert from yuyv to RGB using CUDA, otherwise the CPU is for the conversion.
isaac.Vicon
Description
This codelet publishes motion capture information from a Vicon Datastream. Use of this codelet requires a Vicon Datastream connected to camera equipment. It allows tracking of marker information and rigid body information relative to a world frame that can be user-defined during setup of the Vicon hardware.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
vicon_pose_tree [PoseTreeProto]: Pose tree message containing information from Vicon scene volume
vicon_markers [MarkerListProto]: Marker list message containing all markers visible in Vicon scene volume
Parameters
vicon_hostname [string] [default=”localhost”]: Hostname of the Vicon system
vicon_port [string] [default=”801”]: Port to which the Vicon data is streaming
reconnect_interval [double] [default=1.0]: Amount of time to wait before attempting to reconnect to the Vicon system
isaac.ZedCamera
Description
Provides stereo image pairs and calibration information from a ZED camera
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
left_camera_rgb [ColorCameraProto]: left rgb image and camera intrinsics
right_camera_rgb [ColorCameraProto]: right rgb image and camera intrinsics
left_camera_gray [ColorCameraProto]: left gray image and camera intrinsics
right_camera_gray [ColorCameraProto]: right gray rgb image and camera intrinsics
extrinsics [Pose3dProto]: camera pair extrinsics (right-to-left)
Parameters
auto_white_balance [bool] [default=true]: Automatic white balance control
brightness [int] [default=4]: Brightness level. Valid values are between 0 and 8.
resolution [sl::RESOLUTION] [default=sl::RESOLUTION_VGA]: The resolution to use for the ZED camera. The following values can be set:
RESOLUTION_HD2K: 2208x1242
RESOLUTION_HD1080: 1920x1080
RESOLUTION_HD720: 1280x720
RESOLUTION_VGA: 672x376
camera_fps [int] [default=60]: The image frame rate for the ZED camera. If set to 0, the highest FPS for the specified
resolution
will be used. The following are supported resolution/framerate combinations:RESOLUTION_HD2K (2208*1242): 15 fps
RESOLUTION_HD1080 (1920*1080): 15, 30 fps
RESOLUTION_HD720 (1280*720): 15, 30, 60 fps
RESOLUTION_VGA (672*376): 15, 30, 60, 100 fps
If the requested camera_fps
is unsupported, the closest available FPS will be used. ZED Camera FPS is not tied to a codelet tick rate as the camera has an independent on-board CPU.
color_temperature [int] [default=2800]: The color temperature control. Valid values are between 2800 and 6500 with a step of 100.
contrast [int] [default=4]: Contrast level. Valid values are between 0 and 8.
exposure [int] [default=50]: Exposure control. Valid values are between 0 and 100. The exposure time is interpolated linearly between 0.17072ms and the max time for a specific frame rate. The following are max times for common framerate:
15fps setExposure(100) -> 19.97ms
30fps setExposure(100) -> 19.97ms
60fps setExposure(100) -> 10.84072ms
100fps setExposure(100) -> 10.106624ms
gain [int] [default=50]: Gain control. Valid values are between 0 and 100.
device_id [int] [default=0]: The numeral of the system video device of the ZED camera. For example for /dev/video0 choose 0.
enable_imu [bool] [default=false]: Turns on capture and publication of IMU data that is only supported by ZED Mini camera hardware
settings_folder_path [string] [default=”./”]: The folder path to the settings file (SN#####.conf) for the zed camera. This file contains the calibration parameters for the camera.
gpu_id [int] [default=0]: The GPU device to be used for ZED CUDA operations
gray_scale [bool] [default=false]: Turns on gray scale images
rgb [bool] [default=true]: Turns on RGB color images
enable_factory_rectification [bool] [default=true]: Turns on rectification of images inside ZED camera
lhs_camera_frame [string] [default=”zed_left_camera”]: The left camera frame used to define the left_T_right camera transform in the PoseTree
rhs_camera_frame [string] [default=”zed_right_camera”]: The right camera frame used to define the left_T_right camera transform in the PoseTree
isaac.alice.BufferAllocatorReport
Description
Periodically writes statistic about allocated buffers to the redis metadata server. The buffer allocator report will be stored in a hashset under the following keys:
- isaac:AUUID:mem
count: total number of allocation requests over app lifetime rate: number of allocations per second over app lifetime bytes_requested: total number of bytes requested over app lifetime bytes_allocated: total number of bytes allocated over app lifetime bytes_deallocated: total number of bytes deallocated over app lifetime duration: total uptime of allocator manager efficiency: percentage of requests which were served without performing an allocation
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.ChannelMonitor
Description
Monitors messages flowing through a channel
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
channel [string] [default=]: The name of the channel to be monitored
update_rate_on_tick [bool] [default=true]: If enabled rates will be updated during tick. If the tick period is high compared to the measured rate this will lead to jittering in the visualization.
isaac.alice.CheckJetsonPerformanceModel
Description
Checks whether the Jetson device is in the desired nvpmodel mode. Skips the check for non-Jetson devices. Reads the file with nvpmodel mode and reports failure or interrupts the program if the mode does not equal to the parameterized value.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
status_filename [string] [default=”/var/lib/nvpmodel/status”]: Path to the file that shows the current nvpmodel mode
desired_status [int] [default=0]: This codelet will check whether the nvpmodel mode equals this value. 0 means maximum power and performance.
assert_on_undesired_status [bool] [default=true]: Sets whether to assert or report failure when the nvpmodel mode does not match desired_status.
isaac.alice.CheckOperatingSystem
Description
Checks whether the operating system meets the requirements. For the host, this means the right version of Ubuntu. For the Jetson devices, this means the right version of L4T or Jetpack. To ensure safety and performance, this component report failure if the operating system is not compatible or it cannot be verified.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
host_release_file [string] [default=”/etc/lsb-release”]: File to read to check operating system of the host
host_id_field [string] [default=”DISTRIB_ID”]: Key of operating system id
host_id_value [string] [default=”Ubuntu”]: Value of operating system id
host_release_field [string] [default=”DISTRIB_RELEASE”]: Key that shows the operating system version
host_release_value [string] [default=”18.04”]: Value of operating system version
jetson_release_file [string] [default=”/etc/nv_tegra_release”]: File to read to check operating system of a jetson
jetson_release_version [string] [default=”# R32 (release)]: Substring that is expected from the desired L4T release
jetpack_version [string] [default=”4.3”]: Desired jetpack version. Used only when printing error.
host_architecture [string] [default=”x86_64”]: CPU architecture of the host
jetson_architecture [string] [default=”aarch64”]: CPU architecture of Jetsons
isaac.alice.Config
Description
Stores node configuration in form of key-value pairs.
This component is added to every node by default and does not have to be added manually.
The config component is used by other components and the node itself to store structure and state. Most notable config can be used directly in codelets to access custom configuration values. Support for basic types and some math types is built-in. Configuration is stored in a group-key-value format. Each component and the node itself are defining separate groups of key-value pairs. Additionally custom groups of configuration can be added by the user.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.ConfigLoader
Description
At start, sets the config given as a parameter and reports success. TODO: Support $(fullname <>) syntax to apply prefix
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
config [json] [default={}]: The config blob to be written in format like {“node_foo”:{“component_bar”:{“key_0”:val_0, … } } }
isaac.alice.Failsafe
Description
A soft failsafe switch which can be used to check if a certain component of the system is still reactive. The failsafe is kept alive by a FailsafeHeartbeat component. Failsafe and FailsafeHeartbeat components can be in different nodes. They are identified via the name parameter.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
name [string] [default=]: the name of the failsafe
isaac.alice.FailsafeHeartbeat
Description
A soft heartbeat which can be used to keep a failsafe alive. If the heartbeat is not activated in time the corresponding failsafe will fail.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
interval [double] [default=]: The expected heart beat interval (in seconds). This is the time duration for which the heartbeat will stay activated after a single activation. The heartbeat needs to be activated again within this time interval, otherwise the corresponding Failsafe will fail.
failsafe_name [string] [default=]: The name of the failsafe to which this heartbeat is linked. This must be the same as the name parameter in the corresponding Failsafe component.
heartbeat_name [string] [default=]: The name of this heartbeat. This is purely for informative purposes.
isaac.alice.JsonToProto
Description
Converts JSON messages into proto messages.
JSON messages must be published on the channel “json”. Note that the input channel does not appear in the normal list of channels due to how this codelet works internally.
Type ID must be set correctly otherwise conversion will fail.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
proto [MessageHeaderProto]: Publish proto messages in registered proto definition as specified by incoming json message proto id.
- Parameters
(none)
isaac.alice.LifecycleReport
Description
Periodically writes a report about node and component life cycle to the redis metadata server. FIXME
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.MessageLedger
Description
Stores time histories of messages for various channels of this node and distributes messages between various systems. Every node which engages in message passing must have a MessageLedger component.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
history [int] [default=10]: The maximum number of messages to hold in the history
isaac.alice.MessagePassingReport
Description
Periodically writes statistic about all message passing channels to the redis metadata server. The message passing report will be stored in a hashset under the following keys:
- isaac:AUUID:msgs:SRC_i:DST_i
count: total number of messages passed on the channel rate: running average of number of messages per second
- where
AUUID: UUID of the current ISAAC application (SRC_i, DST_i): names of the source and destination channels each using the format
node_name/component_name/tag
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.Pose
Description
Provides convenience functions to access 3D transformations from the application wide pose tree.
This component is added to every node by default and does not have to be added manually.
Poses use 64-bit floating point types and are 3-dimensional. All coordinate frames for the whole application are stored in a single central pose tree.
All functions below accept two coordinate frames: lhs and rhs. This refers to the pose lhs_T_rhs which is the relative transformations between these two coordinate frames. In particular the following equations hold:
p_lhs = lhs_T_rhs * p_rhs
a_T_c = a_T_b * b_T_c
Not all coordinate frames are connected. If this is the case or either of the two coordinate frames does not exist the pose is said to be “invalid”.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.Pose2Comparer
Description
Reports success when the two poses are within threshold. Given frame name parameters, Pose2Comparer looks up first_lhs_T_first_rhs and second_lhs_T_second_rhs from the Pose Tree. It then computes the delta pose using (first_lhs_T_first_rhs)^(-1) * second_lhs_T_second_rhs. Magnitude in position and angle of this delta pose are then compared against the threshold parameter. If the two poses are close enough, success is reported.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
first_lhs_frame [string] [default=]: Name of the left hand side frame of the first pose
first_rhs_frame [string] [default=]: Name of the right hand side frame of the first pose
second_lhs_frame [string] [default=]: Name of the left hand side frame of the second pose
second_rhs_frame [string] [default=]: Name of the right hand side frame of the second pose
threshold [Vector2d] [default=]: This codelet reports success if this parameter is set and the relative difference between the two poses is less than this threshold in position and angle.
isaac.alice.PoseFromFile
Description
Reads pose from json file on disk and sets it to the PoseTree. This codelet can be used, for example, to read last known localization, which was written to disk by PoseFromFile codelet.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
lhs_frame [string] [default=]: Name of the reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
filename [string] [default=]: Path to the file that contains the pose json. Expected layout:
- {
“rotation”: { “yaw_degrees”: 180.0 }, “translation”: [25.0, 20.0, 0.0]
} or [
0.0, 0.0, 0.0,
- -1.0,
25.0, 20.0, 0.0
] Please see “What is the syntax for setting a Pose3d in json?” in FAQ of documentation for more details.
isaac.alice.PoseInitializer
Description
A codelet which creates a 3D transformation in the pose tree between two reference frames. This can for example be used to set transformations which never change or to set initial values for transformations.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
lhs_frame [string] [default=]: Name of the reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
pose [Pose3d] [default=]: Transformation lhs_T_rhs
report_success [bool] [default=false]: If true reports success after initializing pose in the start function. This will make the attach_interactive_marker setting invalid because the codelet won’t tick.
disable_failure [bool] [default=false]: If true, we ignore the failure when updating the PoseTree. If it’s false and the update fails, this codelet will report failure.
attach_interactive_marker [bool] [default=false]: If enabled the pose is editable via an interactive marker.
add_yaw_degrees [double] [default=0.0]: Additional yaw angle around the Z axis in degrees. Currently only enabled if attach_interactive_marker is false.
add_pitch_degrees [double] [default=0.0]: Additional pitch angle around the Y axis in degrees. Currently only enabled if attch_interactive_marker is false.
add_roll_degrees [double] [default=0.0]: Additional roll angle around the X axis in degrees. Currently only enabled if attch_interactive_marker is false.
isaac.alice.PoseMessageInjector
Description
Receives pose information via messages and injects them into the pose tree.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
pose [PoseTreeEdgeProto]: Incoming pose messages to inject into the pose tree
- Outgoing messages
- Parameters
(none)
(none)
isaac.alice.PoseToFile
Description
Reads pose from PoseTree and writes it as json to disk. This codelet can be used, for example, to save the last known localization. PoseFromFile codelet can then read the pose to continue localization from there.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
lhs_frame [string] [default=]: Name of the reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
filename [string] [default=]: Path for the file to create with pose as json
isaac.alice.PoseToMessage
Description
Reads desired pose from pose tree and publishes pose information as a message
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
pose [PoseTreeEdgeProto]: Outgoing pose message from pose tree
Parameters
lhs_frame [string] [default=]: Name of the reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
isaac.alice.PoseTree
Description
Provides convenience functions to access 3D transformations from the application wide pose tree.
This component is added to every node by default and does not have to be added manually.
Poses use 64-bit floating point types and are 3-dimensional. All coordinate frames for the whole application are stored in a single central pose tree.
All functions below accept two coordinate frames: lhs and rhs. This refers to the pose lhs_T_rhs which is the relative transformations between these two coordinate frames. In particular the following equations hold:
p_lhs = lhs_T_rhs * p_rhs a_T_c = a_T_b * b_T_c
Not all coordinate frames are connected. If this is the case or either of the two coordinate frames does not exist the pose is said to be “invalid”.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.PoseTreeRelink
Description
At start, changes the parent of rhs_frame from current_lhs_frame to desired_lhs_frame. Reports success if parent is changed and reports failure otherwise. This can be used, for example, after a robot lifts a cart that is detected in the world frame. After the lift, the cart would move with the robot, so the parent of the cart frame can be updated with this codelet from world to robot.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
current_lhs_frame [string] [default=]: Name of the current reference frame of the left side of the pose
desired_lhs_frame [string] [default=]: Name of the desired reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
isaac.alice.ProtoToJson
Description
Converts Proto messages into Json messages. Accepts all registered proto messages to channel “proto”. Require valid type id from messages.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
json [nlohmann::json]: Publishes converted Json message
- Parameters
(none)
isaac.alice.PyCodelet
Description
PyCodelet is a C++ Codelet instance for Python codelets that synchronizes with a Python codelet to mimic the effect of embedding Python scripts into the C++ codelet.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
config [json] [default=nlohmann::json({})]: Parameter for getting Isaac parameters to pyCodelets. For details, see PybindPyCodelet.
isaac.alice.Random
Description
Helper component to generate random numbers. FIXME(dweikersdorf) This should be a component, however currently configuration is not setup yet when the call to initialize happens.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
seed [int] [default=0]: The seed used by the random engine. If use_random_seed is set to true, this seed will be ignored.
use_random_seed [bool] [default=false]: Whether or not using the default seed or use a random seed that will change from one execution to another.
isaac.alice.Recorder
Description
Records data into a log file. This component can for example be used to write incoming messages to a log file. The messages could be replayed later using the Replay component.
In order to record a message channel setup an edge from the publishing component to the Recorder component. The source channel is the name of the channel under which the publishing component publishes the data. The target channel name on the Recorder component can be chosen freely. When data is replayed it will be published by the Replay component under that same channel name.
Warning: Please note that the log container format is not yet final and that breaking changes might occur in in the future.
The root directory used to log data is base_directory/exec_uuid/tag/… where both base_directory and tag are configuration parameters. exec_uuid is a UUID which changed for every execution of an app and is unique over all possible executions. If tag is the empty string the root log directory is just base_directory/exec_uuid/….
Multiple recorders can write to the same root log directory. In this case they share the same key-value database. However only one recorder is allowed per log series. This means if the same component/key channel is logged by two different recorders they can not write to the same log directory.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
base_directory [string] [default=”/tmp/isaac”]: The base directory used as part of the log directory (see class comment)
tag [string] [default=”“]: A tag used as part of the log directory (see class comment)
max_buffer_size_mb [int] [default=4096]: If messages can not be written out fast enough they are kept in memory. If more than a certain amount of memory is used no new messages are accepted until all messages are written out to the disk.
start_recording_automatically [bool] [default=true]: If true, the recording will automatically start when this Codelet starts.
isaac.alice.Replay
Description
Replays data from a log file which was recorded by a Recorder component. See the documentation for the Recorder component for more information.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
cask_directory [string] [default=”“]: The cask directory used to replay data from
replay_time_offset [int64_t] [default=0]: Time offset to start a replay from between a log
use_recorded_message_time [bool] [default=false]: Decides whether to use recorded message pubtime and acqtime or replay current time as pubtime and synchronize the acqtime using the starting time of the replay.
loop [bool] [default=false]: If this is enabled replay will start from the beginning when it was replayed
auto_stop_application [bool] [default=false]: If enabled automatically stops the application when the log was fully replayed
report_success [bool] [default=false]: If enabled sets node status to: success the log was fully replayed, failure in case or errors
isaac.alice.ReplayBridge
Description
Communication Bridge between WebsightServer and Replay Node
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
request [nlohmann::json]: Request to replay node
Outgoing messages
reply [nlohmann::json]: Reply from replay node
Parameters
replay_component_name [string] [default=]: Replay component name in format node/component. Ex: replay/isaac.alice.Replay
isaac.alice.Scheduling
Description
This component contains scheduling information for codelets. Parameters apply to all components in a node. If the component is not present, default parameters are used.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
priority [int] [default=0]: Controls the relative priority of a codelet task within a timeslice window Used for periodic and event driven codelets. Higher values have higher priority
slack [double] [default=0]: Controls how much variation in start time is allowed when executing a codelet Used for periodic and event driven codelets. The parameter unit is seconds
deadline [double] [default=]: Set the expected time that the codelet will take to complete processing. If no value is specified periodic tasks will assume the period of the task and other tasks will assume there is no deadline. The parameter unit is seconds
execution_group [string] [default=”“]: Sets the execution group for the codelet. Users can define groups in the scheduler configuration. If an execution_group is specified it overrides default behaviors.
If no value is specified it will attempt to use the default configuration The default configuration provided creates three groups
-BlockingGroup – Blocking threads run according to OS scheduling. Default for tickBlocking. -WorkerGroup – One Worker thread per core execute tick functions for tickPeriodic/OnEvent.
Note: tickBlocking spawns a worker thread for the blocking task which if executed in the WorkerGroup can interfere with worker thread execution due to OS scheduling. Removing the default groups could lead to instabilities if not careful.
isaac.alice.Sight
Description
This component is a proxy to access and expose sight functionalities to components. This component is added to every node by default. It should not be added to a node manually.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.Subgraph
Description
Creates interface for a subgraph. Subgraphs JSON files are modular and meaningful collections of nodes, edges, and configurations that are ready to be plugged-in when creating application JSON files. For ease of use, each subgraph has an interface node of isaac::alice::Subgraph type registered here. Interface node receives and transmits messages for the other nodes of the subgraph, so that an application using this subgraph can edge with the interface node instead of directly communicating with other nodes within the subgraph. In the future, in addition to message passing, interface nodes will 1. read parameters set by user and map them to other components in the subgraph, 2. pass handles to the behavior trees within the subgraph, 3. sync poses between inside and outside the subgraph.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.alice.Subprocess
Description
Runs specific command via std::system on start and stop.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
start_command [string] [default=]: The command to run on start
stop_command [string] [default=]: The command to run on stop
isaac.alice.TcpPublisher
Description
Sends messages via a TCP network socket. This components waits for clients to connect and will forward all messages which are sent to it to connected clients.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
port [int] [default=]: The TCP port number used to wait for connections and to publish messages.
isaac.alice.TcpSubscriber
Description
Receifves messages from a TCP network socket. This components connects to a socket and will publish all messages it receives on the socket.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
host [string] [default=]: The IP adress of the remote host from which messages will be received.
port [int] [default=]: The TCP port number on which the remove host is publishing messages.
reconnect_interval [double] [default=0.5]: If a connection to the remote can not be established or breaks we try to re-establish the connection at this interval (in seconds).
update_pubtime [bool] [default=true]: If set to true publish timestamp will be set when the message is received; otherwise the original publish timestamp issued by the remote will be used.
isaac.alice.Throttle
Description
Throttles messages on a data channel. If use_signal_channel is enabled a signal channel is used as a heartbeat. Messages on the data channel will only be published whenever a message on the signal channel was received. In any case minimum_interval is used to additionally throttle the output.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
data_channel [string] [default=]: The name of the data channel to be throttled
output_channel [string] [default=]: The name of the output data channel with throttled data
minimum_interval [double] [default=0.0]: The minimal time period after which a message can be published again on the data channel.
use_signal_channel [bool] [default=true]: If enabled the signal channel will define which incoming messages are passed on. This enables the parameters signal_channel and acqtime_tolerance.
signal_channel [string] [default=]: The name of the signal channel used for throttling
acqtime_tolerance [int] [default=]: The tolerance on the acqtime to match data and signal channels. If this parameter is not specified the latest available message on the data channel will be taken.
isaac.alice.TimeOffset
Description
Adds a time offset to a message stream. The current implementation will create copies of incoming messages.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
input_channel [string] [default=”input”]: The name of message channel which will have it’s time stamps changed.
output_channel [string] [default=”output”]: The name of message channel with changed timestamps.
acqtime_offset [int64_t] [default=0]: A time offset in nanoseconds which will be added to the acquisition time of incoming messages.
isaac.alice.TimeSynchronizer
Description
Helps time synchronization of messages. “app-clock” starts when the application starts. Therefore “app-clock”s of two different applications running at the same time will potentially vary substantially. To sync messages between two applications, we need to resort to a common clock. Currently, only time_since_epoch is supported as the common clock, which will be the same for applications running on same device. More “mode”s will be added later. Currently, only Tcp communication is synchronized. To sync messages that are sent to or received through network, simply add a TimeSynchronizer component to the node(s) with TcpPublishers and TcpSubscribers. Publisher will use syncToAppTime and Subscriber will use appToSyncTime. Messages within an app will be in “app-clock”, but messages over network will be in “sync-clock”.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.audio.AudioCapture
Description
Isaac sensor codelet to capture and publish the audio data from a microphone. This reads audio data from an arbitrary number of microphones using the ALSA drivers on the linux distribution. The codelet can be configured to initialize the ALSA driver to capture audio with required sample rate, bit format and number of audio channels.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
audio_capture [AudioDataProto]: Captured audio data packets and their configuration is published.
Parameters
capture_card_name [string] [default=]: Audio device name as string. Keep empty for default selection.
sample_rate [int] [default=16000]: Sample rate of the audio data
num_channels [int] [default=6]: Number of channels present in audio data
audio_frame_in_milliseconds [int] [default=100]: Time duration of one audio frame
ticks_per_frame [int] [default=5]: Number of times to query ALSA inside 1 audio frame duration
isaac.audio.AudioEnergyCalculation
Description
Feature codelet to compute average energy per audio packet. The energy is averaged over the configured list of channels for each audio packet. This energy is measured in decibels (dB).
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio_packets [AudioDataProto]: Receive the multi-channeled audio packets for computing the energy.
Outgoing messages
audio_energy [StateProto]: The average energy in dB per audio packet is published.
Parameters
channel_indices [std::vector<int>] [default=]: Indices of the audio channels which are used for calculating the audio energy
reference_energy [double] [default=0]: Reference energy in decibels (dB). The energy of the audio packet is computed w.r.t. this reference energy. This is usually the Acoustic Overload Point or maximum dB value mentioned in the specification sheet of the microphone.
isaac.audio.AudioFileLoader
Description
Utility codelet to read raw PCM audio files from the filesystem and publish the contents as audio packets. This codelet can be used to load audio data from the files for playing system sounds or processing pre-recorded audio.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio_file_index [AudioFilePlaybackProto]: Index of the file from a pre-defined file list to be loaded.
Outgoing messages
audio_data_publish [AudioDataProto]: Publish the audio data and its configuration from the requested file
Parameters
pcm_filelist [std::vector<std::string>] [default=std::vector<std::string>()]: List of raw PCM audio files
sample_rate [int] [default=16000]: Sample rate of the PCM audio files
number_of_channels [int] [default=1]: Number of channels in the audio files
isaac.audio.AudioPlayback
Description
Isaac sensor codelet to play the received audio data on a speaker or any chosen playback device using the ALSA drivers in the Linux distribution. The ALSA driver is initialized with the audio configuration from the incoming message. This codelet drops any incoming messages until the previous playback is complete.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio_playback_input [AudioDataProto]: Receive the audio data to be played on the playback device.
- Outgoing messages
(none)
Parameters
playback_card_name [string] [default=”“]: Audio device name as string. For default device selection keep unused.
isaac.audio.SaveAudioToFile
Description
Saves audio data to a file
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio [AudioDataProto]: audio data input
- Outgoing messages
(none)
Parameters
filepath [string] [default=”/tmp/audio-out-f32-16k.pcm”]: audio data will be saved to this file
enable_audio_dump [bool] [default=true]: flag to enable or disable runtime data dumping
isaac.audio.SoundSourceLocalization
Description
Feature codelet to compute the direction of the dominant sound source from the incoming audio data packets. The direction is measured as angle in radians from the reference axis. This currently supports only circular microphone arrays with at least 4 microphones.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio_packets [AudioDataProto]: Receive the multi-channeled audio packets for computing the direction.
Outgoing messages
audio_angle [StateProto]: Azimuth angle of the dominant sound source with respect to the reference axis (measured anti-clockwise) is published.
Parameters
audio_duration [float] [default=0.5f]: Duration (in seconds) of the audio data used for computation of the azimuth angle. The milliseconds equivalent of this value should be an integral multiple of the input audio duration in milliseconds.
microphone_distance [float] [default=0.0f]: Distance between two diagonally opposite microphones on the microphone array.
microphone_pairs [std::vector<Vector2i>] [default=]: Pairs of indices of the audio channels corresponding to microphone elements.
reference_offset_angle [int] [default=0]: Angle of first diagonally opposite microphone pair with respect to the reference axis.
isaac.audio.TensorToAudioDecoder
Description
The component is developed as an post processor to waveglow DL model (ml/TorchInference) to help audio playback. It takes audio samples from TorchInference codelet which are published as a TensorProto and repackages them into an AudioDataProto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
tensors [TensorProto]: Receives a tensor of dimension (1, x) where x is the number of audio samples.
Outgoing messages
audio [AudioDataProto]: Send out audio packets
Parameters
sample_rate [int] [default=22050]: Sample rate of the audio received
num_channels [int] [default=1]: Number of channels in audio
isaac.audio.TextToMel
Description
Tacotron 2 streaming inference component for converting text to Mel spectrogram representation of speech. This component loops internally until the entire text is processed and publishes the Mel spectrograms of each processed token of text at regular intervals.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
text [ChatMessageProto]: Receives input text string
Outgoing messages
mel_spectrogram [TensorProto]: Sends Mel Spectrograms with dimension {1, 80, x} where x depends on text length
Parameters
session_timeout_value [double] [default=25.0]: The session timeout value determines how long a streaming TextToMel session can run after which it is terminated. After termination, remaining part of existing message gets discarded and the next text string message will be processed normally
isaac.audio.VoiceCommandConstruction
Description
Feature codelet to detect commands from series of keyword probabilities (received as 2D tensors). This codelet analyzes if the keywords detected form any of the the defined commands. If any command is identified, the command id along with a series of timestamps of audio packets that contributed to the command are published.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
keyword_probabilities [TensorProto]: Receive keyword probabilities (generally produced by tensorflow inference) as a 2D tensor. Only tensors with first dimension as 1 are accepted.
Outgoing messages
detected_command [VoiceCommandDetectionProto]: Publish the detected command id and list of timestamps of the contributing keywords.
Parameters
command_list [std::vector<std::string>] [default=]: User defined command list
command_ids [std::vector<int>] [default=]: User defined command ids
max_frames_allowed_after_keyword_detected [int] [default=]: Maximum number of frames to look for a defined command after the trigger keyword is detected
probability_mean_window [int] [default=1]: Window size over which the keyword probability predictions are averaged.
num_classes [int] [default=]: Model specific params present in metadata Number of classes
classes [std::vector<std::string>] [default=]: List of classes in same order as that present in model output
thresholds [std::vector<float>] [default=]: Probability thresholds per class
isaac.audio.VoiceCommandFeatureExtraction
Description
Feature codelet to extract the Mel Spectrogram and Delta features of the incoming audio packets. These features are used by the Keyword detection network for Voice Command Detection.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
audio_packets [AudioDataProto]: Receive audio packets to extract features
Outgoing messages
feature_tensors [TensorProto]: Tensors of Extracted features
Parameters
audio_channel_index [int] [default=0]: Index of the channel in multi-channel input data used to detect voice commands.
minimum_time_between_inferences [float] [default=0.1]: Minimum time between two consecutive inferences
sample_rate [int] [default=]: Model specific params Sample rate of the audio supported
fft_length [int] [default=]: Length of Fourier transform window
num_mels [int] [default=]: Number of mel bins to be extracted
hop_size [int] [default=]: Stride for consecutive Fourier transform windows
window_length [int] [default=]: Length of one audio frame which is used for keyword detection. This is the number of time frames after computing STFT with above params
isaac.composite.CompositeAtlas
Description
A database which provides access to composite protos as waypoints. The waypoints are loaded from a cask file on a lazy-loading basics, and stored as CompositeWaypoint.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
cask [string] [default=]: Cask filename which contains composite protos.
isaac.composite.CompositeMetric
Description
Computes distance between two composite protos. The distance is determined by three factors: Schema: the schema used to parse values from the two composites. This schema must be a subset of
schemas in both protos
- Norm(s): for each quantity in the schema, the value is represented by a vector. The distance
- Weight(s): the distance of each quantity is summed with weights to produce the total distance for
between vectors depends on the norm used, for example L1, L2, ect. Norm is specified via an double p, for p >=1 this represents the finite p-norm, while infinite norm is represented by p = -1.0.
the two protos
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
use_config_schema [bool] [default=false]: If true, the schema from the config below is used to compute distance. Otherwise, caller should set the schema
schema [Schema] [default=]: The schema to compute distance for. See json_formatter.hpp for json representation of Schema. This is use only when use_config_schema is to True.
norms [VectorXd] [default=VectorXd::Constant(1, 2.0)]: The list of p-norms to compute distance for each quantity in schema. The size should match the list of quantities in schema, or one in which case it’s applied to all quantities.
weights [VectorXd] [default=VectorXd::Constant(1, 1.0)]: Optional param to multiply with entity distance to get the total distance.
isaac.composite.CompositePublisher
Description
Publishes a composite proto containing a batch of waypoints specify on a path. The waypoints are read from a CompositeAtlas database.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
path [CompositeProto]: Publishes all the waypoints in path as a batch. A new message is published only when the path changes.
Parameters
atlas [string] [default=]: Name of the node containing the CompositeAtlas component.
path [std::vector<std::string>] [default={}]: The list of waypoint names as the path to follow. Reports failure if any waypoint on the path does not exist in CompositeAtlas. A new message is sent if this config changes.
use_config_schema [bool] [default=false]: If true, use the schema set in config below. Otherwise use schema of the first waypoint in the path read from cask as the schema for the whole path, and ignore the schema set in config.
schema [Schema] [default=]: Sets the schema to publish. This must be a subset of schemas in the path waypoints. Only used if use_waypoint_schema is set to false.
report_success [bool] [default=false]: If true, report success after publishing a valid path.
isaac.composite.FollowPath
Description
Receives a sequence of waypoints via a message and publishes the waypoint one by one. The next waypoint is published when the current state is within tolerance of the current waypoint. When a new path is received, the current waypoint is reset to the first waypoint in the path. This codelet requires a CompositeMetric component in the same node to specify how to compute distance between the waypoint and the received state message.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
path [CompositeProto]: Receives the path to follow given as a batch of waypoints
state [CompositeProto]: Receives current state, used to check if we arrive at the current waypoint.
Outgoing messages
goal [CompositeProto]: Publishes the desired goal waypoint.
Parameters
wait_time [double] [default=1.0]: Seconds to wait after arriving at the current waypoint before publishing the next waypoint.
loop [bool] [default=false]: If set to true we will repeat the path once completed. Otherwise will report success on completion.
tolerance [double] [default=0.1]: Tolerance for arrival. A waypoint is reached when the distance between state and current waypoint computed by the CompositeMetric component is below this limit.
isaac.deepstream.Pipeline
Description
The Deepstream pipeline codelet leverages NVIDIA DeepStream SDK as a media tool. DeepStream and the open source GStreamer library provide a convenient and versatile method for acquiring, decoding, processing, and publishing multimedia in many different format. The communication channels of the codelet vary in numbers, types, and names. They are determined by the pipeline configuration. The codelet only ticks on received messages to be passed onto the media pipeline.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
pipeline [string] [default=”videotestsrc ! video/x-raw]: The Deepstream/GStreamer media pipelines. Note the usage of an appsink element for the entry points to Isaac. Equivalently, the appsrc for exit. The name of the element becomes the channel name. For example: appsrc name=<RX CHANNEL NAME>. For pipeline syntax, please read the command manual for gst-launch-1.0 or read this page: https://gstreamer.freedesktop.org/documentation/tools/gst-launch.html For supported capabilities, formats, memory models, and equivalent Isaac messages, please refer to the component detailed documentation.
isaac.detect_net.DetectNetDecoder
Description
The DetectNetDecoder converts tensors containing object detection values from the output of a DetectNetv2 network to a Detections2Proto type. DetectNetv2 is a ResNet-based model for multi-class object detection. For more information about DetectNetv2, see https://docs.nvidia.com/metropolis/TLT/tlt-getting-started-guide/index.html#training_gridbox. This codelet extracts all bounding boxes from the tensors, thresholds them on their confidence values, and filters out overlapping bounding boxes via non-maximum suppression.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
bounding_boxes_tensor [TensorProto]: Tensor from DetectNetv2 inference. Contains bounding boxes per class per grid box and is of size (4*N, R, C), where N = number of classes, R = grid rows, C = grid cols.
confidence_tensor [TensorProto]: Tensor from DetectNetv2 inference. Contains confidence values per object per grid box and is of size (N, R, C), where N = number of classes, R = grid rows, C = grid cols.
Outgoing messages
detections [Detections2Proto]: Output detections with bounding box, label, and confidence
Parameters
non_maximum_suppression_threshold [double] [default=0.6]: Non-maximum suppression threshold. The greater this value is, the stricter the algorithm is when determining if two bounding boxes are detecting the same object.
confidence_threshold [double] [default=0.6]: Confidence threshold of the detection. Decreasing this value allows less confident detections be considered.
min_bbox_area [int] [default=100]: Bounding box area threshold of the detection. Decreasing this value allows for smaller bounding box detections
labels [std::vector<std::string>] [default=]: Names of the classes trained by the network. The order and length of this list must correspond to the order and length of the labels given during training.
output_scale [Vector2d] [default=]: Output scale in [rows, cols] for the decoded bounding boxes output. For example, this could be the image resolution before downscaling to fit the network input tensor resolution.
bounding_box_scale [double] [default=35.0]: Bounding box normalization for both X and Y dimensions. This value is set in the DetectNetv2 training specification.
bounding_box_offset [double] [default=0.5]: Bounding box offset for both X and Y dimensions. This value is set in the DetectNetv2 training specification.
isaac.dynamixel.DynamixelDriver
Description
A motor driver for a Daisy chain of Dynamixel motors. This codelet receives desired motor speed commands via a message and publishes the current motor speeds as a state proto. Multiple checks and safe guards are used to protected the driver from misuse. The codelet also currently features a small debug mode in which individual motors can be tested with constant speed.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
command [StateProto]: The desired angular speeds for each motor
Outgoing messages
state [StateProto]: The measured angular speeds for each motor
Parameters
port [string] [default=”/dev/ttyUSB0”]: USB port where Dynamixel controller is located at. usb_port varies depending on the controller device, e.g., “/dev/ttyACM0” or “/dev/ttyUSB0”
baudrate [Baudrate] [default=Baudrate::k1M]: Baud rate of the Dynamixel bus. This is the rate of information transfer.
servo_model [Model] [default=Model::MX12W]: Model of servo (AX12A, XM430, MX12W, XC430)
control_mode [DynamixelMode] [default=DynamixelMode::kVelocity]: If set to true dynamixels are controlled in speed mode, otherwise they are controlled in position mode
servo_ids [std::vector<int>] [default=]: Unique identifier for Dynamixel servos. Each motor needs to be assigned a unique ID using the software provided by Dynamixel. This is a mandatory parameter.
torque_limit [double] [default=1.0]: Servo maximum torque limit. Caps the amount of torque the servo will apply. 0.0 is no torque, 1.0 is max available torque
max_speed [double] [default=6.0]: Maximum (absolute) angular speed for wheels
command_timeout [double] [default=0.3]: Commands received that are older than command_timeout seconds will be ignored. Kaya will stop if no message is received for command_timeout seconds.
debug_mode [bool] [default=false]: Enables debug mode in which all motors are driving with constant speed independent from incoming messages.
debug_speed [double] [default=1.0]: If debug mode is enabled, all motors will rotate with this speed.
isaac.flatscan_localization.GradientDescentLocalization
Description
A flatscan localization method using a gradient descent algorithm.
This codelet uses a flatscan to localize the robot in a known map. As this is a local optimization technique an initial guess is necessary. The computed pose of the scanner and thus the robot are written to the pose tree.
This method is quite stable compared to the more noisy particle-filter based approach. However it is a uni-modal technique which can not deal well with ambiguity.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Range scan used to localize the robot
- Outgoing messages
(none)
Parameters
map [string] [default=”map”]: Reference frame in which the algorithm tracks the target.
flatscan_frame [string] [default=”lidar”]: Flat range scans arriving on the flatscan channel are relative to this coordinate frame.
robot_init_frame [string] [default=”robot_init_global_localizer”]: In the start function the algorithm is initialized with the pose of this coordinate frame.
robot_frame [string] [default=”robot”]: The frame which is tracked by this algorithm.
isaac.flatscan_localization.GridSearchLocalizer
Description
An exhaustive grid search localizer.
Based on a flat range scan every possible pose in a map is checked for the likelihood that the scan was taken at that pose. The pose with the best match is written to the pose tree as a result.
This node uses a simplified and customized range scan model to increase the performance of the algorithm. The algorithm currently only works for a 360 degree range scan with constant angular resolution.
This component uses a GPU-accelerated algorithm. Depending on the map size and the GPU the runtime of the algorithm might range from less than a second to multiple seconds.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: The current first flatscan sensor measurement based on which we try to localize in the map.
flatscan_2 [FlatscanProto]: The current second, optional flatscan sensor measurement based on which we try to localize in the map.
- Outgoing messages
(none)
Parameters
use_second_flatscan [bool] [default=false]: If true, the localizer waits for input from the second flatscan before global localization. If false, only uses the first flatscan.
exclude_restricted_areas [bool] [default=true]: If false, robot may localize inside a restricted area defined in the map configuration
robot_radius [double] [default=0.25]: The radius of the robot. This parameter is used to exclude poses which are too close to an obstacle.
max_beam_error [double] [default=0.50]: The maximum beam error used when comparing range scans.
num_beams_gpu [int] [default=256]: The GPU accelerated scan-and-match function can only handle a certain number of beams per range scan. The allowed values are {32, 64, 128, 256, 512}. If the number of beams in the range scan does not match this number a subset of beams will be taken.
batch_size [int] [default=512]: This is the number of scans to collect into a batch for the GPU kernel. Choose a value which matches your GPU well.
map_lines_batch_size [int] [default=1024]: This is the number of map lines (slices of map width in grid cell amounts) that are processed per batch when tracing the gridmap cell-wise in the GPU kernel. Choose a value which matches your GPU well.
sample_distance [float] [default=0.1]: Distance between sample points in meters. The smaller this number, the more sample poses will be considered. This leads to a higher accuracy and lower performance.
map [string] [default=”map”]: Name of map node to use for localization
flatscan_frame [string] [default=”lidar”]: The name of the reference frame for the first flatscan source in which range scans arriving on the flatscan channel are defined.
flatscan_2_frame [string] [default=”lidar_2”]: The name of the reference frame for the second flatscan source in which range scans arriving on the flatscan channel are defined.
output_frame [string] [default=”robot_init_global_localizer”]: The estimated pose of the robot will be written to PoseTree as world_T_output_frame
isaac.flatscan_localization.LocalizationMonitor
Description
Monitors the current robot localization and returns failure if the quality of localization fails to satisfy certain conditions.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Incoming range scan used to monitor the robot
- Outgoing messages
(none)
Parameters
map [string] [default=”map”]: Name of map node which contains the reference map
range_scan_model [string] [default=”shared_robot_model”]: Name of node which contains the RangeScanModel component which is used to compare range scans
score_threshold [double] [default=0.05]: If comparison of the measured range scan against the expected range scan gives a score below this threshold the monitor reports failure. The range of the score depends on the range scan model, but is typical between 0 and 1 with 1 being the best.
beam_distance_threshold [double] [default=0.2]: Beams where measured distance and expected distance are withing this tolerance are “good” beams.
good_beams_threshold [double] [default=0.4]: If the percentage of good beams of the current range scan match drops below this threshold the monitor reports failure. See beam_distance_threshold.
far_beams_threshold [double] [default=0.2]: If the percentage of far beams of the current range scan match grows above this threshold the monitor reports failure. A far beam is a beam where the measured distance is larger than the expected distance by beam_distance_threshold.
flatscan_frame [string] [default=”lidar”]: Name of the coordinate frame of the sensor which produced the flatscan
robot_frame [string] [default=”robot”]: Name of the coordinate frame of the robot base
isaac.flatscan_localization.ParticleFilterLocalization
Description
Localizes the robot in a given map based on a flat range scan.
A Baysian filter based on a particle filter is used to keep track of a multi-modal hypothesis distribution. For every tick the particle distribution is updated based on an ego motion estimate read from the pose tree. Particles are then evaluated against the measured range scan using a range scan model to compute new particle scores. Particles with the highest score are combined in a weighted averaged to compute the new best estimate of the robot pose. The robot pose is written into the pose tree as a result.
Range scans are compared using a range scan model. In order for this node to work properly a component which is derived from RangeScanModel needs to be created and referenced in the parameter.
Particles are initialized in the start function using an initial estimate of the robot pose which is read from the pose tree. The GridSearchLocalizer component can for example be used to provide this initial estimate. Alternatively the initial pose could also be provided using a PoseInitializer component.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Incoming range scan used to localize the robot
flatscan_2 [FlatscanProto]: A second range scan which can be used to localize the robot.
Outgoing messages
samples [Pose2Samples]: The current weight samples the particle is tracking
Parameters
num_particles [int] [default=75]: The number of particles used in the particle filter
absolute_predict_sigma [Vector3d] [default=Vector3d(0.04, 0.04, DegToRad(5.0))]: Standard deviation of Gaussian noise “added” to the estimated pose during the predict
step of the particle filter. This value is a rate per second and will be scaled by the time step. The used equation is of the form:
current_position += Gaussian(0, sqrt(dt) * sigma);
Note the use of sqrt(dt) for scaling the standard deviation which is required when summing up Normal distributions. The vector contains three parameters:
noise along the forward direction (X axis)
noise along the sidewards direction (Y axis)
noise for the rotation
relative_predict_sigma [Vector3d] [default=Vector3d(0.10, 0.10, 0.10)]: Standard deviation of Gaussian noise which is applied relative to the current speed of
- the robot and scaled by the timestep. The used equation is of the form:
current_position += Gaussian(0, sqrt(dt) * current_speed * sigma);
The vector contains three parameters as explained in absolute_predict_sigma.
initial_sigma [Vector3d] [default=Vector3d(0.3, 0.3, DegToRad(20.0))]: Standard deviation of Gaussian noise which is applied to the initial pose estimate when the particle filter is (re-)seeded.
output_best_percentile [double] [default=0.10]: The final pose estimate is computed using the average of the best particles. For example a value of 0.10 would mean that the top 10% of particles with highest scores are used to compute the final estimate.
reseed_particles [bool] [default=false]: Set to true to request reseeding particles. This will be reset to false when the particle filter was reseeded.
map [string] [default=”map”]: Node of the map which contains map data. The map is used to compute which range scan would be expected from a hypothetical robot pose.
range_scan_model [string] [default=”shared_robot_model”]: Name of the node which contains a component of type RangeScanModel which is then used to compare range scans when evaluating particles against a new incoming message.
flatscan_frame [string] [default=”lidar”]: Flat range scans arriving on the flatscan channel are relative to this coordinate frame.
flatscan_2_frame [string] [default=”lidar_2”]: Similar to flatscan_frame but for the second flatscan channel flatscan_2.
robot_init_frame [string] [default=”robot_init_global_localizer”]: In the start function particles are initialized around this coordinate frame.
robot_frame [string] [default=”robot”]: The frame which is tracked by the particle filter.
isaac.flatscan_localization.ParticleSwarmLocalization
Description
An adaptive localization algorithm using a swarm of particles.
A particle swarm algorithm is used to localize the robot based on a single flat range scan. The pose with the best match is written to the pose tree as a result.
Consider using GridSearchLocalizer instead as it might provide a better particles to prescission ratio.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: The current sensor measurement based on which we try to localize in the map
- Outgoing messages
(none)
Parameters
num_particles [int] [default=1000]: The number of particles used by PSO
pso_omega [double] [default=0.5]: Omega parameter of PSO
pso_phi [Vector3d] [default=(Vector3d{0.05, 0.05, 0.1})]: Phi parameter of PSO (values are for for dx, dy, da)
pso_phi_p_to_g [double] [default=1.0]: PSO parameter to express ratio between phi_p and phi_g
map [string] [default=”map”]: Map node to use for localization
output_frame [string] [default=”robot_init_global_localizer”]: The estimated pose of the robot will be written to PoseTree as world_T_output_frame
isaac.flatsim.DifferentialBasePhysics
Description
Runs a very basic physics simulation which moves a differential based by following commands quite literally.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
command [CompositeProto]: Actuator commands for the wheels of a differential base
Outgoing messages
bodies [CompositeProto]: Resulting physics state of the differential base body
Parameters
robot_model [string] [default=”shared_robot_model”]: Name of the robot model node
joint_name_left_wheel [string] [default=”left_wheel”]: Name of the joint for left wheel
joint_name_right_wheel [string] [default=”right_wheel”]: Name of the joint for right wheel
wheel_acceleration_noise [double] [default=0.03]: Each step a random normal-distributed noise with the given sigma will be added to the desired wheel acceleration. The sigma will be scaled based on the time step and wheel speed.
wheel_acceleration_noise_decay [double] [default=0.995]: The wheel acceleration noise is additive simulating a random walk. To keep the noise bounded around zero it is multiplied with a decay factor at every timestep.
slippage_magnitude_range [Vector2d] [default=Vector2d(0.00, 0.05)]: A random friction value is applied which effectively reduces the effect of wheel speed on wheel distance driven. A friction value of 0 zero means full transmission, while a friction value of 1 means full slippage. Slippage is computed randomly using a uniform distribution with the given minium and maximum value.
slippage_duration_range [Vector2d] [default=Vector2d(0.50, 1.25)]: The slippage value is maintained constant for a certain duration and then changed to a new value. The duration of the slippage is computed using a uniform distribution with given minimum and maximum value.
robot_init_pose_name [string] [default=”robot_init_gt”]: Name of the pose in pose tree to use as the initial pose for robot
isaac.flatsim.DifferentialBaseSimulator
Description
Simulates a differential base by translating base commands into acutator commands, and by publishing base state computed based on rigid body state from the simulator
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
diff_base_command [StateProto]: Input command message with desired body speed (should be of type: DifferentialBaseControl)
physics_bodies [CompositeProto]: Input state of the base rigid body as computed by physics
Outgoing messages
physics_actuation [CompositeProto]: Output actuator message with desired accelerations for each wheel
diff_base_state [StateProto]: Output state of differential base (DifferentialBaseDynamics)
Parameters
max_wheel_acceleration [double] [default=10.0]: The maximum acceleration for a wheel
power [double] [default=0.20]: How fast the base will accelerate towards the desired speed
flip_left_wheel [bool] [default=false]: If this is enabled the direction of the left wheel will be flipped
flip_right_wheel [bool] [default=false]: If this is enabled the direction of the right wheel will be flipped
robot_model [string] [default=”shared_robot_model”]: Name of the robot model node
joint_name_left_wheel [string] [default=”left_wheel”]: Name of the joint for left wheel
joint_name_right_wheel [string] [default=”right_wheel”]: Name of the joint for right wheel
isaac.flatsim.FlatscanNoiser
Description
Adds noise to a flatscan
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Recive a FlatScan proto: this is a list of beams (angle + distance)
Outgoing messages
noisy_flatscan [FlatscanProto]: Output a noisy FlatScan proto: this is a list of beams (angle + distance) with
Parameters
min_range [double] [default=0.25]: The minimum range at which obstacles are detected
max_range [double] [default=50.0]: The maximum range of the simulated LIDAR
range_sigma_rel [double] [default=0.001]: Standard deviation of relative range error
range_sigma_abs [double] [default=0.03]: Standard deviation of absolute range error
beam_invalid_probability [double] [default=0.05]: Probability that a beam will be simulated as invalid
beam_random_probability [double] [default=0.00001]: Probability that a beam will return a random range
beam_short_probability [double] [default=0.03]: Probability that a beam will return a smaller range
isaac.flatsim.SimRangeScan
Description
Simulates a 2D range scan
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
flatscan [FlatscanProto]: Output a FlatScan proto: this is a list of beams (angle + distance)
Parameters
num_beams [int] [default=360]: The number of beams in the range scan
min_range [double] [default=0.25]: The minimum range at which obstacles are detected
max_range [double] [default=50.0]: The maximum range of the simulated LIDAR
min_angle [double] [default=0.0]: The min angle of simulated beams
max_angle [double] [default=TwoPi<double>]: The max angle of simulated beams
map [string] [default=”map”]: Map node to use for tracing range scans
lidar_frame [string] [default=”lidar_gt”]: Name of the frame of the simulated LiDAR sensor
isaac.fuzzy.EfllFuzzyEngineExample
Description
A sample class demonstrating how to do fuzzy inference with EFLL
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.fuzzy.LfllFuzzyEngineExample
Description
A sample class demonstrating how to do fuzzy inference with LFLL
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.gtc_china.PanTiltGoto
Description
Publishes the target pan and tilt angles according to user-defined parameters. It also receives the current pan and tilt angles from the pan-tilt unit as feedback, and uses it to monitor if the target angles have been reached. Once the target angles are reached, it reports success.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
current_state [StateProto]: Input containing the current pan-tilt state
Outgoing messages
target_state [StateProto]: Output state proto containing target pan and tilt angle information
Parameters
target_pan_angle [double] [default=0.0]: Target pan angle for the camera
target_tilt_angle [double] [default=0.0]: Target tilt angle for the camera
tolerance [double] [default=0.05]: Parameter which defines at least how close the current pan and tilt angles have to be to the target angles to be considered as having reached the target. If the absolute differences between the current and target pan and tilt angles are lesser than or equal to this value, we consider that the pan-tilt unit has reached the required angles.
isaac.hgmm.HgmmPointCloudMatching
Description
Calculates ego pose with HGMM (Hierachical Gaussian Mixture Model) from input point cloud. https://research.nvidia.com/publication/2018-09_HGMM-Registration
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
cloud [PointCloudProto]: Takes as input point clouds from sensor like Lidar or Depth Camera
- Outgoing messages
(none)
Parameters
levels [int] [default=2]: The number of levels to build the HGMM tree. This number depends on the complexity of the scene geometry and the number of points in the point clouds. Typically, 2 works well for simple scenes/point clouds, though 3 empirically works better for denser point clouds like velodyne-32 or more. The higher the level, the more accurate the registration, but divergence becomes more probable. (the model overfits and becomes unstable.) 4+ typically reserved for high-fidelity 3d reconstructions, not 6 dof registration
convergence_threshold [float] [default=0.001]: The lower, the longer the algorithm takes to converge, but performance becomes better. 0.01: fast to converge but worse accuracy 0.001-0.0001: slow to converge but often better accuracy
max_iterations [int] [default=30]: Max iterations regardless of convergence. Most problems take on the order of 10-35 iterations per level for normal convergence tolerance ranges.
noise_floor [float] [default=0.000]: TODO Noise parameter (currently turned off). Used if data contains extreme outliers. In the meantime, basic filtering of input needs to be performed outside of HGMM model creation and registration
zero_x_y_minimal_z [float] [default=1]: Minimal z-coordinate for valid points with zero x-y coordinates. Used to drop invalid points from erroneous source
regularization [float] [default=0.01]: Regularization to prevent singularities and overfitting If solution is diverging, parameter is too low. 0.0001: highly accurate but often unstable 0.001: highly accurate but possible divergence 0.01: robust convergence but higher error 0.1: very robust but possibly biased result
axis_length [double] [default=1.0]: Ego frame axis length
skip [int] [default=51]: Skipping points to reduce overload of visualization
history_size [int] [default=10]: Keeps past several history point clouds for visualization
max_distance [double] [default=10.0]: Visualizes no points beyond the distance
isaac.imu.IioBmi160
Description
Interface driver for an inertial measurement unit (IMU) BMI160 IIO device. Sets up the IMU device (accel + gyro), and publishes IMU data. Initialization failures will stop the node.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
imu_raw [ImuProto]: ImuProto is used to publish IMU data read from the buffer
Parameters
i2c_device_id [int] [default=1]: I2C device ID: matches ID of /dev/i2c-X
imu_T_imu [SO3d] [default=SO3d::FromAxisAngle(Vector3d{1, 0, 0}, Pi<double>)]: IMU Mounting Pose In the base case, the IMU is mounted on it’s back. Rotate 180 degrees about X-axis (flip Y and Z axes)
isaac.imu.ImuCalibration2D
Description
Codelet to perform Imu Calibration Provides access to the imu calibration library Creates (or updates) calibration file
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
imu [ImuProto]: Imu Data
- Outgoing messages
(none)
Parameters
imu_calibration_file [string] [default=”imu_calibration.out.json”]: path to output calibration file. This file will be created if it does not exist and overwritten if it exists.
imu_variance_stationary [double] [default=0.2]: Threshold for stationary variance
imu_window_length [int] [default=100]: Number of samples in window
isaac.imu.ImuCorrector
Description
Receives raw IMU data and removes biases either by using calibration data that is supplied or calibrating itself in the beginning.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
raw [ImuProto]: Receive raw IMU data
Outgoing messages
corrected [ImuProto]: Publish corrected IMU data
Parameters
calibration_file [string] [default=]: Optional calibration file. If a calibration file is provided, biases from the file will be removed from the IMU data. Otherwise we will calibrate in the beginning.
calibration_variance_stationary [double] [default=0.1]: Stationary variance for calibration
calibration_window_length [int] [default=100]: Number of samples in window for calibration
isaac.imu.ImuSim
Description
This codelet manages a single IMU sensor in the simulator User can provide biases, noises and optional calibration file as parameters
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
bodies [RigidBody3GroupProto]: Input states of the rigid bodies as computed by physics engine
Outgoing messages
imu_raw [ImuProto]: Imu proto is used to publish raw Imu data received from simulator
Parameters
imu_name [string] [default=”imu”]: Name of the IMU rigid body This param is required and should match the config file for the sim
gravity_norm [double] [default=9.80665]: Imu specific parameters Norm of local gravitational constant
sampling_rate [double] [default=30.0]: Sampling Frequency
accel_bias [Vector3d] [default=Vector3d::Zero()]: Accelerometer Bias
accel_noise [Vector3d] [default=Vector3d::Zero()]: Accelerometer (zero mean) noise std dev
gyro_bias [Vector3d] [default=Vector3d::Zero()]: Gyroscope Bias
gyro_noise [Vector3d] [default=Vector3d::Zero()]: Gyroscope (zero mean) noise std dev
isaac.json.JsonMockup
Description
Reads a JSON from user-provided parameter and periodically publishes it as a JsonProto and optionally a raw Json message
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
json [JsonProto]: Outputs a JsonProto message containing the json_mock parameter serialized to text.
raw_json [nlohmann::json]: Outputs a copy of the json_mock parameter in a RawMessage. Use when interacting with components that do not accept capnp messages, or use with a JsonToProto component to generate capnp messages of any type.
Parameters
json_mock [json] [default=]: The JSON to publish
report_success [bool] [default=false]: Reports success after publishing the message, if enabled
num_successful_publishes [int] [default=1]: The number of times the message is published before the codelet reports success, if enabled.
raw_type [uint64_t] [default=]: The type id to set for the raw json message. If this parameter is not set, raw json messages are not published
isaac.json.JsonReplay
Description
Loads JSON messages from file and publishes one proto message per tick
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
json_proto [JsonProto]: JSON message read from the file
Parameters
jsonfile_path [string] [default=”/tmp/input.jsonl”]: Path to JSON file
isaac.json.JsonTcpClient
Description
The JsonTcpClient class is a codelet which connects to a remote TCP server to send and receive Json serialized capnp messages. For each message that is sent over the TCP connection, a corresponding Json serialized MessageHeaderProto message is also sent to encode metadata about the message (channel, acqtime, uuid, etc.). When the codelet receives a Json message from the TCP server, it will deserialize that message and publish it to the channel specified in the MessageHeaderProto metadata. When the codelet receives a message from the application on any channel, it will serialize the message as well as a MessageHeaderProto message with the relevant metadata to a Json object and send it to the TCP server over the TCP connection.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
host [string] [default=]: The IP address or hostname of the remote host from which messages will be received.
port [int] [default=]: The TCP port number on which the remote host is publishing messages.
reconnect_interval [double] [default=0.5]: If a connection to the remote can not be established or breaks we try to re-establish the connection at this interval (in seconds).
message_check_interval [double] [default=0.5]: The maximum amount of time to block on the socket before checking for new messages
default_channel [string] [default=”json”]: If a message is received from the remote server with no channel specified, the codelet will publish the message on this channel
isaac.json.JsonWriter
Description
This codelet writes all Jsons that are received through JsonProto messages and/or raw Json messages to a file. The output file is in the JSON Lines format, which is a newline-delimited JSON that is used for JSON streaming. For more information, see http://jsonlines.org/
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
json [JsonProto]: Incoming JSON message to write that is received as a proto
raw_json [Json]: Incoming JSON message to write that is received as a raw message
- Outgoing messages
(none)
Parameters
filename [string] [default=]: Path to write file. If the file already exists, it will be overwritten by this codelet.
indent [int] [default=-1]: Sets the indent of nlohmann::basic_json::dump(). Leave as -1 for the compact representation with no newlines. Set to positive for newlines with indent level.
itemize_top_level_array [bool] [default=false]: If enabled each item in the top-level array will be written as an individual line.
isaac.kaya.KayaBaseDriver
Description
A driver for Kaya base with three wheels in triangular layout. The driver receives holonomic control commands and translates them to wheel motor commands which it outputs. On the other side it receives wheel-based state, translates them into holonomic base state and publishes them.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
base_command [StateProto]: The desired motion of Kaya of type messages::HolonomicBaseControls
wheel_state [StateProto]: The measured angular speeds for each wheel received from the motor driver. The order of wheels is the same as for the wheel_command channel.
Outgoing messages
base_state [StateProto]: The state of Kaya of type messages::HolonomicBaseDynamics
wheel_command [StateProto]: The desired angular speeds for each wheel to be sent to the motor driver. The order of wheels in the message is: front right, front left, back
Parameters
wheel_base_length [double] [default=0.125]: Distance of the wheel center to the robot center of rotation
wheel_radius [double] [default=0.04]: The radius of Kaya wheels
max_linear_speed [double] [default=0.3]: Maximum allowed linear speed
max_angular_speed [double] [default=0.5]: Maximum allowed angular speed
isaac.kinova_jaco.KinovaJaco
Description
A class to receive command and publish state information for the Kinova Jaco arm.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
arm_command [CompositeProto]: Command for the arm, parsed based on control mode. In joint control mode, requires a scalar quantity for each of the seven joints with entity matching the kinematic tree link names, and measure matching the control mode (position or speed). In end effector control, the entity name matching the end_effector_name set in config. In end effector pose control, expects a position quantity of translation vector(Vector3) and a rotation quantity of quaternion (Vector4), in base coordinate. In end effector velocity control, expects a speed quantity of linear velocity (Vector3) in base coordinate and a angularSpeed quantity of angular speed (Vector3) in end-effector coordinate.
Outgoing messages
arm_state [CompositeProto]: Current state for the arm, includes end effector pose, joint positions and velocities. The schema includes the following: end effector position (Vector3) and rotation quaternion (Vector4), in base coordinate; a scalar quantity for position and for speed for each of the seven joints, entity name is the link name in kinematic tree;
Parameters
kinova_jaco_sdk_path [string] [default=]: Path to JacoSDK is set in jaco_driver_config.json. Driver is tested for use with JACO2SDK v1.4.2
initialize_home [bool] [default=false]: If true, initializes arm and finger to home position in start.
control_mode [ControlMode] [default=ControlMode::kJointPosition]: Set control mode for arm. This can be changed at runtime
kinematic_tree [string] [default=]: Name of the node containing the map:KinematicTree component
end_effector_name [string] [default=”end_effector”]: Name of the end effector for parsing/creating composite message.
isaac.laikago.LaikagoDriver
Description
A driver for Laikago, a quadruped robot designed by Unitree Roboitcs. The driver receives holonomic control commands and translates them to laikago sdk high level velocity command which it outputs. On the other side it receives laikago states (base velocity), translates them into holonomic base state and publishes them.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
base_command [StateProto]: The desired motion of Laikago of type messages::HolonomicBaseControls
Outgoing messages
base_state [StateProto]: The state of Laikago of type messages::HolonomicBaseDynamics
imu [ImuProto]: The imu proto has linear and angular acceleration data
Parameters
speed_limit_linear [double] [default=0.6]: Maximum linear speed robot is allowed to travel with
speed_limit_angular [double] [default=0.8]: Maximum angular speed robot is allowed to rotate with
min_command_speed [double] [default=0.01]: Minimum command speed to switch to walking mode
scale_back_speed [double] [default=2.0]: Scale backward speed. The laikago walks backward slower than forward given the same command value. To approximately compensate the bias, we scale up the command speed
scale_side_speed [double] [default=3.0]: Scale side walk speed. The laikago side walk speed is about three times slower than command. To approximately compensate the tracking error, we scale up the command speed
isaac.lidar_slam.Cartographer
Description
This component wraps the Google Cartographer LIDAR SLAM library for ISAAC SDK. You can learn more about Cartographer on their webpage: https://google-cartographer.readthedocs.io/en/latest/. Please note that Cartographer is an experimental library and that results may vary depending on the LIDAR you are using or the environment you are trying to map.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Cartographer uses a 2D LIDAR scan to build the map
- Outgoing messages
(none)
Parameters
lua_configuration_directory [string] [default=”“]: Folders to search for Cartographer lua scripts, separated by comma
lua_configuration_basename [string] [default=”“]: File name of the specific Cartographer lua script to load
output_path [string] [default=”/tmp”]: Folder to write submaps and generated map
background_size [Vector2i] [default=Vector2i(1500, 1500)]: The size of the canvas for visualizing the map in sight (in grid cells)
background_translation [Vector2d] [default=Vector2d(-75, -75)]: Translation to apply on background image (in meters)
num_visible_submaps [int] [default=8]: Only the most recent submaps are visualized with sight for performance reasons.
isaac.lidar_slam.GMapping
Description
This component wraps the GMapping LIDAR SLAM library for ISAAC SDK. You can learn more about GMapping on their webpage: https://openslam-org.github.io/gmapping.html. Please note that GMapping is an experimental library and that results may vary depending on the LIDAR you are using or the environment you are trying to map.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: GMapping uses a 2D LIDAR scan to build the map
odometry [Odometry2Proto]: Odometry can either be read from this message or from the pose tree. The message is only used if the parameter use_pose_tree is set to false, otherwise odometry is read from the pose tree.
- Outgoing messages
(none)
Parameters
file_path [string] [default=”/tmp”]: Directory path used to save map snapshots
sensor_frame [string] [default=”lidar”]: The reference frame in which range scans arriving on the flatscan channel are defined. Sensor needs to be fixed with respect to the robot. Pose is read in the beginning only.
build_map_period [double] [default=2.0]: How often the map is recomputed, in seconds
laser_matcher_resolution [double] [default=DegToRad(3.0)]: Resolution to be used in scan matcher angles
map_x_max [double] [default=100.]: Maximum x value of the initial map
map_y_max [double] [default=100.]: Maximum y value of the initial map
map_x_min [double] [default=-100.]: Minimum x value of the initial map
map_y_min [double] [default=-100.]: Minimum y value of the initial map
map_resolution [double] [default=0.1]: Distance between each pixel in the map
max_range [double] [default=32.0]: The maximum range of the lidar. This value should be close to the physical range of the lidar to exploit as much of the available information. This value limits the out of range threshold coming from the input flatscan message.
map_update_range [double] [default=30.0]: The range within which the map is updated. The update range must be smaller or equal to the maximum range parameter as it relies on the lidar range information. The value chosen allows the tradeoff between the map global consistency and its sharpness.
number_particles [int] [default=40]: Number of particles used to estimate position of the robot
linear_distance [double] [default=0.3]: Linear threshold used to attempt scan matching
angular_distance [double] [default=0.1]: Angular threshold used to attempt scan matching
use_pose_tree [bool] [default=false]: Whether robot pose is read from pose tree or RX channel
isaac.map.AdditionFlatmapCost
Description
Helper FlatmapCostCombination that takes a list of flatmap cost and adds them together. If any of the flatmap cost returns an invalid position, then this codelet will also return the position as invalid.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.map.KinematicTree
Description
Loads a kinematic tree from file and provides access to the model
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
kinematic_file [string] [default=]: Path to a file to load the kinematic tree from
isaac.map.Map
Description
This component is used to mark a node as a map and gives convenient access to the various map layers and also some cross-layer functionality.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
graph_file_name [string] [default=”“]: Filename under which to store the current graph whenever there is an update to the map.
config_file_name [string] [default=”“]: Filename under which to store the current configuration whenever there is an update to the map.
isaac.map.MapBridge
Description
A bridge for communication between map container and WebsightServer
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
request [nlohmann::json]: Request to the MapBridge
Outgoing messages
reply [nlohmann::json]: Reply from the MapBridge
- Parameters
(none)
isaac.map.MultiplicationFlatmapCost
Description
Helper FlatmapCostCombination that takes a list of flatmap cost and multiply them together. If any of the flatmap cost returns an invalid position, then this codelet will also return the position as invalid.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.map.ObstacleAtlas
Description
A component which holds a virtual representation of obstacles detected around the robot. Currently distance maps and spherical obstacles are available. This component is thread safe and can be accessed from other components without message passing.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
static_frame [string] [default=”world”]: Frame which can be considered static, it is used to do time synchronization of obstacles.
isaac.map.OccupancyFlatmapCost
Description
Cost map layer that uses a map. If the robot is in collision with the map, the position will be marked as invalid. Otherwise the cost will increase the closer we get to an obstacle using a quadratic cost:
cost = offset_weight + penality * std::max(0, target_distance - distance)^2
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
map_name [string] [default=”map/isaac.navigation.DistanceMap”]: Name of the component that contains the DistanceMap used to check for detection and get the dimension of the world.
target_distance [double] [default=0.5]: The distance before we start penalizing the node. Any node further away than this distance to an obstacle won’t be penalized, however if the distance is smaller, then a penality of (sampling_distance^2 - distance^2) * target_distance_penality will be assigned to the position
penality [double] [default=4.0]: Scale used to penalized node too close to obstacles (see target_distance for more information).
offset_weight [double] [default=1.0]: Offset weight, this is the minimum weight returned by this function which corresponds to position in the map further away than the target distance.
isaac.map.OccupancyGridMapLayer
Description
A grid map layer for a map node. It provides access to an occupancy grid map which stores for each cell whether the cell is blocked or free. It also holds a distance map computed based on occupancy grid map which contains the distance to the nearest obstacle for each cell computed based on a given threshold.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
filename [string] [default=]: Filename of grayscale PNG which will be loaded as the occupancy grid map
cell_size [double] [default=]: Size of one map pixel in meters
threshold [double] [default=0.4]: Threshold used to compute the distance map. Cells with a value larger than this threshold are assumed to be blocked.
isaac.map.PolygonFlatmapCost
Description
Cost map layer that contains areas represented by a list of polygons loaded from a PolygonMapLayer. These areas contains a specific weight to be applied to any position within the area while another weight will be apply to any robot position outside these areas.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
polygon_layer_name [string] [default=]: Name of the component that contains the PolygonMapLayer used to get the list of polygons;
polygon_names [std::vector<std::string>] [default=]: List of the names of the polygon in the PolygonMapLayer to be used to compute the cost. If it is not provided all the polygons will be used.
inside_weight [double] [default=]: The weight of a position inside the polygon areas.
outside_weight [double] [default=]: The weight of a position outside the polygon areas.
use_robot_center [bool] [default=true]: If true, we only use the robot center to decide if a point is inside the area. This is much faster than using the robot_shape. If false, then the robot shape and orientation will be used to decide whether the position is inside the area.
isaac.map.PolygonMapLayer
Description
A map layer which holds annotated polygons and provides various methods to access them
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
polygons [json] [default=nlohmann::json::object()]: A json object from configuration containing the polygons.
Layout:
{
"poly1": {
"points": [[<polygon point1>], [<polygon point2>]],
},
}
color [Vector3i] [default=(Vector3i{120, 120, 120})]: Layer color.
frame [string] [default=”world”]: Frame the polygons are defined in.
obstacle_max_distance [double] [default=1.5]: The maximum distance to consider to create the obstacle from the polygons
obstacle_pixel_size [double] [default=0.1]: The resolution of the map used to create the obstacle from the polygons
isaac.map.PolylineFlatmapCost
Description
Cost map layer that contains an area represented by a polyline and a width. For any robot position we look for the closest point on the polyline, we deduce the target direction using the direction of the closest edge. If the robot is close enough to the polyline the cost is given by:
cost = inside_offset + penality_angle * (angle - target_angle)^2 + penality_distance * dist^2
- If the robot is too faraway, the cost is:
cost = outside_weight
In addition the area might have an optional validity range. If the robot orientation is outside the provided range, the position is considered invalid.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
color [Vector3ub] [default=(Vector3ub{120, 240, 120})]: Color to visualize the polygon in the map.
polyline [std::vector<Vector2d>] [default=]: Color to visualize the areas in the map.
width [double] [default=]: The distance we consider the position to be influenced by the polyline
penality_angle [double] [default=1.0]: The scaling factor of the cost associated to the delta angle.
penality_distance [double] [default=1.0]: The scaling factor of the cost associated to the distance to the polyline.
inside_offset [double] [default=1.0]: The base offset when close to the polyline.
outside_weight [double] [default=1.0]: The weight when we are too far away from the polyline
delta_angle_range [Vector2d] [default=]: It contains the valid range of the angle relative to the target_angle. If not provided all the orientations will be valid.
isaac.map.Spline
Description
A component which holds a Catmull-Rom spline. If a file name is set, this component will read spline points from file. A function to publish the spline as json message is provided.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
json [JsonProto]: Outgoing message that defines this spline
Parameters
filename [string] [default=]: If set, spline points will be read from file. Expected layout:
- {
-
- “keypoints”: [
[2.3, 4.5], [1.1, 7.5], [0.0, -4.5], [-2.2, 0.1]
], “knot”: 0.5
}
isaac.map.SurfletModelAtlas
Description
A database which provides access to surflet models. A surflet model is a set of surflets and each surflet has a point location, a normal for that point location, and a radius of influence.
Surflet models are loaded from a cask file where they are stored using CompositeProto. They can be written to a cask file for example by using the cask Python API. Each surflet model is stored as one CompositeProto which need to contain the following three quantities:
(“point”, kPosition, 3) (“normal”, kNormal, 3) (“radius”, kNone, 1)
When surflets are loaded they are stored as an Eigen matrix to allow efficient mathematical operations. Surflets are stored as seven doubles as columns in a matrix. For each surflets the following values are stored in this order: [px, py, pz, nx, ny, nz, r].
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
cask [string] [default=]: Cask filename which contains surflet models.
isaac.map.SurfletModelPublisher
Description
A codelet which periodically publishes surflet models stored in a SurfletModelAtlas component. This component can be used to give event-driven components access to surflet models. For additional information on formats see SurfletModelAtlas.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
surflets [CompositeProto]: The requested surflet model as a CompositeProto.
Parameters
model_atlas [string] [default=]: Name of surflet model atlas database. This has the form node_name/component_name.
model_names [std::vector<std::string>] [default=]: List of names of surflet models in atlas database
model_frame_names [std::vector<std::string>] [default=]: List of names of coordinate frames to use for surflet models
reference_frame_name [string] [default=]: Name of reference frame of the published surflet model
tick_count [int] [default=1]: Number of times to publish before reporting success.
isaac.map.WaypointMapLayer
Description
A map layer which holds annotated waypoints and provides various methods to access them
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
waypoints [json] [default=nlohmann::json::object()]: A json object from configuration containing the waypoints.
Layout:
{
"wp1": { "pose": [1,0,0,0,0,0,0], "radius": 0.5 },
"wp3": { "pose": [1,0,0,0,0.1,-1.2,0], "color": [54.0, 127.0, 255.0] }
}
isaac.message_generators.BinaryTensorGenerator
Description
TensorAssignmentGenerator creates lists of assignment tensors based on the input dimensions It provides option to select between random assignment where every value in a row can be either 0 or 1 and uniform assignment where every value is 1.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
assignment [TensorProto]: Produces tensor of type int with entries set randomly to 0 or 1.
Parameters
dimensions [Vector2i] [default=Vector2i(1, 100)]: Dimensions of the generated rank 2 tensor
probability [double] [default=0.5]: Probability for assignment
isaac.message_generators.CameraGenerator
Description
CameraGenerator publishes left and right color images and a left depth image with made up data.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
color_left [ColorCameraProto]: Random left color image
color_right [ColorCameraProto]: Random right color image
depth [DepthCameraProto]: Random depth image
Parameters
rows [int] [default=1080]: The number of rows for generated data
cols [int] [default=1920]: The number of columns for generated data
isaac.message_generators.ConfusionMatrixGenerator
Description
Binarizes the segmentation output based on a user-defined threshold
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
confusion_matrix [ConfusionMatrixProto]: Output segmentation prediction with regulated probabilities
- Parameters
(none)
isaac.message_generators.Detections2Generator
Description
Codelet to publish mock bounding box detections. It takes a user defined JSON which specifies the class and the bounding box rectangle coordinates for the detections and creates a Detections2Proto message out of it.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
mock_detections [Detections2Proto]: Output mocked detection proto message
Parameters
detection_configuration [json] [default={}]: Parameter defining the configuration of the detections we need to mock.
- Format: [ { “class_label”: “A”, “confidence”: 0.8,
“bounding_box_coordinates”: [0.0, 0.0, 100.0, 100.0] } ]
The bounding box coordinates are of the form (x1, y1, x2, y2)
isaac.message_generators.Detections3Generator
Description
Publishes Detections3Proto based on the pose from pose tree It also adds additional noise to perturb the output
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
output_poses [Detections3Proto]: publish dummy poses to test pose refinement
Parameters
pose [Pose3d] [default=]: Randomized pose to be added to dummy pose to generate different start positions
label [string] [default=”object”]: object label param for pose
reference [string] [default=”camera”]: reference label param for pose
num_detections [int] [default=1]: Number of detections at output
isaac.message_generators.DifferentialBaseControlGenerator
Description
Generates periodic differential base states with specified parameters
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
command [StateProto]: A StateProto representing a navigation::DifferentialBaseControl state which is populated with values specified via parameters
Parameters
linear_speed [double] [default=0.0]: Linear speed in outgoing state message
angular_speed [double] [default=0.0]: Angular speed in outgoing state message
isaac.message_generators.DifferentialBaseStateGenerator
Description
Generates periodic differential base states with specified parameters
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
state [StateProto]: Output state of differential base (DifferentialBaseDynamics)
Parameters
linear_speed [double] [default=1.0]: Linear speed in outgoing state message
angular_speed [double] [default=0.1]: Angular speed in outgoing state message
linear_acceleration [double] [default=-0.1]: Linear acceleration in outgoing state message
angular_acceleration [double] [default=0.05]: Angular acceleration in outgoing state message
isaac.message_generators.FlatscanGenerator
Description
FlatscanGenerator publishes a FlatscanProto periodically. Angles are parameterized. Ranges can be optionally randomized by adding an alice::Random component to the same node and setting a range_standard_deviation.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
flatscan [FlatscanProto]: Outgoing “flat” range scan
Parameters
invalid_range_threshold [double] [default=0.2]: Beams with a range smaller than or equal to this distance are considered to have returned an invalid measurement.
out_of_range_threshold [double] [default=100.0]: Beams with a range larger than or equal to this distance are considered to not have hit an obstacle within the maximum possible range of the sensor.
beam_count [int] [default=1800]: Number of beams in outgoing message
angles_range [Vector2d] [default=Vector2d(0.0, TwoPi<double>)]: Azimuth angle range for the beams
range_mean [double] [default=20.0]: Mean value for the ranges.
range_standard_deviation [double] [default=]: Standard deviation for the range values. Requires an alice::Random component in the same node.
isaac.message_generators.HolonomicBaseControlGenerator
Description
Publishes holonomic command with desired speed values
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
command [StateProto]: A StateProto representing a navigation::HolonomicBaseControls state which is populated with values specified via parameters
Parameters
speed_angular [double] [default=0.0]: Angular speed in counter-clockwise direction
speed_linear_x [double] [default=0.0]: Linear speed in forward direction
speed_linear_y [double] [default=0.0]: Linear speed in left direction
isaac.message_generators.ImageFeatureGenerator
Description
ImageFeatureGenerator generates an animated chessboard image with 2d features selected. The 2d features are the centers of the cells. On each tick, the image moves at right down corner.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
image [ColorCameraProto]: Output mockup image
coordinates [TensorProto]: Output keypoint coordinates
features [TensorProto]: Output features ids
Parameters
cell_size [int] [default=50]: Chessboard cell size in pixel
image_rows [int] [default=512]: Image height in pixels
image_cols [int] [default=512]: Image width in pixels
animation_speed [float] [default=2.0]: Chessboard shift per tick in pixels
isaac.message_generators.ImageLoader
Description
Reads images from file systems and outputs them as messages. This can for example be used to create mock up tests when no camera hardware is available. This codelet encodes the raw image as a ColorCameraProto message containing the RGB image (and camera intrinsic information).
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
color [ColorCameraProto]: Output the color camera image proto
depth [DepthCameraProto]: Output the depth image proto
Parameters
color_filename [string] [default=]: Path of the color image file. The image is expected to be a 3-channel RGB PNG.
depth_filename [string] [default=]: Path of the depth image file. The image is expected to be a 1-channel 16-bit grayscale PNG.
color_glob_pattern [string] [default=]: Path of the color image directory. The directory is expected to contain only 3-channel RGB PNG.
The directory name should be specified according to the rules set used by the shell (See glob(7), POSIX.2, 3.13). eg: ‘./*’ locates all file names in ./
‘./*.py’ locates all .py files in ./
loop_images [bool] [default=true]: The images in the specified directory plays in a loop if set to true. Otherwise it plays once.
sort_by_number [bool] [default=false]: The images in the directory are sorted by NUMBER when they are ‘NUMBER.jpg’ or ‘NUMBER.png’.
depth_scale [double] [default=0.001]: A scale parameter to convert 16-bit depth to f32 depth
distortion_model [string] [default=”brown”]: Image undistortion model. Must be ‘brown’ or ‘fisheye’
focal_length [Vector2d] [default=]: Focal length in pixels
optical_center [Vector2d] [default=]: Optical center in pixels
distortion_coefficients [Vector5d] [default=Vector5d::Zero()]: Distortion coefficients (see the DistortionProto in Camera.capnp for details)
min_depth [double] [default=0.0]: Minimum depth
max_depth [double] [default=10.0]: Maximum depth
isaac.message_generators.LatticeGenerator
Description
Creates a lattice proto which represents a grid map. This information includes the cell size, name of the lattice frame and dimensions of the lattice in pixels. The codelet also computes the pose of the reference frame with respect to the lattice using the dimensions of the lattice and the relative offset of the reference frame with respect to the lattice. This pose is set in the pose tree.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
gridmap_lattice [LatticeProto]: Output lattice proto. This contains relevant information about the corresponding gridmap.
Parameters
cell_size [double] [default=0.05]: Parameter defining the cell size in metres.
dimensions [Vector2i] [default=Vector2i(256, 256)]: The dimensions of the grid map in pixels
lattice_frame_name [string] [default=”gridmap_frame”]: The name of the lattice coordinate frame. This will be used to write the pose of the gridmap relative to the reference frame in the pose tree.
reference_frame_name [string] [default=”ref”]: Name of the reference frame
relative_offset [Vector2d] [default=Vector2d(0.0, -0.5)]: Percentage offset of robot relative to the map. The offset determines the position of the robot (or the reference frame) with respect to the grid map created. The origin of the grid map is considered to be at the top-left of the grid. The x parameter defines the percentage offset for the rows (positive is in the upward direction and negative is in the downward direction), and the y parameter defines the offset for the columns (positive is in the left direction and negative is in the right direction). Determining the offset using a percentage basis makes it agnostic to the dimensions of the map. The default value fixes the reference frame at the top-center of the grid map.
isaac.message_generators.PanTiltStateGenerator
Description
Generates periodic PanTiltState with specified pattern
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
target [StateProto]: Output, List of AprilTag fiducials
Parameters
pan_max_angle [double] [default=1.0471975511965976]: Max panning on one side in Rad
pan_offset_angle [double] [default=0.0]: Degree offset for panning
pan_speed [double] [default=0.1]: Speed for panning in round/second
pan_mode [WaveMode] [default=WaveMode::kSinus]: Wave function for panning
tilt_max_angle [double] [default=0.5235987755982988]: Max tilting on one side in degree
tilt_offset_angle [double] [default=0.0]: Degree offset of tilting
tilt_speed [double] [default=0.1]: Speed for tilting in round/second
tilt_mode [WaveMode] [default=WaveMode::kSinus]: Wave function for tilting
isaac.message_generators.Plan2Generator
Description
Publishes a plan which is populated with the waypoints specified via parameters. Waypoints can be either listed as poses directly, or as names of the frames to look-up from the PoseTree.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
plan [Plan2Proto]: The plan generated as specified via parameters
Parameters
waypoints [std::vector<Pose2d>] [default=]: List of waypoint poses in the form of (angle, x, y).
Example configuration: “waypoints”: [
[4.15, 26.1, 9.58], [1.578, 26.14, 14.75]
] Either ‘waypoints’ or ‘frames’ parameter needs to be set.
frames [std::vector<std::string>] [default=]: List of waypoints as frame names defined in PoseTree. Either ‘waypoints’ or ‘frames’ parameter needs to be set.
plan_frame [string] [default=”world”]: Frame for the waypoints. Sets the plan frame in outgoing message.
static_frame [string] [default=”world”]: Name of a frame that is not moving. Used to decide whether a new plan message needs to be published.
new_message_threshold [Vector2d] [default=Vector2d(1e-3, DegToRad(0.01))]: A new message will be published whenever change in poses exceeds this threshold. Values are for Euclidean distance and angle respectively.
isaac.message_generators.PointCloudGenerator
Description
Generate point cloud messages to send out.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
point_cloud [PointCloudProto]: Outgoing proto messages used to publish the point cloud messages.
Parameters
point_count [int] [default=10000]: Total number of point to generate.
point_per_message [int] [default=100]: Maximum number of points in a single given message.
has_normals [bool] [default=false]: Whether there should be normals in the messages, as many as the number of points.
has_colors [bool] [default=false]: Whether there should be colors in the messages, as many as the number of points.
has_intensities [bool] [default=false]: Whether there should be intensities in the messages, as many as the number of points.
isaac.message_generators.PoseGenerator
Description
PoseGenerator creates a series of poses which moves by step every tick
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
lhs_frame [string] [default=]: Name of the reference frame of the left side of the pose
rhs_frame [string] [default=]: Name of the reference frame of the right side of the pose
initial_pose [Pose3d] [default=Pose3d::Identity()]: Initial pose
step [Pose3d] [default=Pose3d::Translation({1.0, 0.0, 0.0})]: The pose delta for every tick
isaac.message_generators.RangeScanGenerator
Description
RangeScanGenerator publishes a RangeScanProto periodically. Simulates a range scan in a radial-symmetric world with desired parameters.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
scan [RangeScanProto]: Outgoing range scan
Parameters
azimuth_angle_range [Vector2d] [default=Vector2d(0.0, TwoPi<double>)]: Azimuth angle range for the beams. (2pi, 0) would produce counter-clockwise rotation.
num_slices [int] [default=16]: Number of (horizontal) ray slices that cover azimuth_angle_range
num_slices_per_message [int] [default=0]: Number of (horizontal) ray slices published with each message. 0 means publish num_slices each message. Needs to be smaller than num_slices.
vertical_beam_angles [std::vector<double>] [default=std::vector<double>({DegToRad(-15.0), DegToRad(-7.0), DegToRad(-3.0), DegToRad(-1.0), DegToRad(+1.0), DegToRad(+3.0), DegToRad(+7.0), DegToRad(+15.0)})]: The (vertical) beam angles to use for every slice
max_range [double] [default=100.0]: Out of range threshold
min_range [double] [default=0.0]: Invalid range threshold
range_domain_max [double] [default=110.0]: Max value of the range domain. Used when normalizing range values.
delta_time [int] [default=50‘000]: Delay in microseconds between firing. Default is 20 Hz.
intensity_denormalizer [double] [default=1.0]: Scale factor which can be used to convert an intensity value from an 8-bit integer to meters.
height [double] [default=1.0]: The height of the lidar over the ground plane
segments [std::vector<geometry::LineSegment2d>] [default={}]: Lines in range / height plane which define the world
Layout: [
[ [-100.0, 0.0], [100.0, 0.0] ], [ [ 0.0, 0.0], [ 20.0, 2.0] ]
]
isaac.message_generators.RigidBody3GroupGenerator
Description
Publishes messages with a single body using configured values
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
bodies [RigidBody3GroupProto]: Output group with a single body
Parameters
body_name [string] [default=”dummy_body”]: Name of the body
reference_frame [string] [default=”world”]: Reference frame for the body
pose [Pose3d] [default=Pose3d::Identity()]: Pose of the body with respect to the reference frame
linear_velocity [Vector3d] [default=Vector3d::Zero()]: Linear velocity of the body
angular_velocity [Vector3d] [default=Vector3d::Zero()]: Angular velocity of the body
linear_acceleration [Vector3d] [default=Vector3d::Zero()]: Linear acceleration of the body
angular_acceleration [Vector3d] [default=Vector3d::Zero()]: Angular acceleration of the body
isaac.message_generators.TensorGenerator
Description
TensorGenerator creates lists of tensors from nothing.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
sample [TensorProto]: Produced random list of tensors with the specified dimensions
Parameters
dimensions [Vector3i] [default=Vector3i(3, 640, 480)]: Dimensions of the generated rank 3 tensor
element_type [TensorGeneratorElementType] [default=TensorGeneratorElementType::kFloat32]: The element type for the tensor
isaac.message_generators.TrajectoryListGenerator
Description
TrajectoryListGenerator publishes a trajectory with made up data. The fake trajectory is a vertical helix, in 3D, centered on the reference frame origin, spinning around the Z axis.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
trajectories [Vector3TrajectoryListProto]: The output channel to send all generated trajectories.
Parameters
frame [string] [default=”world”]: Reference frame for the generated trajectories.
position_count [int] [default=60]: Number of positions in the generated trajectory.
helix_radius [double] [default=5.0]: The radius of the vertical helix created as the made up trajectory.
position_delta_angle [double] [default=0.1]: The delta angle between each positions in the generated trajectory.
isaac.ml.BoundingBoxPadding
Description
This codelet takes detections as input and pad the detections with random number of pixels picked from uniform distribution within a range specified by the input parameters.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_detections [Detections2Proto]: Input list of bounding boxes that need to be padded
Outgoing messages
output_detections [Detections2Proto]: Detections with padded bounding boxes
Parameters
bbox_padding_range [Vector2i] [default=]: If set, the bounding box is padded with pixels and the number of pixels padded on each side of the bbox is given by a random number in the range specified by the parameter with uniform distribution. If set to [3, 7] - random padding on each side with pixel number between 3 and 7. If set to [3, 3] - bounding box is padded by 3 pixels on each of the 4 sides.
image_dimensions [Vector2i] [default=]: Dimensions of the image corresponding to the bounding box This parameter is needed to ensure that the bounding boxes after padding are within the image dimensions.
isaac.ml.ColorCameraEncoderCpu
Description
Encodes the color image from a ColorCameraProto into a tensor. The codelet can downsample the image, normalize pixel values, and transform to planar storage order.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
rgb_image [ColorCameraProto]: Input RGB color image
Outgoing messages
tensor [TensorProto]: A rank 3 tensor with image data normalized and transformed according to parameters.
Parameters
rows [int] [default=960]: The image is resized before it is encoded. Currently, only downsampling is supported for this. Number of pixels in the height dimension of the downsampled image.
cols [int] [default=540]: The image is resized before it is encoded. Currently, only downsampling is supported for this. Number of pixels in the width dimension of the downsampled image.
pixel_normalization_mode [ImageToTensorNormalization] [default=ImageToTensorNormalization::kNone]: Type of Normalization to be performed.
tensor_index_order [TensorTransposeOp] [default=TensorTransposeOp::k012]: The indexing order, default is {row, column, channel}
isaac.ml.ColorCameraEncoderCuda
Description
Encodes the color image from a ColorCameraProto into a tensor. The codelet can downsample the image, normalize pixel values, and transform to planar storage order. Uses GPU-accelerated functions.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
rgb_image [ColorCameraProto]: Input RGB color image
Outgoing messages
tensor [TensorProto]: A rank 3 tensor with image data normalized and transformed according to parameters.
Parameters
rows [int] [default=960]: The image is resized before it is encoded. Currently, only downsampling is supported for this. Number of pixels in the height dimension of the downsampled image.
cols [int] [default=540]: The image is resized before it is encoded. Currently, only downsampling is supported for this. Number of pixels in the width dimension of the downsampled image.
keep_aspect_ratio [bool] [default=true]: The aspect ration of the image is preserved during resizing, the ROI is centered and padded.
pixel_normalization_mode [ImageToTensorNormalization] [default=ImageToTensorNormalization::kUnit]: Type of Normalization to be performed. Todo: Add additional normalization modes besides unit for cuda
tensor_index_order [TensorTransposeOp] [default=TensorTransposeOp::k012]: The indexing order, default is {row, column, channel}
isaac.ml.ConfusionMatrixAggregator
Description
Accumulates evaluation metrics of an object detection algorithm across multiple images. Sums the confusion matrices of two ObjectDetectionMetricsProto messages. Each time a new metrics message is received, this codelet updates the accumulated metrics and publishes them in an outgoing ObjectDetectionMetricsProto message.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
sample_metrics [ConfusionMatrixProto]: incoming metrics message
Outgoing messages
accumulated_metrics [ConfusionMatrixProto]: outgoing accumulated metrics message
Parameters
confusion_matrix_slice_index [int] [default=0]: Index to specify which slice of the confusion matrix we want to visualize. The slicing is done along the third dimension. Hence each slice of the matrix represents a 2D tensor which is a single confusion matrix for a particular intersection over union threshold.
isaac.ml.Detection3Encoder
Description
Encodes 3D detections into a tensor
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detection3 [Detections3Proto]: Input detection proto.
Outgoing messages
tensor [TensorProto]: A tensor of dimensions (N, 8) where N is the number of rigid bodies. Channels are as follows:
Columns 0-2 are translations in the order (px, py, pz), Columns 3-6 are orientations in quaternions in the order (qw, qx, qy, qz), Column 7 is the class id of the rigid body Example: {{px_1, py_1, pz_1, qw_1, qx_1, qy_1, qz_1, id_1},
…, {px_N, py_N, pz_N, qw_N, qx_N, qy_N, qz_N, id_N}}
Parameters
class_names [std::vector<std::string>] [default={}]: List of class names to detect as string
isaac.ml.DetectionComparer
Description
Evaluates the object detection predicted output as compared to the ground truth. Academic standards for evaluating object detection models involve computing the confusion matrix parameters of the predicted detections over a range of intersection over union thresholds. Intersection over union between two bounding boxes is calculated by the following formula - (Area of intersection between the two bounding boxes) / (Area of their union) Thus, it defines the degree of overlap between two bounding box rectangles. If the two bounding boxes are prefectly overlapped, the intersection over union score for them would be 1.0.
This codelet computes a confusion matrix for each sample, of dimensions (num_classes + 1) * (num_classes + 1) * num_iou_thresholds. The element at (i, j, k) represents the number of detections in that sample which had ground truth class label as class i and were predicted as class j using intersection over union threshold of k. The last element of the 0th and 1st dimensions represent the background class (bg). An example confusion matrix for classes A and B for a single intersection over union threshold would be -
A B bg
A ( 2 0 0 ) B ( 0 3 0 ) bg ( 0 0 0 )
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
ground_truth_detection [Detections2Proto]: Ground truth object detection input
predicted_detection [Detections2Proto]: Predicted detection input
Outgoing messages
metrics [ConfusionMatrixProto]: Output containing the evaluated metrics for the detections in a single sample.
The output message contains the following information - * Number of image samples over which the metrics were computed. * List of intersection over union thresholds over which the metrics were computed. * A 3D tensor representing the confusion matrices calculated over these intersection over union
thresholds. Each two-dimensional slice of the tensor along the third axis represents the confusion matrix computed for a particular intersection over union threshold.
Parameters
intersection_over_union_thresholds [std::vector<double>] [default=std::vector<double>({0.5, 0.8, 0.95})]: List of intersection over union thresholds over which the metrics are computed
class_names [std::vector<std::string>] [default={}]: The allowed class names for the ground truth and predicted detections. The confusion matrix is constructed by assigning an index to each of these classes and one for the background class. If a sample contains any class other than the ones specified here, it gets dropped.
isaac.ml.DetectionEncoder
Description
Encodes detection for input into the object detection neural network.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detection [Detections2Proto]: Input detection proto.
Outgoing messages
tensor [TensorProto]: Detection encoded as a (N, 5) tensor where N is the number of bounding boxes. Channels are: (bb_min_x, bb_min_y, bb_max_x, bb_max_y, class_id).
Parameters
class_names [json] [default={}]: The class names of our detection objects.
area_threshold [double] [default=10.0]: The minimum area of bounding boxes
isaac.ml.DetectionImageExtraction
Description
This codelet takes an image and list of detections as input. For each detection, the input is cropped to the bounding box and downsampled to the target size. The output is a rank 4 tensor of either NCHW or NHWC order, with the downsampled images separated by the batch dimension. All operations are performed using cuda based functionality.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_detections [Detections2Proto]: Input list of bounding boxes to crop to. Labels and confidence are not used.
input_image [ColorCameraProto]: Input image from which to crop and resize.
Outgoing messages
output_tensors [TensorProto]: Cropped and resized output as batch of image tensors.
Parameters
downsample_size [Vector2i] [default=]: Target dimensions (rows, cols) for downsample after crop.
pixel_normalization_mode [ImageToTensorNormalization] [default=ImageToTensorNormalization::kUnit]: Type of Normalization to be performed.
tensor_index_order [TensorTransposeOp] [default=TensorTransposeOp::k201]: The indexing order, default is {channel, row, column}.
bbox_padding_range [Vector2i] [default=]: If set, the bounding box is padded with pixels and the number of pixels padded on each side of the bbox is given by a random number in the range specified by the parameter with uniform distribution. If set to [3, 7] - random padding on each side with pixel number between 3 and 7. If set to [3, 3] - bounding box is padded by 3 pixels on each of the 4 sides.
isaac.ml.Detections3Comparer
Description
Helper codelet that compute the rotation and translation error between two poses and output as JSON.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
reference_poses [Detections3Proto]: Reference pose
predicted_poses [Detections3Proto]: Predicted pose
Outgoing messages
statistics [JsonProto]: Outputs statistics about the reference_poses and the predicted_poses.
- Parameters
(none)
isaac.ml.EvaluateSegmentation
Description
Evaluates the segmentation output as compared to the ground truth. Computes the average pixel accuracy and intersection over union score for the segmentation prediction output. Publishes the evaluation metrics to Sight.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segmentation_ground_truth [TensorProto]: Ground truth segmentation input
segmentation_prediction [SegmentationPredictionProto]: Predicted segmentation
- Outgoing messages
- Parameters
(none)
(none)
isaac.ml.FilterDetectionsByLabel
Description
Filters detections by matching lists of included or excluded label names.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_detections [Detections2Proto]: A list of detections which may have different labels.
Outgoing messages
output_detections [Detections2Proto]: A subset of the input detections, filtered by matching the included and excluded labels.
Parameters
whitelist_labels [std::vector<std::string>] [default=]: The labels for which to include only detections by string match. Includes all if not set. NOTE Set either whitelist_labels or blacklist_labels, not both.
blacklist_labels [std::vector<std::string>] [default=]: The labels for which to exclude some detections by string match. Excludes none if not set. NOTE Set either whitelist_labels or blacklist_labels, not both.
max_detections [int] [default=3]: Maximum number of detections to output. If number of incoming detections exceeds this number, smaller detections are filtered out.
isaac.ml.GenerateKittiDataset
Description
This codelet generates a dataset in KITTI format by saving images and detections to disk. It creates a set of corresponding images and labels for training, and a set of images for testing. The KITTI format label file for each image contains one line per object in the image, followed by a set of values. This codelet populates only the bounding box values for each image, leaving the rest as 0.0. For more info on this “lite” KITTI format, see: https://docs.nvidia.com/metropolis/TLT/tlt-getting-started-guide/index.html#kitti_file
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
image [ColorCameraProto]: Image input (must be a three-channel color image of image3ub)
detections [Detections2Proto]: Detections associated with the image input
- Outgoing messages
(none)
Parameters
num_training_samples [int] [default=1000]: The total number of training samples to generate
num_testing_samples [int] [default=100]: The total number of testing samples to generate
path_to_dataset [string] [default=]: Path to the root of the KITTI dataset. See https://docs.nvidia.com/metropolis/TLT/tlt-getting-started-guide/index.html#kitti_file for file structure and organization.
isaac.ml.HeatmapDecoder
Description
Converts a tensor representing heatmap values to a HeatmapProto type This codelet has the inverse functionality of the HeatmapEncoder codelet Please refer HeatmapEncoder.hpp for details on the message types
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
tensor [TensorProto]: Input tensor containing heatmap of probabilities
Outgoing messages
heatmap [HeatmapProto]: Output heatmap proto
Parameters
grid_cell_size [double] [default=2.0]: Cell size (in metres) of every pixel in heatmap
map_frame [string] [default=”world”]: The pose map frame for the heatmap
isaac.ml.HeatmapEncoder
Description
Encodes a heatmap as a tensor.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
heatmap_proto [HeatmapProto]: Input heatmap proto containing heatmap image of probabilities
Outgoing messages
heatmap_tensor [TensorProto]: Heatmap encoded as a tensor
- Parameters
(none)
isaac.ml.ImageDetectionExtraction
Description
Encodes the color or segmentation image from ImageProto into a tensor. The codelet crops the image according to input detections, downsample the cropped image, normalize pixel values, and transform to planar storage order.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections2Proto]: Input list of bounding boxes to crop to. Labels and confidence are not used.
image [ImageProto]: Input RGB color image or segmentation image that needs to converted to tensor
Outgoing messages
tensor [TensorProto]: Cropped and resized output as batch of image tensors with dimension (Nd, rows, cols, Nc) or (Nd, Nc, rows, cols) depending on the TensorIndexOrder if Nc =3. (Nd, rows, cols) if input image proto contains a single channel image. (Nc = 1) Nd is the number of input detection, rows, cols are the rows and columns of the output image and Nc is number of channels which is either 3 for rgb or 1 for segmentation image.
Parameters
downsample_size [Vector2i] [default=]: Target dimensions (rows, cols) for downsample after crop.
pixel_normalization_mode [ImageToTensorNormalization] [default=ImageToTensorNormalization::kNone]: Type of Normalization to be performed. Valid modes are {kNone, kUnit, kPositiveNegative, kHalfAndHalf}
tensor_index_order [TensorTransposeOp] [default=TensorTransposeOp::k012]: The indexing order of the output tensor, default is {row, column, channel}
isaac.ml.LabelToBoundingBox
Description
Computes bounding boxes from given class and instance label images. All clusters of pixels with the same instance and class label are grouped together and an image AABB is computed. All bounding boxes are then published together.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segmentation [SegmentationCameraProto]: Input image with class and instance labels.
Outgoing messages
detections [Detections2Proto]: Computed bounding boxes - one AABB for every occuring instance/label combination.
Parameters
resolution [int] [default=1]: The target resolution when computing bounding boxes. A value of 1 means bounding boxes are pixel-accurate. A value of 3 would mean bounding boxes are accurate up to 3 pixels.
min_bbox_size [int] [default=1]: Minimum size in pixels across the two dimensions of the rectangle to be considered as non-zero size bounding box. A value of 1 means the bounding box rectangle length and breadth must be at least one pixel.
isaac.ml.ResizeDetections
Description
This codelet performs resizing of bounding boxes. Bounding boxes are defined using coordinates relative to the image of the detection, and if images are resized then their associated bounding boxes must also be resized accordingly.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections2Proto]: Input detections associated with an image of dimensions specified by the input_image_dimensions ISAAC_PARAM
Outgoing messages
resized_detections [Detections2Proto]: Output detections associated with an image of dimensions specified by the output_image_dimensions ISAAC_PARAM
Parameters
input_image_dimensions [Vector2d] [default=]: Resolution of the image (rows, cols) that the input detections were computed for.
output_image_dimensions [Vector2d] [default=]: Resolution of the image (rows, cols) that the output detections should be transformed to.
isaac.ml.RigidbodyToDetections3
Description
This codelet reads in list of 3D rigid bodies with poses in Isaac SDK coordinate frame, converts the poses to reference frame as one of the input rigid bodies if needed and publishes the list of 3D rigid body poses in reference frame as Detections3Proto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
rigid_bodies [RigidBody3GroupProto]: Input list of 3D rigid body poses in Isaac SDK coordinate frame
Outgoing messages
detections [Detections3Proto]: Output list of 3D rigid body poses with respect to desired rigid body coordinate frame from the input list. Index of this reference rigid body in the input list is given by input parameter, ref_frame_id.
Parameters
ref_frame_id [int] [default=0]: Index of the rigid body in input list that is used as reference coordinate frame for publishing the poses of all the rigid bodies in the input list. If ref_frame_id < 0, object poses are published with respect to Isaac SDK coordinate frame.
isaac.ml.SampleAccumulator
Description
Collects training samples and makes them available for machine learning.
Each sample contains of a list of tensors. Tensors must currently be based on 32-bit floats. This codelet does not use macros to define input channels. Instead input channels are created based on the parameter channel_names.
Note: SampleAccumulator processes one sample at a time which might lead to message loss with many channels at a high data rate.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
sample_buffer_size [int] [default=256]: Number of training samples to keep in the buffer
randomize_samples [bool] [default=true]: Randomize the order of samples in the buffer when true
channel_names [std::vector<std::string>] [default={“samples”}]: Names of input channels. A sample will contain one tensor for each input channel in the given order.
isaac.ml.SegmentationComparer
Description
Evaluates the segmentation predicted output as compared to the ground truth. This codelet computes a confusion matrix for each sample, of dimensions (num_classes + 1) * (num_classes + 1) * num_thresholds. The element at (i, j, 0) represents the number of pixels in that sample which had ground truth class label as class i and were predicted as class j. The last element of the 0th and 1st dimensions represent the pixels that do not belong to any of the classes in consideration (N/A). Typically the pixels which belong to this category are - 1. The ones which have an index higher than the number of classes in consideration, as determined
by the number_of_classes parameter below.
2. The ones which were assigned the index of the unknown class in TensorArgMax. An example confusion matrix for classes A and B would be -
A B N/A
A ( 2 0 0 ) B ( 0 3 0 ) N/A ( 0 0 0 )
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
ground_truth [TensorProto]: Ground truth object segmentation input
prediction [TensorProto]: Predicted segmentation input
Outgoing messages
metrics [ConfusionMatrixProto]: Output containing the evaluated metrics for the segmentations in a single sample.
Parameters
argmax_threshold [double] [default=0.5]: The discretization threshold that was used to convert a 3 dimensional tensor to a 2 dimensional tensor in TensorArgMax. This parameter is repeated here so as to fill the “thresholds” parameter in the ConfusionMatrixProto. During evaluation, it’s important to know the confidence threshold that was used to decide if a prediction was valid or not, since the confusion matrix produced could vary depending on this threshold. Hence, although the inference results provided to this comparer codelet have already been filtered based on a threshold, we repeat the parameter for information so that it can be propagated downstream.
number_of_classes [int] [default=0]: Number of classes expected from ground truth and prediction. This information is needed to build a confusion matrix of the appropriate size and to determine the class indices to compare. For example, if this value is set to 2, we’d consider classes 0 and 1 while comparing the ground truth and predicted segmentations.
isaac.ml.SegmentationDecoder
Description
Convert tensor to segmentation prediction
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
tensors [TensorProto]: The input tensor contains semantic segmentation label prediction where each pixel has a probability distribution over all classes. Dimensions: (rows, cols, number of classes)
Outgoing messages
segmentation_prediction [SegmentationPredictionProto]: Output segmentation prediction proto which contains the class information
Parameters
class_names [json] [default={}]: name of the classes in an array. Each class is represented by a string. The number of classes must match the number of classes in the tensor input.
isaac.ml.SegmentationEncoder
Description
Encodes segmentation for input into the object segmentation neural network.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segmentation [SegmentationCameraProto]: Input segmentation image.
Outgoing messages
tensor [TensorProto]: Ouput tensor encoding the segmentation image. Dimensions are (row, cols, channels) where the number of channels is 1 if the number of classes is 2 (as in binary segmentation), or (n + 1) if the number of classes is ‘n’ (as in multiclass segmentation).
Parameters
rows [int] [default=256]: Height of the downsampled segmentation image
cols [int] [default=512]: Width of the downsampled segmentation image
offset [int] [default=1]: Offset by which the actual pixel value differs from the label index. The segmentation image comes with a per-pixel integer labelling which denotes the object it belongs to. This integer is in turn mapped to a string label name in the format <object_name>:<label_index>. In some cases (such as NavSim), the label index could be equal to the pixel value, and in other cases (such as IsaacSim) they could differ by a fixed offset value.
class_label_indices [std::vector<int>] [default=]: The pixel values that are to be encoded as valid classes, in case the labels are not provided. These are only used in the absence of the strings labels to be encoded, and if we specify the input mode as “NoLabelsAvailable”
input_mode [InputMode] [default=InputMode::kLabelsAvailable]: Expected data input mode. When the string labels are available, the mode would be “LabelsAvailable” When there are no string labels available, the mode would be “NoLabelsAvailable”. In this case, the encoder looks for the pixel values which are to be encoded as valid classes.
output_type [OutputMode] [default=OutputMode::kDistribution]: Parameter defining the format of the output tensor. If the mode is “Index”, we publish a 3D integer tensor, where each element at position (row, col, 0) represents the index of the class that the corresponding pixel at position (row, col) belongs to. If the mode is “Distribution”, we publish a tensor representing the probability distribution over the classes.
class_label_names [std::vector<std::string>] [default={}]: A list of string labels representing the classes which need to be encoded. Typically, the input proto message contains - * An image where each pixel has a numerical value that represents its class. * The mapping of these numerical values to their string labels. We might want to encoded a subset of these classes in the output tensor. This subset is determined by the class_label_names parameter. Pixels which belong to classes other than the ones specified in this parameter are counted as “everything else”.
isaac.ml.Teleportation
Description
Teleportation is a class that generates random poses and sends them to an actor group codelet. Output pose is generated in 4 steps:
relative_frame: This optional pose can be supplied as an input message. It is useful when chaining Teleportation codelets.
base_pose: Pose is picked in one of the two modes:
box mode: Uniform randomly pick each pose value from given ranges, i.e., yaw angle is between min_yaw and max_yaw.
spline mode: Uniform randomly pick a pose that is tangent to the given spline.
noise_pose: Gaussian noise generated using given mean and standard deviation values.
offset_pose: Pose applied to transform frames. Supplied by user as a parameter.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
relative_frame [Pose3dProto]: Proto used to receive a reference frame (pose)
Outgoing messages
rigid_command [RigidBody3GroupProto]: Proto used to publish rigid body pose to the sim bridge
relative_frame_cmd [Pose3dProto]: Proto used to publish rigid body pose to another teleportation codelet as a reference frame
Parameters
enable_on_relative_frame [bool] [default=false]: Flag to tick on relative frame message
name [string] [default=”“]: Name of actor to teleport
min_scale [double] [default=0.0]: Mimimum multiplicational scale factor of corresponding objects in simulation
max_scale [double] [default=1.0]: Maximum multiplicational scale factor of corresponding objects in simulation
enable_scale [bool] [default=false]: Flag to enable scale
base_mode [BaseMode] [default=BaseMode::kBox]: Parameter for step 1. Specifies how the base pose will be generated. Please see codelet summary for a list of modes.
min [Vector3d] [default=Vector3d::Zero()]: Parameter for “box” mode of step 1. Minimum translation in X, Y, Z coordinates
max [Vector3d] [default=Vector3d(1.0, 1.0, 1.0)]: Parameter for “box” mode of step 1. Maximum translation in X, Y, Z coordinates
enable_translation_x [bool] [default=true]: Parameter for “box” mode of step 1. Flag to enable translation (X)
enable_translation_y [bool] [default=true]: Parameter for “box” mode of step 1. Flag to enable translation (Y)
enable_translation_z [bool] [default=true]: Parameter for “box” mode of step 1. Flag to enable translation (Z)
min_roll [double] [default=0.0]: Parameter for “box” mode of step 1. Minimum roll change after a teleoperation
max_roll [double] [default=TwoPi<double>]: Parameter for “box” mode of step 1. Maximum roll change after a teleoperation
enable_roll [bool] [default=false]: Parameter for “box” mode of step 1. Flag to enable rotation (roll)
min_pitch [double] [default=0.0]: Parameter for “box” mode of step 1. Minimum pitch change after a teleoperation
max_pitch [double] [default=TwoPi<double>]: Parameter for “box” mode of step 1. Maximum pitch change after a teleoperation
enable_pitch [bool] [default=false]: Parameter for “box” mode of step 1. Flag to enable rotation (pitch)
min_yaw [double] [default=0.0]: Parameter for “box” mode of step 1. Minimum yaw change after a teleoperation
max_yaw [double] [default=TwoPi<double>]: Parameter for “box” mode of step 1. Minimum yaw change after a teleoperation
enable_yaw [bool] [default=false]: Parameter for “box” mode of step 1. Flag to enable rotation (yaw)
spline_distance [double] [default=0.02]: Parameter for “spline” mode of step 1. We will travel for this fraction of the spline distance before uniformly randomly sampling a new point on the spline again.
spline_speed [double] [default=0.005]: Parameter for “spline” mode of step 1. Speed of travel. Unit is fraction of spline length per second. Negative speed corresponds to driving backwards.
spline_flip_probability [double] [default=0.5]: Parameter for “spline” mode of step 1. With this probability, the direction of the tangent will be flipped.
translation_standard_deviation [Vector3d] [default=Vector3d::Zero()]: Parameter for step 2. A noise for the translation with this standard deviation will be applied.
roll_pitch_yaw_standard_deviation [Vector3d] [default=Vector3d::Zero()]: Parameter for step 2. A noise for the angles with this standard deviation will be applied.
offset_pose [Pose3d] [default=Pose3d::Identity()]: Parameter for step 3. Offset pose to be applied to the combined pose.
isaac.ml.TensorArgMax
Description
Converts a rank 3 tensor (rows, columns, channels) to a rank 2 tensor (rows, columns) based on a user-defined threshold. Conversion involves determining the channel index with the maximum value at each (row, col) location and checking if this value is greater than the user-defined threshold. If it is greater than the threshold, the element at the corresponding (row, col) location in the 2 dimensional tensor is assigned the argmax index. Else it is assigned the unknown class index.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input [TensorProto]: Input rank-3 tensor with dimensions (rows, columns, channels).
Outgoing messages
argmax [TensorProto]: Output rank-2 tensor with dimensions (rows, columns) which stores the index of the max channel.
Parameters
threshold [double] [default=0.5]: Threshold which defines if the argmax channel index for a pixel will be assigned to the 2 dimensional tensor. If the value at the argmax index is less than this threshold, the corresponding element in the discretized tensor is assigned the unknown class index.
non_max_index [int] [default=-1]: Value to be assigned for the unknown class.
isaac.ml.TensorChannelSum
Description
Takes a 3 dimensional tensor as input and processes it to create an image with 2 channels. The value of each pixel in the target image is computed by summing up the user-defined channels. An element at the position (row, col, 0) in the output image is computed by summing up the elements in the tensor channel indices specified in the parameter channel_zero_class_indices. Similarly, the element at the position (row, col, 1) in the output image is computed by adding the elements in the tensor channel indices specified in the parameter channel_one_class_indices.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
tensor [TensorProto]: Input tensor having dimensions (rows, columns, channels)
Outgoing messages
image [ImageProto]: Output image having dimensions (rows, columns, 2)
Parameters
channel_zero_class_indices [std::vector<int>] [default=]: Channel indices of the input tensor which are to be added to compute the pixel values in channel 0 of the output image.
channel_one_class_indices [std::vector<int>] [default=]: Channel indices of the input tensor which are to be added to compute the pixel values in channel 1 of the output image.
isaac.ml.TensorRTInference
Description
This codelet loads a frozen neural network model into memory, generates an optimized TensorRT engine, evaluates the model using tensors of type TensorProto received on RX channels, and publishes the network’s output tensors on TX channels of type TensorProto.
Please refer to Tensorflow inference for an explanation on how to setup input and output channels.
Note: TensorRT always uses planar storage order for images, and not interleaved storage.
Note: Batch dimension is optional, i.e. both (1, 3, 480, 640) and (3, 480, 640] are allowed.
See the Machine Learning Workflow section of the Development Guide for more information.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
input_tensor_info [json] [default={}]: Input Tensor Information in JSON, example:
[{"operation_name":"input", "dims":[1,3,480,640]}]
output_tensor_info [json] [default={}]: Output Tensor Information in JSON example:
[{ "operation_name": "output", "dims": [1,1000] }]
See the Machine Learning Workflow section of the Development Guide for more information.
model_file_path [string] [default=]: Path to the frozen model, in .uff, .onnx, or .etlt formats. Note also: engine_file_path
engine_file_path [string] [default=]: Path to the CUDA engine which is used for inference (input or location for the cached engine)
etlt_password [string] [default=]: Password used to decrypt the model if it is of ETLT format (optional).
force_engine_update [bool] [default=false]: Force update of the CUDA engine, even if input or cached .plan file is present. Debug feature.
inference_mode [InferenceMode] [default=InferenceMode::kFloat16]: Parameter to define the inference mode. The default value is Float16
max_batch_size [int] [default=]: Maximum batch size. The default value could be infered from input_tensor_info parameter. Note, if the batch size in the input_tensor_info is variable (-1), this is a required parameter.
max_workspace_size [int64_t] [default=67108864]: Maximum workspace size. The default value is 64MB
plugins_lib_namespace [string] [default=]: TensorRT plugins library namespace, optional, set to enable plugins. Note, an empty string is a valid value for this parameter and it specifies the default TensorRT namespace.
device_type [DeviceType] [default=DeviceType::kGPU]: The device that this layer/network will execute on, GPU or DLA.
allow_gpu_fallback [bool] [default=true]: Allow fallback to GPU, if this layer/network can’t be executed on DLA.
verbose [bool] [default=false]: Enable verbose log output, this option enables logging of DNN optimization progress, it is disabled by default, as the output of TensorRT optimization results in too many log messages even for LOG_LEVEL_DEBUG level.
isaac.ml.TensorReshape
Description
Reshapes a tensor to new dimensions. Number of elements out output tensor must match the number of
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_tensors [TensorProto]: This tensor will be reshaped to the desired dimensions.
Outgoing messages
output_tensors [TensorProto]: The tensor with based on input data but with the desired dimensions
Parameters
output_tensor_dimensions [std::vector<int>] [default={}]: tensor shape information for each tensor in the list. It must be an array of arrays where the number of arrays must equal to the number of tensors in input_tensors. If shape is set to -1 in any dimension, it is automatically computed to match the total number of input tensor elements. For example, if input_tensors has dimensions [100, 20] and param is set to [10, -1, 20], then the reshaped output tensor has dimensions [10, 10, 20].
isaac.ml.TensorflowInference
Description
A codelet to run inference for a Tensorflow model.
The codelet loads the model specified with the parameters model_file_path and config_file_path in the start function. The expected name and shape of input and output channels is defined via the parameters input_tensor_info and output_tensor_info.
This codelet does not use macros to define input and output channels. Instead channels are automatically setup based on the information in input_tensor_info and output_tensor_info parameters. By default the ops_name is used as the channel name. However sometimes this name is too long or not a valid identifier. In that case the channel name can be specified via channel. Valid channel names must only contain alpha-numeric characters or underscores. For example consider the following configuration for input_tensor_info:
[
{
"ops_name": "layer4/misc/baseline",
"channel": "misc_baseline",
"index": 1,
"dims": [1, 20, 30, 2]
},
{
"ops_name": "image",
"index": 0,
"dims": [1, 276, 276, 3]
}
]
This will generate two input channels with names misc_baseline and image. These names can be used directly in graph JSON files to specify edges. For example:
"edges": [
{
"source": "camera/Video4Linux/color",
"target": "object_detection/TensorflowInference/image"
}, ...
Warning: Currently only 32-bit floating point tensors are accepted as input and output will always be 32-bit floating point tensors.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
input_tensor_info [json] [default={}]: Information about the name and shape of inputs to the Tensorflow model in JSON format. This information is used to setup input channels. Example:
[ { "ops_name": "input", "index": 0, "dims": [1, 224, 224, 3] } ]
output_tensor_info [json] [default={}]: Informatino about the name and shape of outputs of the Tensorflow model in JSON format. This information is used to setup output channels.
model_file_path [string] [default=]: Model_data with contents from specified file
config_file_path [string] [default=]: Config_data with contents from specified file
isaac.ml.TorchInference
Description
This codelet loads a trained Torch model and runs inference with the model.
This codelet does not use macros to define input and output channels. Instead channels are automatically setup based on the rx_channel_names and tx_channel_names parameters. Valid channel names must only contain alpha-numeric characters or underscores.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
model_file_path [string] [default=]: Path to the Torch model file
message_time_to_live [double] [default=]: Messages waiting in the queue for more than this duration will be skipped.
rx_channel_names [std::vector<std::string>] [default={“input”}]: Name of input channels. By default a single channel named input
tx_channel_names [std::vector<std::string>] [default={“output”}]: Name of output channels. By default a single channel named output
isaac.ml.WaitUntilDetection
Description
Accepts the detections for the current camera frame as input and checks for a user-defined label. If the label is found, it publishes the detections for all the labels that we are looking for, in that particular scene. Also includes a parameter which lets the user define how many times a label would need to be detected before it is considered a true positive.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_detections [Detections2Proto]: Detections from the object detection inference components. The codelet parses this list to look for the presence of one or more user-defined class labels.
Outgoing messages
output_detections [Detections2Proto]: Output detections containing the bounding boxes in the scene for the class/classes in question. The output is published when at least one of the classes that we are interested in is detected the required number of times.
Parameters
labels_to_match [std::vector<std::string>] [default=]: Names of the labels to look for in the predicted detections.
required_detection_number [int] [default=1]: The number of times an object needs to be detected before we consider it as a true positive
isaac.navigation.BinaryToDistanceMap
Description
Converts a cost map into a binary map based on thresholds and computes a distance map from it. The resulting distance map is added as an obstacle into an linked ObstacleAtlas component.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
binary_map [ImageProto]: Incoming binary map which will be converted to distance map (Image1ub 0 is free 255 occupied)
binary_map_lattice [LatticeProto]: Lattice information of the binary map
Outgoing messages
distance_map [ImageProto]: Outgoing distance map which indicates the distance to nearest obstacles for every map cell
Parameters
max_distance [double] [default=10.0]: The maximum distance used for the distance map (in meters)
blur_factor [int] [default=0]: If set to a value greater than 0 the distance map will be blurred with a Gaussian kernel of the specified size.
compute_distance_inside [bool] [default=false]: If enabled the distance map will also be included inside obstacles. The distance is negative and measures the distance to the obstacle boundary. Otherwise the distance inside obstacles will be 0.
- distance_map_quality [int] [default=2]: Specifies the desired quality of the distance map. Possible values are:
0: Uses the QuickDistanceMapApproximated algorithm which is fast but produces artefacts 1: Uses QuickDistanceMap with queue length of 25 2: Uses QuickDistanceMap with queue length of 100 3: Uses DistanceMap which computes an accurate distance map but is quite slow
obstacle_name [string] [default=”local_map”]: Name used to register the map into the obstacle_atlas component.
isaac.navigation.CollisionMonitor
Description
Receives collision message, plots collision contact point and normal to sight, and publishes a report in json format of the collision.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
collision [CollisionProto]: Collision message from simulation.
Outgoing messages
report [Json]: Log of the collision event in json format.
Parameters
reference_frame [string] [default=”unity”]: Reference frame for the poses in the collision message
collision_color [Vector4ub] [default=(Vector4ub{200, 100, 0, 255})]: Color of the collision contact point to display in sight
collision_radius [double] [default=0.15]: Radius of the collision contact point to display in sight
isaac.navigation.DetectionsToAtlas
Description
Convert a list of detection in a list of obstacles. This codelet require the node to contain a PolygonMapLayer and this will contain the list of obstacles for the planner to use.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections3Proto]: List of detections with their 3D poses in robot frame. Each detection will be converted into a 2D polygon obstacle and will be added to the Polygon layer of the same node.
- Outgoing messages
(none)
Parameters
obstacle_outline [std::vector<Vector2d>] [default=]: Polygon outline used for every received detection. Currently every object gets the same outline
isaac.navigation.DifferentialBaseMockup
Description
A mock differential base which drives to a goal. This codelet is intended for basic experiments with the navigation stack where a deterministic and fool-proof planner/controller are beneficial. Note that this codelet drives the robot without any obstacles avoidance.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
Outgoing messages
feedback [Goal2FeedbackProto]: Feedback about the last received goal
command [StateProto]: The current command for the differential base to drive to the target.
Parameters
linear_speed [double] [default=1.0]: Linear target speed of the robot
angular_speed [double] [default=0.7]: Angular target speed of the robot
robot_frame [string] [default=]: The name of the robot coordinate frame in the pose tree. The current robot pose is used to compute the next speed command.
reference_frame [string] [default=]: The name of the reference frame in which the robot is defined. This is normally set to the map or world coordinate frame.
linear_threshold [double] [default=0.15]: Threshold for position to accept arrival
angular_threshold [double] [default=0.15]: Threshold for rotation to accept arrival
linear_acceleration [double] [default=1.0]: Linear acceleration used when slowing down
angular_acceleration [double] [default=1.0]: Angular acceleration used when slowing down
isaac.navigation.DifferentialBaseOdometry
Description
Integrates (2D) odometry for a differential base to estimate it’s ego motion.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
state [StateProto]: Incoming current dynamic state of the differential base which is used to estimate its ego motion in an odometry frame (type: DifferentialBaseDynamics)
Outgoing messages
odometry [Odometry2Proto]: Outgoing ego motion estimate for the differential base.
Parameters
max_linear_acceleration [double] [default=5.0]: Maximum linear acceleration to use (helps with noisy data or wrong data from simulation)
max_angular_acceleration [double] [default=5.0]: Maximum angular acceleration to use (helps with noisy data or wrong data from simulation)
odometry_frame [string] [default=”odom”]: The name of the source coordinate frame under which to publish the pose estimate.
robot_frame [string] [default=”robot”]: The name of the target coordinate frame under which to publish the pose estimate.
- prediction_noise_stddev [Vector7d] [default=(MakeVector<double, 7>({0.05, 0.05, 0.35, 0.05, 1.00, 3.00, 3.0}))]: 1 sigma of noise used for prediction model in the following order:
pos_x, pos_y, heading, speed, angular_speed, acceleration
- observation_noise_stddev [Vector4d] [default=(Vector4d{0.25, 0.45, 2.0, 10.0})]: 1 sigma of noise used for observation model in the following order:
speed, angular_speed, acceleration
isaac.navigation.DifferentialBaseWheelImuOdometry
Description
Integrates (2D) odometry for a differential base to estimate its ego motion.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
state [StateProto]: Incoming current dynamic state of the differential base which is used to estimate its ego motion in an odometry frame (type: DifferentialBaseDynamics)
imu [ImuProto]: Optional measurement input from IMU for better accuracy
Outgoing messages
odometry [Odometry2Proto]: Outgoing ego motion estimate for the differential base.
Parameters
max_linear_acceleration [double] [default=5.0]: Maximum linear acceleration to use (helps with noisy data or wrong data from simulation)
max_angular_acceleration [double] [default=5.0]: Maximum angular acceleration to use (helps with noisy data or wrong data from simulation)
odometry_frame [string] [default=”odom”]: The name of the source coordinate frame under which to publish the pose estimate.
robot_frame [string] [default=”robot”]: The name of the target coordinate frame under which to publish the pose estimate.
- prediction_noise_stddev [Vector7d] [default=(MakeVector<double, 7>({0.05, 0.05, 0.35, 0.05, 1.00, 3.00, 3.0}))]: 1 sigma of noise used for prediction model in the following order:
pos_x, pos_y, heading, speed, angular_speed, acceleration
- observation_noise_stddev [Vector4d] [default=(Vector4d{0.25, 0.45, 2.0, 10.0})]: 1 sigma of noise used for observation model in the following order:
speed, angular_speed, acceleration
use_imu [bool] [default=true]: Enables/Disables the use of IMU
weight_imu_angular_speed [double] [default=1.0]: Determines the trust in IMU while making angular speed observations. 1.0 means using IMU only. 0.0 means using segway data only. 0.5 means taking an average
weight_imu_acceleration [double] [default=1.0]: Determines the trust in IMU while making linear acceleration observations. 1.0 means using IMU only. 0.0 means using segway data only. 0.5 means taking an average
isaac.navigation.DistanceMap
Description
A distance map which can be used to efficiently query the distance between a given point and the map contents.
This component is not yet thread-safe. Accessing the distance map can not happen in parallel with setting it.
If the component is added to a node with a OccupancyGridMapLayer component the distance map is automatically initialized with data from that component.
The component provides two lookup methods to access map data. In “nearest” mode the given map location is rounded to the nearest map cell location. In “smooth” mode bi-linear interpolation is used to return a smooth distance.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
map_frame [string] [default=”world”]: The coordinate frame of the distance map
isaac.navigation.FollowPath
Description
Receives a sequence of waypoints via a message and drives the robot from one waypoint to the next. This can be used for example in combination with the GoTo component.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
plan [Plan2Proto]: The path on which the robot should drive
feedback [Goal2FeedbackProto]: Feedback about where we are with respect to the goal
Outgoing messages
goal [Goal2Proto]: The desired goal waypoint
Parameters
goal_frame [string] [default=”world”]: The name of the frame in which we the goal will be published. Needs to be set before start.
stationary_wait_time [double] [default=5.0]: Seconds to wait before moving on to next waypoint if robot becomes stationary. If not positive, this check is disabled, i.e., the robot does not skip the current waypoint it is headed to.
wait_time [double] [default=1.0]: Seconds to wait after arriving at a waypoint
loop [bool] [default=false]: If set to true we will repeat following the path
start_from_the_beginning [bool] [default=false]: Determines the behavior upon receiving a new plan message. If true, we start the path from the beginning. Otherwise, we head to the waypoint that is closest to the previous destination.
report_success_on_arrival [bool] [default=false]: If set to true would reportSuccess() upon arrival of last pose. Shadowed by loop if set.
num_waypoints_to_show [int] [default=5]: Number of upcoming waypoints on the route to show on Sight. 0 means show all the waypoints on the current route.
isaac.navigation.GoToBehavior
Description
Report success if the goal feedback indicates that robot has arrived to the target and the robot is stationary. This codelet can be used to design behavior trees.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
feedback [Goal2FeedbackProto]: Feedback from navigation stack
- Outgoing messages
- Parameters
(none)
(none)
isaac.navigation.GoalMonitor
Description
Receives a goal pose from one of the goal generators, and then sends feedback regarding the status of the robot: 1. robot_T_goal 2. whether the robot has arrived at the target 3. whether the robot is stationary. 4. whether there is a valid goal.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
odometry [Odometry2Proto]: The odometry information with current speed
Outgoing messages
feedback [Goal2FeedbackProto]: Feedback about the last received goal
Parameters
arrived_position_thresholds [Vector2d] [default=Vector2d(0.5, DegToRad(15.0))]: Threshold on position to determine if the robot has arrived (positional and angular)
stationary_speed_thresholds [Vector2d] [default=Vector2d(0.025, DegToRad(5.0))]: Threshold on speed to determine if the robot is stationary (positional and angular)
robot_frame [string] [default=”robot”]: Name of the frame representing robot’s pose
isaac.navigation.GoalToPlan
Description
Converts the goal it receives to a plan that can be feed into lqr based planner
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
Outgoing messages
plan [Plan2Proto]: Plan consisting of a single 2D pose
- Parameters
(none)
isaac.navigation.GotoWaypointBehavior
Description
Sets or modifies the goal for a given MapWaypointAsGoal component. Receives goal feedback and reports success if the robot has arrives at the target location and is stationary.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
feedback [Goal2FeedbackProto]: Goal feedback from the goal monitor.
- Outgoing messages
(none)
Parameters
waypoint_name [string] [default=]: Parameter defining the name of the waypoint to be set
waypoint_as_goal_component_name [string] [default=]: The name of the MapWaypointAsGoal component
isaac.navigation.HolonomicBaseWheelImuOdometry
Description
Integrates (2D) odometry for a holonomic base to estimate its ego motion.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
state [StateProto]: Incoming current dynamic state of the holonomic base which is used to estimate its ego motion in an odometry frame.
imu [ImuProto]: Optional measurement input from IMU for better accuracy
Outgoing messages
odometry [Odometry2Proto]: Outgoing ego motion estimate for the holonomic base.
Parameters
max_acceleration [double] [default=5.0]: Maximum acceleration to use (helps with noisy data or wrong data from simulation)
odometry_frame [string] [default=”odom”]: The name of the source coordinate frame under which to publish the pose estimate.
robot_frame [string] [default=”robot”]: The name of the target coordinate frame under which to publish the pose estimate.
- prediction_noise_stddev [Vector8d] [default=(MakeVector<double, 8>({0.05, 0.05, 0.35, 0.05, 0.05, 1.00, 3.00, 3.00}))]: 1 sigma of noise used for prediction model in the following order:
pos_x, pos_y, heading, speed_x, speed_y, angular_speed, acceleration_x, acceleration_y
- observation_noise_stddev [Vector5d] [default=(MakeVector<double, 5>({0.25, 0.25, 0.45, 2.0, 2.0}))]: 1 sigma of noise used for observation model in the following order:
speed_x, speed_y, angular_speed, acceleration_x, acceleration_y
use_imu [bool] [default=true]: Enables/Disables the use of IMU
weight_imu_angular_speed [double] [default=1.0]: Determines the trust in IMU while making angular speed observations. 1.0 means using IMU only. 0.0 means using segway data only. 0.5 means taking an average
weight_imu_acceleration [double] [default=1.0]: Determines the trust in IMU while making linear acceleration observations. 1.0 means using IMU only. 0.0 means using segway data only. 0.5 means taking an average
isaac.navigation.LocalMap
Description
Creates and maintains a dynamic obstacle grid map centered around the robot.
The dynamic grid map is always relative to the robot with the robot at a fixed location in the upper part of the robot. The previous state of the grid map is continuously propagated into the presence using the robot odometry. Good odometry is critical to maintaining a sharp, high-quality grid map. New observation measurements are integrated into the local map and mixed with the current local map accumulated based on the past.
The local map “forgets” information over time to allow gradual dynamic updates. This enables it to be useful in the presence of dynamic obstacles. However thresholding might be challenging and additional object detection and tracking should be used for dynamic obstacles.
The the local map is published as a grid map with the same orientation as the robot. The internal storage of the local map is larger and has the orientation of the world frame. The is done to avoid unnecessary diffusion effects from coordinate transformations.
- There are a couple of relevant coordinate frames:
robot : The coordinate frame of the robot. odom : The robot pose is continuously estimates with respect to this pose. localmap : The “grid” coordinate frame of the local map starting in the top left corner of
the local map. This is the with respect to the output frame which is oriented like the robot.
workmap_grid : The “grid” coordinate frame of the workmap. workmap_center: The center of the workmap. The workmap is centered at the current position of
the robot but has a constant orientation. Orientation will however drift over time as odometry is not perfect.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
observation_map [ImageProto]: Image2f containing the observed/occupied information for each cell
observation_map_lattice [LatticeProto]: The lattice grid information associated to the observation_map. It contains the information about the cell size as well as the reference frame of the image.
Outgoing messages
local_map_lattice [LatticeProto]: The latest dynamic obstacle grid map lattice grid information
local_map [ImageProto]: The latest dynamic obstacle grid map
Parameters
cell_size [double] [default=0.05]: Size of a cell in the dynamic grid map in meters
dimensions [Vector2i] [default=Vector2i(256, 256)]: The dimensions of the grid map in pixels
map_offset_relative [Vector2d] [default=Vector2d(-0.25, -0.5)]: Local offset of robot relative to the map relative to the total map size.
map_decay_factor [double] [default=0.99]: Before integrating a new range scan the current map is decayed with this factor. The lower this parameter the more forgetful and uncertain the local map will be.
visible_map_decay_factor [double] [default=0.92]: Cells which were observed have an additional decay to better deal with moving obstacles. This allows a different forgetfulness for cells which are currently visible.
localmap_frame [string] [default=”localmap”]: The name of the map coordinate frame. This will be used to write the pose of the map relative to the robot in the pose tree.
odom_frame [string] [default=”odom”]: The name of the coordinate frame used to continuously update the local map.
isaac.navigation.MapWaypointAsGoal
Description
Selects a waypoint from a map and publishes it as a goal. Waypoint name can be set either through configuration or with a proto message. In case the former is not empty, it will take priority.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
desired_waypoint [GoalWaypointProto]: Receives the desired waypoint
Outgoing messages
goal [Goal2Proto]: Output goal for the robot
Parameters
map [string] [default=”map”]: Map node for looking up waypoints
waypoint [string] [default=”“]: The waypoint which is published as the goal. If empty the current pose will be published.
isaac.navigation.MapWaypointAsGoalSimulator
Description
Simulates moving to a desired map waypoint. The status of the movement will be published as variables.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
desired_waypoint [GoalWaypointProto]: Receives the desired waypoint. An empty string as waypoint name will be interpreted as stop.
- Outgoing messages
(none)
Parameters
waypoint_map_layer [string] [default=”map/waypoints”]: Map node for looking up waypoints. If the target waypoint is not inside this may layer the simulated motion will stop.
average_distance [double] [default=5.0]: The average distance between waypoints
max_speed [double] [default=1.0]: The maximum traveling speed of the agent
isaac.navigation.MapWaypointsAsPlan
Description
Publishes a plan which is populated with the desired waypoints on the map.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
plan [Plan2Proto]: The plan generated as specified via parameters
Parameters
map [string] [default=”map”]: Map node for looking up waypoints
waypoints [std::vector<std::string>] [default=]: The list of waypoint names which is published as a plan. If a name doesn’t exist in map, whole list will be ignored.
text_size [double] [default=20.0]: The size of the text used in sight, in pixels (px)
isaac.navigation.MoveAndScan
Description
Takes a set of ordered waypoint poses as an input plan. The orientation of each pose is used as starting point for the rotations. Expands the plan to include multiple orientations for each 2D position. This means that the robot can make one complete rotation for each 2D position, if it follows the plan in order.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
waypoints [Plan2Proto]: Input waypoint denoting waypoint poses.
Outgoing messages
waypoints_with_orientations [Plan2Proto]: Output waypoint plan along with multiple angles of orientation
Parameters
num_directions [int] [default=4]: Number of angles to turn the robot
isaac.navigation.MoveUntilArrival
Description
Completely stops the robot when the feedback indicates arrival. Enables movement once the robot is no longer in arrived state.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
feedback [Goal2FeedbackProto]: Feedback from navigation stack
- Outgoing messages
(none)
Parameters
navigation_mode [string] [default=”navigation_mode/isaac.navigation.GroupSelectorBehavior”]: Parameter to get navigation mode behavior
behavior_stop [string] [default=”stop”]: Name of the mode which makes the robot stop
behavior_move [string] [default=”navigate”]: Name of the mode which allows the robot move
isaac.navigation.NavigationMap
Description
A map layer for a navigation map. Holds various conveniences functions for quick access of map data for navigation tasks.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
occupancy_grid_prefix [string] [default=”occupancy”]: The name prefix used for occupancy grid map layers
waypoint_prefix [string] [default=”waypoints”]: The name prefix used for waypoint map layers
restricted_area_prefix [string] [default=”restricted_area”]: The name prefix used for keep clear area map layers
global_localization_area_prefix [string] [default=”localization_area”]: The name prefix used for global localization area map layers
isaac.navigation.NavigationMonitor
Description
Collects the robot state (current pose, current speed and displacement since last update) at every tick. Publishes the state if the displacement is greater than a user defined threshold.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
camera [ColorCameraProto]: Camera Input This is needed in order to publish the robot state with the acquisition time of the input image
Outgoing messages
robot_state [RobotStateProto]: Proto used to publish the robot’s state (position, speed and replacement since last update)
Parameters
tick_periodically [bool] [default=true]: Boolean to determine if we need to tick periodically. During periodic ticks, we can check displacement once every interval and publish the output with current time as acquisition time. If we tick on message instead, the output can be published with the acquision time of the input message.
angle_threshold [double] [default=DegToRad(15.0)]: Angle in radians that the robot needs to move before publishing
distance_threshold [double] [default=0.5]: Distance in metres robot needs to move before publishing
var_rx_speed_pos [string] [default=]: Linear speed as set by DifferentialBaseOdometry
var_rx_speed_rot [string] [default=]: Angular speed as set by DifferentialBaseOdometry
isaac.navigation.OccupancyMapCleanup
Description
Cleans an occupancy grid map with a couple of algorithms. For example the shape of the robot or unobservable areas can be cleared.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
rough_map_lattice [LatticeProto]: An occupancy grid map lattice information
rough_map [ImageProto]: An occupancy grid map which needs to be cleaned
Outgoing messages
clean_map [ImageProto]: A clean occupancy grid map
Parameters
clear_region_frame [string] [default=]: The coordinate frame of the clear region
clear_region [geometry::RectangleD] [default=]: A small rectangular area around the robot with this shape is always marked as free to prevent the robot from seeing itself. If the rectangle is too big, nearby obstacle might be ignored. Format is [[x_min,x_max],[y_min,y_max]], unit is meters.
additional_clear_region [geometry::RectangleD] [default=]: An additional region which will be cleared similar to clear_region.
isaac.navigation.OccupancyToBinaryMap
Description
Converts an occupancy map into a binary map based on thresholds.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
occupancy_map_lattice [LatticeProto]: Incoming occupancy map lattice information
occupancy_map [ImageProto]: Incoming occupancy map which will be converted and stored
Outgoing messages
binary_map [ImageProto]: Computed binary map (Image1ub)
Parameters
mean_threshold [int] [default=128]: Grid cells in the cost map which have a mean value greater than this threshold are considered to be blocked.
standard_deviation_threshold [int] [default=128]: Grid cells in the cost map which have a standard deviation greater than this threshold are considered to be uncertain.
is_optimistic [bool] [default=false]: If enabled uncertain cells will be treated as free, otherwise they are considered to be blocked.
isaac.navigation.PoseAsGoal
Description
Selects a coordinate frame from the pose tree and publishes it as a goal
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
goal [Goal2Proto]: Output goal for the robot
Parameters
goal_frame [string] [default=”pose_as_goal”]: Name of the goal coordinate frame
reference_frame [string] [default=”world”]: Name of the reference coordinate frame
static_frame [string] [default=”world”]: Name of a frame that is not moving
new_message_threshold [Vector2d] [default=Vector2d(1e-3, DegToRad(0.01))]: A new message will be published whenever change in goal pose exceeds this threshold. Values are for Euclidean distance and angle respectively.
isaac.navigation.PoseHeatmapGenerator
Description
Divides given map into user-defined grid sizes. Reads the robot state (position, speed and the displacement since the last update) and determines which grid the robot was in at the time of acquisition of the state.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
robot_state [RobotStateProto]: Input robot state containing position, speed and the displacement since the last update
Outgoing messages
heatmap [HeatmapProto]: Output HeatmapProto containing heatmap of probabilities, grid cell size and map frame
Parameters
custom_cell_size [double] [default=2.0]: Desired size of each cell
robot_radius [double] [default=0.40]: Robot radius
kernel_size [int] [default=9]: Size of the gaussian kernel to diffuse weights
map [string] [default=”map”]: Map node to use for localization
isaac.navigation.RandomMapPoseSampler
Description
Generate a random valid pose from map and set it on the pose tree
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
rhs_frame [string] [default=]: Name of the pose to set on the pose tree. lhs is world, determined by the RobotPoseGenerator.
max_trials [int] [default=50]: Maximum number of trials to find a valid pose before giving up and report failure.
isaac.navigation.RandomWalk
Description
Picks random goals in a map for a robot to navigate to
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
feedback [Goal2FeedbackProto]: Feedback about our progress towards the goal
Outgoing messages
goal [Goal2Proto]: Output goal for the robot
Parameters
timeout [double] [default=10.0]: If the robot doesn’t move for this time period it will pick a new goal
goal_position_threshold [double] [default=0.3]: Goal distance threshold sent to the planner
isaac.navigation.RangeScanModelClassic
Description
Scan-to-scan matching model after Fox-Burgard-Thrun
Range scan models describe how well two range scans match with each other. The matching result is expressed as a similarity value in the range [0,1]. Similar range scans will result in a value close to one, while dissimilar range scans will give a value close to zero.
Range scan models are for example used by scan localization components like the ParticleFilterLocalization or the GridSearchLocalizer. In order for these components to work properly you will have to create a range scan component inside a node and specify the corresponding configuration parameter for the localization components.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
noise_sigma [double] [default=0.25]: A parameter which defines the width of the Guassian for range measurement noise
unexpected_falloff [double] [default=0.10]: A parameter which defines the shape of the beam model for unexpected obstacles
max_range [double] [default=100.0]: The maximum range. If the beam range is equal to this value it is considered out of range
- weights [Vector4d] [default=Vector4d(0.25, 0.25, 0.25, 0.11)]: Weights of the four contributions for the beam model in the following order:
0: measurement noise 1: unexpected obstacles 2: random measurement 3: max range
smoothing [double] [default=0.01]: Smoothing factor for the overall shape function.
isaac.navigation.RangeScanModelFlatloc
Description
Fast scan-to-scan matching model similar to the Fox-Burgard-Thrun model. See comment for RangeScanModelClassic for an explanation on how range scan models are used.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
max_beam_error_far [double] [default=0.50]: Each beam for which the measured range is further away than the expected range can contribute at most this value to the total error.
max_beam_error_near [double] [default=0.50]: Similar to max_beam_error_far but for the case then the measured range is closer than the measured range
percentile [double] [default=0.9]: Specifies the percentile of ranges to use to compute a combined distance over multiple beams. Valid range ]0,1]. If set to 1 all ranges are taken. If set to lower than 1 only the given percentile of beams with the lowest error is taken.
max_weight [double] [default=15.0]: The maximum weight which can be given to a beam. Beams are weighted linearly based on the average between measured and expected distance up to a maximum of this value.
sharpness [double] [default=5.0]: The error returned by the distance function is transformed to unit range using the following function: p = exp(-sharpness * error/max_beam_error). If sharpness is zero the actual error will be returned.
invalid_range_threshold [double] [default=0.5]: Beams with a range smaller than or equal to this distance are considered to have returned an invalid measurement.
out_of_range_threshold [double] [default=100.0]: Beams with a range larger than or equal to this distance are considered to not have hit an obstacle within the maximum possible range of the sensor.
isaac.navigation.RangeScanRobotRemoval
Description
Cleans a range scan using the robot shape model. Each beams of the range scan that lies with the robot shape will be removed by marking them as invalid.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
raw_flatscan [FlatscanProto]: The input flatscan that contains all the beams. The beams within the robot shape will be marked as invalid in the flatscan_output.
Outgoing messages
flatscan_no_robot [FlatscanProto]: The output flatscan contains the same beams as the flatscan_input except for the beams that lies within the robot shape, they will be marked as invalid (distance 0.0).
Parameters
sensor_frame [string] [default=”lidar”]: The name of the reference frame in which range scans arriving on the flatscan channel are defined.
robot_model [string] [default=”shared_robot_model”]: Name of the robot model node
isaac.navigation.RangeScanToObservationMap
Description
Compute an observation map from a flatscan. An observation map is represented as an Image2f where the first chanel corresponds to the probability of a cell to have been observed, while the second channel correspond to the position of a cell to be occupied.
The map is computed relative to the sensor position, the axis are in the same direction as the sensor frame, and the translation is controlled by the dimensions and map_offset_relative parameters.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: The observation_map is created based on flat range scans.
Outgoing messages
observation_map [ImageProto]: Image2f containing the observed/occupied information for each cell
observation_map_lattice [LatticeProto]: The lattice information of the ObservationMap
Parameters
cell_size [double] [default=0.05]: Size of a cell in the dynamic observation map in meters
dimensions [Vector2i] [default=Vector2i(256, 256)]: The dimensions of the observation map in pixels
map_offset_relative [Vector2d] [default=Vector2d(0.25, 0.5)]: Local offset of robot relative to the map relative to the total map size.
wall_thickness [double] [default=0.20]: When integrating a flatscan an area of the given thickness behind a hit is marked as solid. This value should be at least in the order of the chosen cell size.
sensor_frame [string] [default=”lidar”]: The name of the reference frame in which range scans arriving on the flatscan channel are defined.
sensor_lattice_frame [string] [default=”lidar_lattice”]: The name of the map coordinate frame. This will be used to write the pose of the map relative to the robot in the pose tree.
isaac.navigation.RobotPoseGenerator
Description
Generates a random pose within a map
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
robot_model [string] [default=”navigation.shared_robot_model”]: The name of the robot model node which is used to find a valid goal
map [string] [default=”map”]: The name of the map to generate poses on.
static_obstacle_names [std::vector<std::string>] [default=std::vector<std::string>({“map/isaac.navigation.DistanceMap”, “map/restricted_area”})]: Name of the static obstacles.
model_error_margin [double] [default=0.1]: The smallest distance (in meters) allowed between the robot and obstacles in the scene
isaac.navigation.RobotRemoteControl
Description
The RobotRemoteControl class ontrols a robot via commands from a joystick or gamepad. This codelet can also be used as a deadman switch. The codelet can switch between commands received from the control stack via the ctrl channel and between commands received from the joystick via js_state.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
js_state [JoystickStateProto]: Joystick state including information about which buttons are pressed
ctrl [StateProto]: The command from our controller
Outgoing messages
segway_cmd [StateProto]: The command send to the segway
Parameters
disable_deadman_switch [bool] [default=false]: Disables deadman switch no matter a joystick is connected or not
differential_joystick [bool] [default=true]: If set to true this is using a differential control model. Otherwise a holonomic control model is used.
manual_button [int] [default=4]: The ID for the button used to manually control the robot with the gamepad. When this button is pressed on the joystick, we enter manual mode where we read speed commands from joystick axes. For a PlayStation Dualshock 4 Wireless Controller, this button corresponds to ‘L1’.
autonomous_button [int] [default=5]: The ID for the button used to allow the AI to control the output. When this button is pressed but manual button is not pressed on the joystick, we enter autonomous mode where we read speed commands from controller that is transmuting to our ‘ctrl’ channel here. For a PlayStation Dualshock 4 Wireless Controller, this button corresponds to ‘R1’.
move_axes [int] [default=0]: The axes used for translating the robot in manual mode. For a PlayStation Dualshock 4 Wireless Controller, these axes corresponds to the ‘left stick’.
rotate_axes [int] [default=1]: The axis used for rotating the robot in manual mode. For a PlayStation Dualshock 4 Wireless Controller, these axes corresponds to the ‘right stick’.
linear_speed_max [double] [default=1.0]: The maximal allowed manual speed for linear movements.
angular_speed_max [double] [default=0.8]: The maximal allowed manual speed for rotation.
isaac.navigation.RobotViewer
Description
Visualizes the robot at its current pose
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
pose_estimate [Pose2MeanAndCovariance]: The current position estimate of the robot
- Outgoing messages
(none)
Parameters
reference_frame [string] [default=”world”]: The name of the reference coordinate frame
robot_pose_name [string] [default=”robot”]: Name of robot pose to look up on pose tree
robot_color [Vector4ub] [default=(Vector4ub{0, 100, 150, 255})]: Color of the robot pose to display in sight
robot_mesh [string] [default=”carter”]: Name of the robot assed used for display in sight.
robot_model [string] [default=”navigation.shared_robot_model/SphericalRobotShapeComponent”]: Name of the robot model component
isaac.navigation.TemporaryObstacle
Description
Adds parameterized obstacle to the ObstacleAtlas at start and removes it at stop. This can be used, for example, to temporarily add objects that may not be observed at all times to the local map. To illustrate, consider a robot with blind spots is driving under a cart with 4 wheels, we may use this codelet to add those wheels as obstacle in the world frame to avoid them at all times since objects in the local map fade away over time when they are no longer observed. Another application is Kaya with a limited field of view avoiding objects while navigating around them.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
circle [geometry::CircleD] [default=]: Circle that captures the obstacle shape
reference_frame [string] [default=]: Frame where obstacle shape is defined with respect to
obstacle_name [string] [default=]: If set, obstacle will be added to the ObstacleAtlas with this name. Otherwise, the full name of the codelet instance will be used.
isaac.navigation.TravellingSalesman
Description
Estimates a set of waypoints over the reachable locations of given map and computes the shortest path through them. Returns a set of points ordered by the shortest path through them.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
waypoints [Plan2Proto]: Output plan, which is a list of poses that the robot can move to
Parameters
max_distance_factor [double] [default=4.0]: Factor controlling the maximum distance between two points to be connected
robot_radius [double] [default=0.50]: Robot radius
target_cell_size [double] [default=0.50]: The size of step we take to look for freespace and put waypoints
random_waypoints [int] [default=200000]: Number of random waypoints that we can try and add to the graph
map [string] [default=”map”]: Name of the map in consideration
isaac.navigation.VirtualGamepadBridge
Description
Bridge for Virtual Gamepad: - Recieves Virtual Controller State Messages from Sight’s Widget - Virtual Gamepad. - Uses Bidirectional communication between backend and frontend. - Forwards the received controller messages to other c++ codelets
(example: RobotRemoteControl) in backend.
Sends relevant backend status info from the codelets to Sight at regular intervals.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
request [nlohmann::json]: Request to the Bridge
Outgoing messages
reply [nlohmann::json]: Reply from the bridge to Sight
joystick [JoystickStateProto]: TX proto for Gampepad State
Parameters
sight_widget_connection_timeout [double] [default=2.5]: Sight Widget Connection Timeout in seconds (alive is sent every 0.5s, if we miss 5 messages it means something has gone wrong).
num_virtual_buttons [int] [default=12]: Number of buttons for a simulated Virtual Joystick. Keeping default value consistent with packages/sensors/Joystick.hpp
deadman_button [int] [default=4]: Button number for failsafe. Keeping consistent with packages/navigation/RobotRemoteControl.hpp
isaac.navsim.ScenarioManager
Description
Communicates with NavSim to control scenario setup. The current implementation is fairly basic and just requests the scenario and waits a bit. In the future this codelet should work with a feedback mechanism and be changed to work with behavior trees.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
scenario_reply [JsonProto]: Incoming messages to get status of the current scene and scenario from NavSim
Outgoing messages
scenario_control [JsonProto]: Outgoing messages to for example communicate the desired scene and scenario to NavSim
robot [ActorGroupProto]: Outgoing messages to control actors creation in NavSim
Parameters
scene [string] [default=]: The desired scene
scenario [int] [default=-1]: The desired scenario. scenario<0 is ignored by scene loader and the default scenario is used
robot_prefab [string] [default=]: The next three parameters are used to spawn and initialize robot in simulation Name of the robot prefab. See ActorGroupProto/SpawnRequest for detail.
robot_name [string] [default=”robot”]: Name for the robot. See ActorGroupProto/SpawnRequest for detail.
robot_pose_name [string] [default=”robot_init_gt”]: Rhs name for the initial robot pose.
ref_pose_name [string] [default=”world”]: Lhs name for the initial robot pose.
isaac.navsim.ScenarioMonitor
Description
Monitors the status of a navigation simulation scenario, detects success (arrive at goal) or failure states (timeout, collision, lost localization, ect.), and publishes the current state. It also generates a detailed report file including the ground truth state at every tick, and appends a one-line summary of the execution state to a summary report file when stopping.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
collision [Json]: Collision message from collision monitor.
goal_feedback [Goal2FeedbackProto]: Feedback from navigation stack.
gt_goal_feedback [Goal2FeedbackProto]: Ground truth feedback from simulator.
poses [Json]: Additional pose report to append to the detail report file.
Outgoing messages
state [StateProto]: Current state of execution
Parameters
wait_before_start [double] [default=1.0]: The number of seconds to wait in the start function for localization to finish
arrival_tolerance [double] [default=0.5]: Seconds to wait for actual (ground-truth) arrival after robot claims arrival. If the robot doesn’t actually arrive within this time frame, it was wrong to claim arrival. So, the state becomes “Mistaken”.
goal_pose_name [string] [default=”goal”]: Name of the goal pose on pose tree
report_path [string] [default=”/tmp/navsim”]: Path of report output file. If the path doesn’t exist, it will be created. The coledet will generate a detailed report file (one json per tick) to report_path/[uuid]_monitor.jsonl where uuid is the app’s uuid.
stop_app [bool] [default=false]: Stops the app when monitor succeeds or fails. This may happen before the execution state message tx_state can be processed, so set this to false if your app have codelets receiving and processing the tx_state message.
scene [string] [default=]: Filename of the scene being run in simulation
scenario [int] [default=]: Index of the scenario being run in simulation
maximum_time [string] [default=”60s”]: Maximum execution time in seconds
localization_error [Vector2d] [default=Vector2d(3.0, DegToRad(90.0))]: Localization tolerance beyond which we consider the robot lost. Unit is meter 2d position, and radian for z rotation
isaac.object_pose_estimation.BoundingBoxEncoder
Description
Encodes the detections and scales the bounding box parameters such that the pixel coordinates along x are in the range [-1, 1]. This is the pre-processing step before passing the bounding box parameters into trt inference or training scripts for pose estimation cnn model.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detection [Detections2Proto]: List of input bounding box detections that are encoded as tensors
Outgoing messages
tensor [TensorProto]: Detection encoded as a (N, 4) tensor where N is the number of bounding boxes. Channels are: (bb_min_x, bb_min_y, bb_max_x, bb_max_y).
Parameters
class_names [json] [default={}]: The class names of our detection objects.
image_dimensions [Vector2i] [default=Vector2i(720, 1280)]: Image dimensions - (rows, cols) that the detections correspond to Bounding box parameters are scaled such that the row pixel coordinates are in the range [-1, 1].
isaac.object_pose_estimation.CodebookLookup
Description
A codelet representing a mapping from a code vector to a feature vector. For a given feature vector the n closest code vectors can be looked up. Both code and feature vectors are vectors of floating point numbers. Currently the only supported distance function is the dot product. The code book is loaded from a JSON file when the codelet starts.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
features [TensorProto]: A batch of feature vectors encoded as a rank 2 tensor. Each feature will be checked against
- the codebook. The shape of the tensor is:
(feature, elements).
Outgoing messages
codes [TensorProto]: A rank 3 tensor which stores the code vectors for each input feature vector. For each feature
- vector num_output code vectors are returned. The shape of the tensor is:
(feature, code, elements).
correlations [TensorProto]: A rank 3 tensor which stores the correlation between code vectors and the input feature vector.
- There is one correlation per output code vector. The shape of the tensor is:
(feature, correlation).
Parameters
codebook_path [string] [default=]: Path to the file containing the codebook in line JSON format.
- The codebook must contain one line per code word with the following format:
[[f_1, f_2, …, f_n], [c_1, c_2, …, c_m]]
Here (f_1, …, f_n) is the n-dimensional feature vector and (c_1, …, c_m) the m-dimensional code vector. The dimension of feature and code vectors must be identical for all entries.
num_output [int] [default=2]: The number of features to extract. Only the best one will be provided
isaac.object_pose_estimation.CodebookPoseSampler
Description
Generates camera poses for codebook generation assuming the object under observation is placed at the origin. Uses icosahedron subdivision to uniformly sample viewpoints from a sphere of given radius, and additionally applies in-plane rotation (roll) along the camera axis. Publishes one sampled poses per tick.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
pose [Pose3dProto]: Pose to teleport the camera to
Parameters
radius [std::vector<double>] [default={}]: List of radii of the spheres where the view points are sampled This enables codebook generation at multiple distances.
center [Vector3d] [default=Vector3d::Zero()]: Center of the sphere where the view points are sampled Spheres of all radii are centered at this location.
num_view [int] [default=2562]: Minimal number of view points on the view sphere
num_inplane [int] [default=1]: Number of in-plane rotations at each view point
min_roll [double] [default=-Pi<double>]: Minimum roll for for codebook view sampling from sphere Note: Minimum roll must be in range [-Pi, Pi]
max_roll [double] [default=Pi<double>]: Maximum roll for codebook view sampling from sphere Note: Maximum roll must be in range (min_roll, min_roll + 2*Pi]
min_pitch [double] [default=-Pi<double>/2]: Minimum pitch for codebook view sampling from sphere Note: Minimum pitch must be in range [-Pi/2, Pi/2]
max_pitch [double] [default=Pi<double>/2]: Maximum pitch for codebook sampling from sphere Note: Maximum pitch must be in range (min_pitch, Pi/2].
min_yaw [double] [default=-Pi<double>]: Minimum yaw for codebook view sampling from sphere Note: Minimum yaw must be in range [-Pi, Pi],
max_yaw [double] [default=Pi<double>]: Maximum yaw for codebook view sampling from sphere Maximum yaw must be in range (min_yaw, min_yaw + 2*Pi]
report_success [bool] [default=false]: If report_success is true, codelet reports success after view points are sampled. If not, the codelet ends the app after all view points are sampled.
max_ticks_after_success [int] [default=10]: Number of ticks to wait after the view points are sampled to close the app This param is used when report_success is set to false.
isaac.object_pose_estimation.CodebookWriter
Description
Receives a feature vector and a label vector and outputs them as a JSON object. This codelet can be used to create a code book for the CodebookLookup codelet.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
feature [TensorProto]: A rank-2 tensor containing the feature vector
code [TensorProto]: A rank-1 tensor containing the code vector
Outgoing messages
codebook [JsonProto]: A JSON array with two entries, one each for feature and code vector. Features and code vectors themselves are stored as arrays of floating point numbers.
- Parameters
(none)
isaac.object_pose_estimation.ImagePoseEncoder
Description
This codelet encodes rotation and translation information of object during codebook generation. Encoded values are (1) orientation in quaternions from pose, which are used for estimating 3D rotation and (2) bounding box size which is used for estimating object’s distance to the camera.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: Input ColorCameraProto of full image which are used for extracting camera pinhole parameters
input_detections [Detections2Proto]: List of bounding box detections to compute translation parameters in the codebook
input_poses [Detections3Proto]: List of input object poses for storing orientation labels in the codebook.
Outgoing messages
pose_encoding [TensorProto]: A rank-1, 32-bit float tensor with the following nine entries: 1 - 4: quaternions for the 3D orientation, 5: bounding box diagonal 6: rendered distance of the camera from the object along z 7: focal length of the camera used to generate codebook 8, 9: offset of bounding box center from pinhole center in image coordinates
- Parameters
(none)
isaac.object_pose_estimation.PoseCnnDecoder
Description
A codelet that takes inputs from the post estimation cnn TRT model and outputs the 3D pose as Detections3Proto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
translation [TensorProto]: A batch of translation vectors (cx, cy, depth) encoded as a rank 2 tensor of shape (batch_size, 3). cx, cy are the scaled x and y pixel coordinates of the body center. Coordinates are scaled such that the values along x are in range [-1, 1]. depth is the real world depth in m from camera.
rotation [TensorProto]: A batch of quaternion vectors of rotation encoded as a rank 2 tensor. Quaternions order: (q.w, q.x, q.y, q.z) The shape of the tensor is: (batch_size, 4).
image [ColorCameraProto]: Input image from the sensor to extract the pinhole model of the camera for estimation of translation.
detections [Detections2Proto]: Input bounding box detections for label data of the 3D detections
Outgoing messages
output_poses [Detections3Proto]: Pose output for a batch of objects estimated from the input translation and rotation vectors
- Parameters
(none)
isaac.object_pose_estimation.PoseEncoder
Description
Encodes 3D detections into tensors with translation and rotation parameters
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detection3 [Detections3Proto]: List of 3D detections of the objects to encode into tensors
pinhole [PinholeProto]: Camera pinhole proto to project the 3D position into camera frame
Outgoing messages
center_and_depth [TensorProto]: A tensor of dimensions (N, 3) where N is the number of rigid bodies The 3 columns are translation parameters in the order (c_x, c_y, c_depth). c_x, c_y are object center in pixel coordinates along rows and columns respectively, c_depth is the real world object distance from camera in metres.
rotation [TensorProto]: A tensor of dimensions (N, 4) where N is the number of rigid bodies Four columns are orientations in quaternions in the order (qw, qx, qy, qz),
Parameters
center_out_of_frame_tolerance [double] [default=10]: Tolerance in pixels for object center to be out of image frame
isaac.object_pose_estimation.PoseEstimation
Description
Codelet that given an image and the detections of an object inside this image returns the pose in 3D relative to the camera of the object.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: Input color camera proto to get pinhole parameters.
input_detections [Detections2Proto]: Input bounding box from any object detection model (YOLO/ResNet).
codes [TensorProto]: Input code vectors coming from a codebook, assuming a list of quaternion/center offset/diagonal
correlations [TensorProto]: Correlations for code vectors indicating how good the match was.
Outgoing messages
output_poses [Detections3Proto]: Output poses and bounding box.
- Parameters
(none)
isaac.object_pose_refinement.PoseRefinement
Description
This codelet takes image/measurement surflets and the detection pose of an object. It iteratively optimizes the model position based on the pose estimation and minimizes the error between measurement surflets position and model position. Once the model converges or maximum specified iterations is reached, it returns refined pose in 3D relative to camera coordinates.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
surflets [CompositeProto]: Input image superpixels
raw_poses [Detections3Proto]: Input object poses from any pose estimation model (AutoEncoder/PoseCNN)
object_assignment [TensorProto]: Input object assignment from SurfletsObjectAssignment component
Outgoing messages
refined_poses [Detections3Proto]: Output refined poses and prediction labels
Parameters
line_search_break_on_failure [bool] [default=true]: Line search parameter to specify if the gradient descent algorithm breaks on failed search
line_search_armijo_factor [double] [default=0.5]: Line search parameter to control backtracking. It varies from (0, 1).
line_search_max_iterations [int] [default=20]: Line search parameter to limit maximum iterations during line search
line_search_step_factor [double] [default=0.5]: Line search parameter to control the delta steps in search direction
line_search_tolerance [double] [default=1e-2]: Line search parameter that determines the convergence criteria between 2 iterations
gradient_descent_max_iterations [int] [default=50]: Gradient descent parameter that determines the maximum number of line searches performed per optimization
num_iterations [int] [default=10]: Optimization parameter to limit maximum number of iterations and model to measurement reassignment
distance_threshold [double] [default=0.1]: Convergence threshold for distance threshold per assignment
mesh_pose_offset [Pose3d] [default=]: Pose offset added to move from dolly pose to mesh pose
filename [string] [default=]: filename which contains object model
model_atlas [string] [default=”object_pose_refinement.model_atlas”]: Name of surflet model atlas database. This has the form node_name.component_name.
assignment_component_name [string] [default=”object_pose_refinement.surflet_assigment”]: Name of surflet assignment component. This has the form node_name.component_name.
distance_component_name [string] [default=”object_pose_refinement.surflet_distance”]: Name of surflet distance component. This has the form node_name.component_name.
assignment_distance_component_name [string] [default=”object_pose_refinement.surflet_assignment_distance”]: Name of surflet assignment distance component. This has the form node_name.component_name.
object_model_names [std::vector<std::string>] [default=]: List of names of surflet models in atlas database
model_frame_names [std::vector<std::string>] [default=]: List of names of coordinate frames to use for surflet models
reference_frame_name [string] [default=]: Name of reference frame of the published surflet model
isaac.orb.ExtractAndVisualizeOrb
Description
Codelet to extract and visualize ORB features. Input is an image, Output is the same image overlaid with extracted ORB features
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: Input image
Outgoing messages
coordinates [TensorProto]: Output keypoint coordinates
features [TensorProto]: Output features ids
Parameters
max_features [int] [default=500]: maximum number of features to extract
fast_threshold [int] [default=20]: FAST threshold, lower means higher sensitivity. Note that this threshold controls how many features are extracted before filtering the features down to the requested number of max_features. Decrease this parameter if the resulting amount of features is too low (that is, constantly below max_features).
grid_num_cells_linear [int] [default=8]: how many cells to split the image into for spatial regularization
downsampling_factor [double] [default=0.7]: how much to reduce image size between ORB feature levels
max_levels [int] [default=4]: maximum number of different ORB levels
isaac.perception.AprilTagsDetection
Description
AprilTagsDetection takes an image as input and detects and decodes any APrilTags found in the image. It returns an array of Tag IDs as output.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
image [ColorCameraProto]: RGB input image. Image should be undistorted prior to being passed in here.
Outgoing messages
april_tags [FiducialListProto]: Output, List of AprilTag fiducials
Parameters
max_tags [int] [default=50]: Maximum number of AprilTags that can be detected
tag_dimensions [double] [default=0.18]: Tag dimensions, translation of tags will be calculated in same unit of measure
tag_family [string] [default=”tag36h11”]: Tag family, currently ONLY tag36h11 is supported
isaac.perception.BirdViewProjection
Description
Unprojects a given 2-channel image from perspective to bird’s eye view. The codelet takes the following inputs - * ImageProto: 2-channel image which is to be unprojected to bird’s eye view * LatticeProto: Represents the gridmap information corresponding to the unprojected 2-channel
image. The information from this message is used to derive some of the parameters required for unprojection, namely cell size and gridmap dimensions.
ColorCameraProto: Required to obtain the pinhole model which corresponds to the input 2-channel image.
The codelet outputs an unprojected image along with a lattice proto message with the same parameter values as the input lattice proto, but with the timestamp of the input image. These messages are intended to be used by the local map as a representation of occupancy.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
color_image [ColorCameraProto]: Input proto message containing the color image. This is required to obtain the pinhole model
input_image [ImageProto]: Incoming 2-channel float image
gridmap_lattice [LatticeProto]: Input lattice proto. This contains relevant information about the gridmap corresponding to the input 2-channel image.
Outgoing messages
bird_view_image [ImageProto]: Output bird view image
synced_gridmap_lattice [LatticeProto]: Output lattice proto, published with the same timestamp as the bird view image. This contains the same parameter values as the input, but is mainly published so that the timestamps of the 2-channel image and the corresponding lattice match.
Parameters
camera_frame [string] [default=”camera”]: The name of the camera frame
isaac.perception.ColorSpaceConverter
Description
Performs the conversion of an input image into a desired color space and publishes the result. If the input image already has the desired color space, it’s published to output as-is. The input image dimensions are preserved after the color space conversion. All operations are performed on CPU. Currently, RGB(A) to grayscale is the only supported color space conversion.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ImageProto]: input image to be converted into the desired color space.
Outgoing messages
output_image [ImageProto]: output image that is published after the color space conversion.
Parameters
color_weights [Vector3d] [default=Vector3d(0.21, 0.72, 0.07)]: Defines the weight of the red, green and blue components for RGB to Greyscale conversion. All weights should sum to 1.0 Valid range for each weight is between 0.0 and 1.0
input_color_space [ColorSpace] [default=ColorSpace::kRGB]: Defines the color space of an input image. Currently, only grayscale, rgb and rgba input images are supported.
output_color_space [ColorSpace] [default=ColorSpace::kGRAYSCALE]: Defines the desired color space of the output image. Currently, this parameter is a dummy as RGB(A) to grayscale is the only supported color space conversion.
isaac.perception.CropAndDownsample
Description
Codelet to crop and downsample the input image. The input image is first cropped to the desired region of interest and then resized to the desired output dimensions. All operations are performed using cpu functionality.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: Input image
Outgoing messages
output_image [ColorCameraProto]: Cropped and resized output image
Parameters
crop_mode [CropMode] [default=CropMode::kManual]: Parameter which determines if we should auto-crop the input image. If set to “AutomaticCrop”, the codelet would compute the maximum possible crop which matches the aspect ratio of the desired output specified by downsample. If the parameters crop_start and crop_size are explicitly set by the user, they would be reset by the codelet. If set to “ManualCrop”, the codelet uses the exact crop start and crop size as specified by the user.
crop_start [Vector2i] [default=]: Top left corner (row, col) for crop
crop_size [Vector2i] [default=]: Target dimensions (rows, cols) for crop.
downsample_size [Vector2i] [default=]: Target dimensions (rows, cols) for downsample after crop.
isaac.perception.CropAndDownsampleCuda
Description
Codelet to crop and downsample the input image. The input image is first cropped to the desired region of interest and then resized to the desired output dimensions. All operations are performed using cuda based functionality.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: Input image
Outgoing messages
output_image [ColorCameraProto]: Cropped and resized output image
Parameters
crop_start [Vector2i] [default=]: Top left corner (row, col) for crop
crop_size [Vector2i] [default=]: Target dimensions (rows, cols) for crop.
downsample_size [Vector2i] [default=]: Target dimensions (rows, cols) for downsample after crop.
isaac.perception.DisparityToDepth
Description
Converts a disparity image to depth image using the camera intrinsics and extrinsics
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
disparity [DepthCameraProto]: Receivers Disparity Image
extrinsics [Pose3dProto]: camera pair extrinsics (right-to-left)
Outgoing messages
depth [DepthCameraProto]: Publishers The converted depth in meters
- Parameters
(none)
isaac.perception.FiducialAsGoal
Description
Looks for a fiducial with a specific ID and uses it as a goal for the navigation stack. The goal can be computed relative to the fiducial based on different methods.
“center”: The center of the fiducial is projected into the Z=0 plane and published as the goal point for the navigation stack.
“pointing”: A ray is shot out of the center of the fiducial into the direction of the normal and intersected with the Z=0 ground plane. This happens up to a maximum distance of max_goal_tag_distance.
“offset”: The fixed offset fiducial_T_goal is used to compute the goal based on the detected fiducial.
A goal or plan is published every time a fiducial detection is received. In case the fiducial is not found for longer than give_up_duration a stop command is sent.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
fiducials [FiducialListProto]: The input channel where fiducial detections are publishes
Outgoing messages
goal [Goal2Proto]: The target fiducial as a goal
plan [Plan2Proto]: The target fiducial as a simple plan with one waypoint
Parameters
target_fiducial_id [string] [default=”tag36h11_9”]: The ID of the target fiducial
give_up_duration [double] [default=1.0]: If the robot does not see the fiducial for this time period the robot is stopped
mode [Mode] [default=Mode::kCenter]: Specifies how the robot will use the fiducial to compute its goal location.
max_goal_tag_distance [double] [default=1.0]: The maximum distance the goal with be away from the tag
robot_frame [string] [default=]: The name of the robot coordinate frame
camera_frame [string] [default=]: The name of the camera coordinate frame
isaac.perception.ImageWarp
Description
Warps an image from one model to another model. Currently two input and two output models are supported. Input models: perspective and fisheye lens. Output models: perspective and equirectangular. A common use case for this codelet is correction of camera lens distortion effects.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_image [ColorCameraProto]: The input image and its optical parameters. The parameters include focal length, principal point, radial and tangential distortion parameters, and projection type (perspective or fisheye).
Outgoing messages
output_image [ColorCameraProto]: The output image and its optical parameters. The output parameters are set accordingly to the requested target camera model. For perspective they match the source model with no distortion. For an equirectengular model they are computed based on the choice of the pixel_density parameter.
Parameters
down_scale_factor [int] [default=4]: Scaling of the displayed images in Sight. down_scale_factor the ratio of the size of the source image to the displayed image.
gpu_id [int] [default=0]: The GPU device to be used for Warp360 CUDA operations. The default value of 0 suffices for cases where there is only one GPU, and is a good default when there is more than 1 GPU.
output_model [ImageWarpOutputModel] [default=ImageWarpOutputModel::kPerspective]: The desired output camera model
pixel_density [double] [default=]: For certain projections this parameter can be used to control the size of the output image. For an equirectangular projection the output size will be the field of view angles of the camera multiplied by this constant. If this parameter is not set the output size will be identical to the input size which can lead to undesired cropping or black bars.
background_color [Vector3ub] [default=]: Some projections will not fully cover the output image space. In that case the background is black by default, but can be changed to the given color if desired.
isaac.perception.PointCloudAccumulator
Description
Accumulates point clouds into a larger point cloud. This can be used, for example, to accumulate small, partial/incomplete point clouds produced by a LIDAR into a usable point cloud. For better performance, the point count to accumulate should be a multiple of the incoming sample point cloud size, if possible, or at least far greater. This accumulator also can break down a large message into smaller ones.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
point_cloud [PointCloudProto]: Incoming proto messages used to subscribe to small, point cloud data samples to accumulate.
Outgoing messages
accumulated_point_cloud [PointCloudProto]: Outgoing proto messages used to publish the accumulated point cloud.
Parameters
point_count [int] [default=10000]: Number of accumulated points before publishing the point cloud. This parameter can be configured and changed at runtime. The point cloud is published when this number of accumulated points is reached.
isaac.perception.RangeScanFlattening
Description
Flattens a 3D range scan into a 2D range scan.
We assume that a range scan is made up out of vertical “slices” of beams which are rotated around the lidar at specific azimuth angles. For each azimuth angle all beams of the vertical slice are analysed and compared to a 2.5D world model to compute a single distance value for that azimuth angle. The pair of azimuth angle and distance are published as a “flat” range scan.
The 2.5D world model assumes that every location in the X/Y plane is either blocked or free. To compute that we assume a critical height slice relative to the lidar defined my a minimum and maximum height. If any return beam of the vertical slice hits an obstacle in that height slice the flat scan will report a hit. In addition to the height interval we also allow for a fudge on the pitch angle of the lidar which will be an additional rejection criteria. Essentially every beam return has to be inside the height slice not only for the beam angle alpha, but for all angles in the interval [alpha - fudge | alpha + fudge].
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
scan [RangeScanProto]: Incoming 3D range scan
Outgoing messages
flatscan [FlatscanProto]: Outgoing “flat” range scan
Parameters
use_target_pitch [bool] [default=false]: Enables usage of target pitch parameter
target_pitch [double] [default=]: If this value is set only beams with this pitch angle will be used; otherwise all beams of a vertical beam slice will be used.
height_min [double] [default=0.0]: Minimum relative height for accepting a return as a collision.
height_max [double] [default=1.5]: Maximum relative height for accepting a return as a collision.
pitch_fudge [double] [default=0.005]: Inaccuracy of vertical beam angle which can be used to compensate small inaccuracies of the lidar inclination angle.
isaac.perception.RangeToPointCloud
Description
The RangeToPointCloud class converts a range scan into a point cloud.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
scan [RangeScanProto]: The range scan which is to be converted to a point cloud
Outgoing messages
cloud [PointCloudProto]: The point cloud computed from the range scan
Parameters
min_fov [double] [default=DegToRad(360.0)]: Number of rays to accumulate before sending out the message (in addition to min_count)
min_count [int] [default=360]: Minimum number of points before sending a point cloud (in addition to min_fov)
enable_visualization [bool] [default=false]: If set to true the point cloud is visualized with Sight
sensor_frame [string] [default=”lidar”]: If set to true the point cloud is visualized with Sight
isaac.perception.ScanAccumulator
Description
Accumulates slices of a range scans into a full range scan. This can for example be use to accumulate the small slices produced by a rotating lidar into a full 360 degree range scan.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
scan [RangeScanProto]: Proto used to subscribe to partial scan lidar data
Outgoing messages
fullscan [RangeScanProto]: Proto used to publish full scan lidar data
Parameters
min_fov [double] [default=DegToRad(360.0)]: Minimum FOV before sending out the message (in addition to min_slice_count)
min_slice_count [int] [default=1800]: Number of slices to accumulate before sending out the message (in addition to min_fov)
clock_wise_rotation [bool] [default=true]: Turning direction of the LIDAR
isaac.perception.StereoDisparityNet
Description
StereoDisparityNet takes a pair of left and right images as input and infers disparity using the NVStereoNet library. The network expects an input of 257 x 513. The network outputs disparities in left_camera space.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
left [ColorCameraProto]: Receivers Left camera image
right [ColorCameraProto]: Right camera image
Outgoing messages
left_disparity [DepthCameraProto]: Publishers The inferred depth in meters
Parameters
weights_file [string] [default=]: Configurable Parameters path to the weights file
plan_file [string] [default=]: path to the plan file. plan file is specific to sm version of the GPU
fp16_mode [bool] [default=false]: flag to turn on half precision for tensorrt. This is currently not supported on desktop gpus and will only work on tx2/xavier
isaac.perception.StereoImageSplitting
Description
StereoImageSplitting splits a side-by-side stereo image into a left image and a right image. Input images are assumed to be all in Image3ub format.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
stereo [ColorCameraProto]: Input stereo image
Outgoing messages
left [ColorCameraProto]: Output left image
right [ColorCameraProto]: Output right image
Parameters
copy_pinhole_from_source [bool] [default=true]: If true, the pinhole is copied from the source and the column count is adjusted to half the original column count.
left_rows [int] [default=]: Number of pixels in the height dimension of left image
left_cols [int] [default=]: Number of pixels in the width dimension of left image
left_focal_length [Vector2d] [default=]: Focal length of the left image
left_optical_center [Vector2d] [default=]: Optical center for the left image
right_rows [int] [default=]: Number of pixels in the height dimension of left image
right_cols [int] [default=]: Number of pixels in the width dimension of left image
right_focal_length [Vector2d] [default=]: Focal length of the right image
right_optical_center [Vector2d] [default=]: Optical center for the right image
isaac.perception.StereoRectification
Description
Apply lens geometry undistortion and pose alignment to a pair of input images, publishing the rectified results. We accept only images in Image3ub format.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_left_image [ColorCameraProto]: Left camera input image buffer and intrinsic parameters.
input_right_image [ColorCameraProto]: Right camera input image buffer and intrinsic parameters.
input_left_pose [Pose3dProto]: Left camera input extrinsic parameters, relative to the stereo camera coordinate system, This is not used now because ZedCam doesn’t provide it, so it defaults to the identity, i.e. the left camera is the stereo camera coordinate system.
input_right_pose [Pose3dProto]: Right camera input extrinsic parameters, relative to the stereo camera coordinate system, which is typically chosen to be at one camera or the mount point. Since the left_input_pose is not currently used, the right extrinsic parameters are with respect to the left. If not provided, it is assumed to be the identity. Note that the camera coordinate systems have the X-axis pointing to the right, the Y-axis pointing downward, and the Z-axis pointing in the direction of view. Rotations are typically close to the identity.
Outgoing messages
output_left_image [ColorCameraProto]: Left output image buffer and intrinsic parameters.
output_right_image [ColorCameraProto]: Right output image buffer and intrinsic parameters.
output_left_pose [Pose3dProto]: Left output extrinsic parameters, relative to the stereo camera coordinate system. Note that this will in general be different than the input pose, even if the input was the identity.
output_right_pose [Pose3dProto]: Right output extrinsic parameters, relative to the stereo camera coordinate system.
Parameters
use_left_pose [bool] [default=false]: Some cameras supply only one pose, that of right w.r.t. left. If a pose is supplied as well, set use_left_pose to true.
down_scale_factor [int] [default=4]: Scaling factor of the image visualization in Sight.
gpu_id [int] [default=0]: The GPU device to be used for Warp360 CUDA operations.
isaac.planner.DifferentialBaseControl
Description
Controller node for a differential base. Takes a trajectory plan and output a segway command.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
plan [DifferentialTrajectoryPlanProto]: Input: the plan to follow (contain a list of state at a given timestamp)
Outgoing messages
cmd [StateProto]: Output a navigation::DifferentialBaseControl state message.
Parameters
cmd_delay [double] [default=0.2]: Expected delay between the command sent and the execution (in second)
use_pid_controller [bool] [default=true]: Whether or not use the pid controller
manual_mode_channel [string] [default=”“]: Channel publishing whether or not the robot is in manual mode
pid_heading [Vector7d] [default=Vector7d((double[]){1.0, 0.1, 0.0, 0.25, -0.25, 1.0, -1.0})]: Parameters of pid controller that controls the heading error
pid_pos_y [Vector7d] [default=Vector7d((double[]){1.0, 0.1, 0.0, 0.25, -0.25, 2.0, -2.0})]: Parameters of pid controller that controls the lateral error
pid_pos_x [Vector7d] [default=Vector7d((double[]){1.0, 0.1, 0.0, 0.25, -0.25, 2.0, -2.0})]: Parameters of pid controller that controls the forward error
controller_epsilon_gain [double] [default=1.0]: Gains used to compute the forward gain
controller_b_gain [double] [default=1.0]: Gains used to compute the heading gain
robot_frame [string] [default=”robot”]: Name of robot’s frame. Output command message will be published in this frame.
static_frame [string] [default=”odom”]: Name of a static frame. Used to convert input plan message to robot frame.
use_tick_time [bool] [default=true]: This flag controls whether or not this task uses tick time or the acquisition time to know which command to output. Note: Acquisition time should be used when the DifferentialTrajectoryPlanProto comes with a not synchronized source. cmd_delay should be used to estimate the full delay from when the odometry was computed to when the command is going to be executed on the system.
isaac.planner.DifferentialBaseLqrPlanner
Description
The DifferentialBaseLqrPlanner class computes and outputs the local plan given the position of the robot and its surroundings. The local plan is computed using the lqr planner. TODO(ben): Rename with Differential in the name
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
odometry [Odometry2Proto]: Contains the odometry information required for planning (current speed, acceleration, etc.)
global_plan [Plan2Proto]: Contains the target plan the local planner attempts to follow
Outgoing messages
plan [DifferentialTrajectoryPlanProto]: Contains a series of poses to form the trajectory that is optimal to follow
Parameters
robot_model [string] [default=”navigation.shared_robot_model/SphericalRobotShapeComponent”]: Name of the robot model node
time_between_command_ms [int] [default=100]: Step size to be used in integrating the state
num_controls [int] [default=50]: Upper limit on the number of steps in the output trajectory plan
min_num_controls [int] [default=5]: Lower limit on the number of steps in the output trajectory plan (only used if the flag use_adaptive_num_controls is set to true).
use_adaptive_num_controls [bool] [default=false]: If true, the number of controls will adapt to the distance (but remain between min_num_controls and num_controls).
adaptive_num_controls_factor [double] [default=5.0]: If use_adaptive_num_controls is true, this parameter will help to compute the number of control points to use: num_controls = adaptive_num_controls_factor * distance / (max_speed * dt)
target_distance [double] [default=0.25]: parameters for the GridMapObstaclesLqr parameters Distance we would like to keep away from surroundings
speed_gradient_target_distance [double] [default=1.0]: How fast the target distance increases depending on the speed
min_distance [double] [default=0.1]: Distance we want to keep away from surroundings before kicking high penality
speed_gradient_min_distance [double] [default=0.0]: How fast the minimum distance increases depending on the speed.
gain_speed [double] [default=1.0]: parameters for the DifferentialLqr parameters Gain of a quadratic cost to penalize a speed outside the range defined below
gain_steering [double] [default=0.0]: Gain of a quadratic cost to penalize any steering
gain_lat_acceleration [double] [default=0.2]: Gain of a quadratic cost to penalize the lateral acceleration
gain_linear_acceleration [double] [default=4.0]: Gain of a quadratic cost to penalize the forward acceleration
gain_angular_acceleration [double] [default=2.0]: Gain of a quadratic cost to penalize the angular acceleration
gain_to_target [double] [default=0.1]: Gain of a custom cost to penalize the robot according to its distance to the target
gain_to_end_position_x [double] [default=20.0]: Gain of a quadratic cost to penalize the last position in forward/backward direction relative to the target
gain_to_end_position_y [double] [default=50.0]: Gain of a quadratic cost to penalize the last position in lateral direction relative to the target
gain_to_end_angle [double] [default=1.0]: Gain of a quadratic cost to penalize the robot if its orientation does not match the target
gain_to_end_speed [double] [default=10.0]: Gain of a quadratic cost to penalize the robot if it is still moving
gain_to_end_angular_speed [double] [default=10.0]: Gain of a quadratic cost to penalize the robot if it is still rotating
max_angular_speed [double] [default=0.75]: Soft limit on how fast we are allowed to rotate
max_speed [double] [default=0.75]: Soft limit on how fast we would like to move
min_speed [double] [default=-0.0]: Soft limit on how slow we are allowed to move
distance_to_target_sigma [double] [default=1.0]: Other parameters: Parameter that controls the strength of the gradient depending on the distance of the target The error cost is of the form: d^2/(d^2 + s^2). It behaves as a quadratic cost close to the target and as a constant value far away from the target.
decay [double] [default=1.01]: Decay apply to each steps (decay < 1 means we accord higher importance to the beginning of the path while decay > 1 emphasizes the end of the path).
distance_to_waypoint [double] [default=1.0]: Maximum distance the end of the plan needs to be from a waypoint before trying to move to the next waypoint.
angle_to_waypoint [double] [default=DegToRad<double>(20.0)]: Maximum angle the end of the plan needs to be from a waypoint before trying to move to the next waypoint.
obstacle_names [std::vector<std::string>] [default={}]: List of obstacles to use for the planning. The ObstacleAtlas is queried.
use_predicted_position [bool] [default=true]: Indicates whether or not the predicted position or actual position is used while planning. If true, this produces a more stable path, however it relies on a good controller to keep the robot on track. If false, then this codelet also acts as a controller.
reset_robot_position [int] [default=0]: How frequently (in term of ticks) do we reset the robot position to the odometry: - 0: Disable it, never reset the robot position unless use_predicted_position is set to false. - 1: Always reset the robot position regardless of the value of use_predicted_position. - 10 Assuming use_predicted_position = true, means every 10 ticks we reset the robot position
to where the odometry predict the robot to be.
max_predicted_position_error [double] [default=0.5]: The distance from the predicted position we tolerate. If we exceed this value, the actual robot position is used.
manual_mode_channel [string] [default=”“]: Channel publishing whether or not the robot is in manual mode
print_debug [bool] [default=false]: Specifies whether to show extra information in Sight for debug purposes
reuse_lqr_plan [bool] [default=true]: Specifies whether or not to use the previous plan as starting point for the lqr
restart_planning_cycle [int] [default=10]: How frequently (in term of ticks) do we restart the planning from scratch: - 0: Disable it, never restart it (unless reuse_lqr_plan is set to false) - 1: Never reuse the plan (regardless of the value of reuse_lqr_plan). - 10 Assuming reuse_lqr_plan = true, means every 10 ticks we drop the previous plan and
replan from a stopped position.
static_frame [string] [default=”world”]: Name of a frame which is static. This is used to compensate for the odometry drift.
stop_robot_on_collision [bool] [default=true]: Force the robot to stop when it’s colliding. This can prevent the robot from moving when it gets too close to an obstacle (a wall for example) if the robot model is not accurate enough or if the localization is off. If set to false, the robot will try to move away from the colliding state, and if it fails it will stop.
plan_visualization_width [double] [default=]: If set, plan will have this width on Sight
plan_visualization_color [Vector4ub] [default=(Vector4ub{118, 185, 0, 100})]: Color to visualize plan with
isaac.planner.DifferentialBaseModel
Description
Holder of common parameters describing the differential base (two independent controllable wheels defined by the wheel radius and distance between wheels).
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
robot_radius [double] [default=0.40]: The radius of the robot for collision detection.
base_length [double] [default=0.63]: The distance between the two wheels
wheel_radius [double] [default=0.2405]: The radius of the wheels
isaac.planner.DifferentialBaseVelocityIntegrator
Description
Publishes a plan by interpolating and integrating velocities. Reads sparse target linear and angular velocities from input message. Uses linear interpolation to compute velocities between time stamps. Uses Riemann sum to approximately integrate for pose.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
target_velocities [CompositeProto]: Contains time series of target values with (linear_speed, angular_speed, time_seconds).
Outgoing messages
plan [CompositeProto]: Contains time series of poses and velocities to form the trajectory.
Parameters
delta_time [double] [default=0.02]: Difference between time stamps in outgoing plan message.
isaac.planner.GlobalPlanSmoother
Description
Creates a valid smooth global plan based on a given rough plan
A graph-based planning algorithm on a 3-dimensional state space (position + rotation) in a large domain often produces rough non-optimal plans with unnecessary corners and detours. This component takes such a rough path and smoothes it into a more optimal but still valid plan. The smooth plan can then for example be used as the input of a trajectory planner.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
rough_plan [Plan2Proto]: A global plan which is potentially not smooth
Outgoing messages
smooth_plan [Plan2Proto]: A valid smooth global plan computed based on the input global plan
Parameters
robot_model [string] [default=”navigation.shared_robot_model/SphericalRobotShapeComponent”]: Name of the robot model node
obstacle_names [std::vector<std::string>] [default=std::vector<std::string>({“map/isaac.navigation.DistanceMap”, “map/restricted_area”, “global_plan_local_map”})]: List of obstacles to use for the planning. The ObstacleAtlas is queried.
backward_shortcut [bool] [default=false]: Whether we allow to shortcut moving backward
distance_between_waypoints [double] [default=0.25]: The target distance between waypoints
number_shortcut_iterations [int] [default=1000]: How many iterations we perform each tick to attempt to shortcut
number_obstacle_avoidance_iterations [int] [default=50]: How many iterations we perform each tick to attempt to stay away from obstacles
optimized_length [double] [default=50.0]: How much of the path are we optimizing: only the first X meters will be optimized
target_clearance [double] [default=0.25]: Target clearance from the obstacles. If a waypoint is closer than this distance we try to move it in the normal direction of the path to reach the target clearance.
maintain_distance_factor [double] [default=0.9]: When shortcutting, how much closer are we allowed to get to the obstacle. A value of zero means we can shortcut as much as we want as long as the path is valid, while a value of 1 means we can shortcut as long as either the start or end of the path is the closest to the obstacles.
isaac.planner.GlobalPlanner
Description
Global planner, take a target destination and outputs a global plan from current position to the target. This produces a rough plan that should be fed to some optimizer (such as GlobalPlannerSmoother).
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
previous_path [Plan2Proto]: The previous plan the robot is following, if this plan is still valid, then the global planner will just output it back, if not, then the global plan will generate a new plan.
Outgoing messages
plan [Plan2Proto]: The computed global plan
Parameters
graph_initialization_steps [int] [default=20000]: How many random samples to use while pre-computing the graph.
graph_in_tick_steps [int] [default=0]: How many random samples to use during each tick to increase the graph size.
graph_max_steps [int] [default=5000]: How many random samples to use when no valid path exist.
robot_model [string] [default=”shared_robot_model”]: Name of the robot model node
static_obstacle_names [std::vector<std::string>] [default=std::vector<std::string>({“map/isaac.navigation.DistanceMap”, “map/restricted_area”})]: Name of the static obstacles. First one needs to be the one related to the global map. Note: these obstacles are assumed to be constant, if they change the planner needs to be stopped and restarted.
dynamic_obstacle_names [std::vector<std::string>] [default={“global_plan_local_map”}]: Name of the dynamic obstacles. (Can be changed live)
graph_file_in [string] [default=]: Path to a file containing the graph to load.
graph_file_out [string] [default=”/tmp/graph.json”]: Path to a file where to save the file at the end
model_error_margin [double] [default=0.05]: How close to obstacle the robot can be (in meters).
model_max_translation_distance [double] [default=1.0]: Maximum distance between two points to be connected (in meters). A shorter distance produces a denser graph. In general a value in the order of the average distance of any point to the closest obstacle is recommended.
model_max_rotation_distance [double] [default=TwoPi<double>]: Maximum rotation between two points to be connected (in meters). A shorter distance produces a denser graph.
model_backward_path_penalty [double] [default=10.0]: The penality when moving backward
model_invalid_path_penalty [double] [default=100.0]: The penality when moving into a dynamic obstacle.
max_colliding_lookup [double] [default=0.5]: How much distance into obstacle do we tolerate for the starting position and the target.
check_direct_path [bool] [default=true]: Whether we can connect directly the start and end position or if we should always use the graph to do the planning.
world_dimensions [geometry::RectangleD] [default=]: Dimensions of the world. Random position will be sampled in this area. If not set, then it will be automatically computed using the obstacle map
isaac.planner.HolonomicBaseControl
Description
Controller node for a differential base. Takes a trajectory plan and output a segway command.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
plan [DifferentialTrajectoryPlanProto]: Plan (position/time) the controller is trying to follow. TODO: Should not take a DifferentialTrajectoryPlanProto
Outgoing messages
cmd [StateProto]: Output a navigation::DifferentialBaseControl state message.
Parameters
cmd_delay [double] [default=0.2]: Expected delay between the command sent and the execution (in second)
use_pid_controller [bool] [default=true]: Whether or not use the pid controller
manual_mode_channel [string] [default=”“]: Channel publishing whether or not the robot is in manual mode
pid_heading [Vector7d] [default=Vector7d((double[]){1.0, 0.1, 0.0, 0.25, -0.25, 1.0, -1.0})]: Parameters of pid controller that controls the heading error
pid_pos_y [Vector7d] [default=Vector7d((double[]){1.0, 0.1, 0.0, 0.25, -0.25, 2.0, -2.0})]: Parameters of pid controller that controls the lateral error
pid_pos_x [Vector7d] [default=Vector7d((double[]){0.2, 0.05, 0.0, 0.1, -0.1, 2.0, -2.0})]: Parameters of pid controller that controls the forward error
use_tick_time [bool] [default=true]: This flag controls whether or not this task uses tick time or the acquisition time to know which command to output. Note: Acquisition time should be used when the DifferentialTrajectoryPlanProto comes with a not synchronized source. cmd_delay should be used to estimate the full delay from when the odometry was computed to when the command is going to be executed on the system.
isaac.planner.MultiJointController
Description
Interpolates received plan for joints in a kinematic tree object to obtain command at a given look-ahead time and publishes the command. Supports sending either joint position or speed command.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
plan [CompositeProto]: Receives a plan that contains a trajectory of joint positions or/and speeds. If control_mode is position, the trajectory must contain joint positions. If control_mode is speed, the trajectory must contain joint speeds
state [CompositeProto]: Receives current state of the joints. In position control, this is sent back to the robot in case of emergency stop, so that the robot doesn’t move
Outgoing messages
command [CompositeProto]: Publishes the current joint position or speed command
Parameters
kinematic_tree [string] [default=]: Node name containing the map:KinematicTree component. This is used to get the names of active joints to parser/serialize composite proto.
control_mode [ControlMode] [default=ControlMode::kPosition]: Use “position” or “speed” to specify whether to send joint position and speed command
command_delay [double] [default=0.05]: A look-ahead time (in seconds) to get the current command from the received plan. The expected position or speed at time = current_time + command_delay from the received plan is published as the command
isaac.planner.MultiJointLqrPlanner
Description
Computes a local plan for a list of joints in a kinematic tree object given their current position and speed, and their target position and speed. The local plan is computed using the lqr simple control planner.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
target_state [CompositeProto]: Receivers The target joint position, and optionally speed
starting_state [CompositeProto]: The initial joint position and speed
Outgoing messages
plan [CompositeProto]: Publisher The local plan (trajectory) for the joints’ position, speed and acceleration
Parameters
kinematic_tree [string] [default=]: Node name containing the map:KinematicTree component
acceleration_max [VectorXd] [default=]: Maximum acceleration for each joint for lqr solver
acceleration_min [VectorXd] [default=]: Minimum acceleration for each joint for lqr solver
speed_max [VectorXd] [default=]: Maximum speed for each joint for lqr solver
speed_min [VectorXd] [default=]: Minimum speed for each joint for lqr solver
gain_control [double] [default=1.0]: Gain for the control (to prevent high change of acceleration) for lqr solver
gain_final_state [double] [default=10.0]: Gain for the the final state (for position, speed and acceleration) for lqr solver
gain_limits [double] [default=100.0]: Gain when the speed or acceleration is outside the target range for lqr solver
delta_time [double] [default=0.1]: Delta time between two time steps in the output trajectory.
isaac.planner.Pose2GraphPlanner
Description
Global planner This codelet takes a target destination from the goal channel, and outputs a plan from the current position of the robot to the target. To find a path, it uses a predefined directed graph and use the DirectedShortestPath gem to find the path. If no path exists, it will output a path to safely stop the robot. It is assumed that the graph already contain all the information about the world, the robot shape and the environment is only used to find which node are reachable from the current robot position and which node can reach the target. No other check will be performed and this task will be let to the local planner. There is currently no replanning around obstacles.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received, this codelet will computes a valid path for the robot to reach this target.
Outgoing messages
plan [Plan2Proto]: The computed global plan that goes from the current world_T_robot position to the latest target receive. If no path exist it will provide a plan to stop the robot.
Parameters
robot_model [string] [default=]: Name of the robot model node. If not specified, this codelet will try to find one in the application. If more than one exist it will fail.
static_obstacle_names [std::vector<std::string>] [default=std::vector<std::string>({“map/isaac.navigation.DistanceMap”, “map/restricted_area”})]: Name of the static obstacles. First one needs to be the one related to the global map. Note: these obstacles are assumed to be constant, if they change the planner needs to be stopped and restarted.
graph_filename [string] [default=”/tmp/pose2_grid_graph.capnp.bin”]: Path to a file containing the graph to load.
bucket_size [double] [default=0.5]: The dimensions of the bucket we store the nodes in. Once we get a new target/position, we will look into this bucket and the adjacent bucket to try to find a node.
isaac.planner.Pose2GridGraphBuilder
Description
Pose2GridGraphBuilder is a codelet that helps generate a dense directed graph for navigation that is meant to be used with the DirectedGraphGlobalPlanner planner. It uses the map and other obstacle available as well as the robot shape to determine a dense set of valid position and how we can safely navigate from one to another. It creates edges between them with custom weight depending on the distance to obstacle and the orientation in order to help the DirectedGraphGlobalPlanner to find the “optimal” path.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
robot_model [string] [default=]: Name of the robot model node. If not specified, this codelet will try to find one in the application. If more than one exist it will fail.
graph_filename [string] [default=”/tmp/pose2_grid_graph.capnp.bin”]: Path to a file containing the graph to load.
flatmap_cost_name [string] [default=]: Name of the component that contains the FlatmapCost used to build the graph.
region_of_interest [geometry::RectangleD] [default=]: The region of interest we will sample our positions.
backward_motion_penalty [double] [default=]: If this parameter is set and positive, then backward motion are allowed but come at a penalty: if the forward motion has a cost of C, then the backward motion will have a cost of backward_motion_penalty * C.
rotation_cost_factor [double] [default=1.0]: How much to penalize rotation compare to translation.
position_sample_distance [double] [default=0.2]: The distance in X/Y direction we sample to generate the node of the graph.
neighbours_roi_radius [int] [default=5]: For a given angles_generation value, we look at every node in the range [-angles_generation, angles_generation] x [-angles_generation, angles_generation] that are directly reachable from the position (0, 0). This is all the orientation we will be considering The number of angles used for a given value follow the sequence: 1 -> 8, 2 -> 16, 3 -> 32, 4 -> 48, 5 -> 80, 6 -> 96, etc (https://oeis.org/A137243)
stop_application_uppon_success [bool] [default=false]: Stop the application up success.
isaac.planner.SphericalRobotShapeComponent
Description
Model of a robot composed of a union of circles. The distance function is approximated by the function -ln(sum(exp(-alpha * dist_i))/alpha where alpha = ln(1 + #circles) * smooth_minimum controls how well the min function is approximated. If the real distance is D, then we have: D - 1/smooth_minimum <= distance <= D;
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
circles [std::vector<geometry::CircleD>] [default={}]: List of circles that compose the robot
smooth_minimum [double] [default=20.0]: Parameters to control how well the minimum function is approximated. The error will be in the range: D-1/smooth_minimum <= distance <= D where D = the real distance
isaac.pwm.PwmController
Description
Interface for a PCA9685 PWM Controller device This device is used to send PWM signals to peripherals
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
set_duty_cycle [PwmChannelSetDutyCycleProto]: PwmChannelSetDutyCycleProto is used to set a duty cycle for a PWM channel note: setting a PWM value for a channel automatically enables that channel duty_cycle as a percentage, from 0.00 to 1.00
set_pulse_length [PwmChannelSetPulseLengthProto]: PwmChannelSetPulseLengthProto is used to set a pulse length for a PWM channel pulse_length as a percentage, from 0.00 to 1.00 of the cycle
- Outgoing messages
(none)
Parameters
i2c_device_num [int] [default=0]: I2C device ID; matches /dev/i2c-X
pwm_frequency_in_hertz [int] [default=50]: Defines the frequency at which the PWM outputs modulate, in hertz 50Hz is common for servos
isaac.rgbd_processing.DepthEdges
Description
Computes edges on a depth image. By default a GPU-accelerated method is used
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth [DepthCameraProto]: Depth image used for point and normal computation
Outgoing messages
edges [ColorCameraProto]: Pixel edge likelihood stored as unit FP32
Parameters
edge_jump_threshold [double] [default=0.06]: Threshold in meters after which a jump in distance between two pixels is considered an edge.
min_depth [double] [default=]: Depth smaller or equal to the given value will be marked as edge
max_depth [double] [default=]: Depth values larger or equal to the given value will be marked as edge.
use_gpu [bool] [default=true]: If enabled GPU accelerated CUDA kernels are used; otherwise computations are done on CPU.
isaac.rgbd_processing.DepthImageFlattening
Description
The DepthImageFlattening class flattens a depth image into a 2D range scan.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth [DepthCameraProto]: Input depth image
Outgoing messages
flatscan [FlatscanProto]: Output range scan
Parameters
camera_frame [string] [default=”camera”]: The name of the camera coordinate frame
ground_frame [string] [default=”ground”]: The name of the ground coordinate frame
fov [double] [default=DegToRad(90.0)]: The field of view to use for the result range scan
sector_delta [double] [default=DegToRad(0.5)]: Angular resolution of the result range scan
min_distance [double] [default=0.2]: Minimum distance for the result range scan
max_distance [double] [default=5.0]: Maximum distance for the result range scan
range_delta [double] [default=0.10]: Range resolution of the result range scan
cell_blocked_threshold [int] [default=10]: A sector in the result range scan is marked as blocked after the given number of points.
height_min [double] [default=0.20]: Maximum height in ground coordinates in which a point is considered to be an obstacle
height_max [double] [default=1.00]: Minimum height in ground coordinates in which a point is considered to be an obstacle
skip_row [int] [default=0]: Number of pixels in row that are skipped while parsing the image
skip_column [int] [default=0]: Number of pixels in column that are skipped while parsing the image
isaac.rgbd_processing.DepthImageToPointCloud
Description
Create a point cloud from a depth image. Every pixel is “unprojected” based on its depth and the camera model. The point cloud is transformed into the desired target frame using the given transformation cloud_T_camera.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth [DepthCameraProto]: Input depth image
color [ColorCameraProto]: Input color image to color points (optional)
Outgoing messages
cloud [PointCloudProto]: The computed point cloud
Parameters
use_color [bool] [default=false]: If this is enabled a color image will be used to produce a colored point cloud. This can only be changed at program start.
isaac.rgbd_processing.DepthNormals
Description
Computes normals for a depth image based on computed points and respecting edges. This component uses GPU acceleration by default.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
points [ColorCameraProto]: Pixel points stored as a 3-channel FP32 image
edges [ColorCameraProto]: Pixel edge likelihood stored as unit FP32
Outgoing messages
normals [ColorCameraProto]: Pixel normals stored as a 3-channel FP32 image
Parameters
normals_smooth_radius [int] [default=7]: Radius over which normals are smoothed
use_gpu [bool] [default=true]: If enabled GPU accelerated CUDA kernels are used; otherwise computations are done on CPU.
isaac.rgbd_processing.DepthPoints
Description
Computes 3D points from a depth image and stores them as an Image3f. By default a GPU-accelerated implementation is used.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth [DepthCameraProto]: Depth image used for point and normal computation
Outgoing messages
points [ColorCameraProto]: Pixel points stored as a 3-channel FP32 image
Parameters
use_gpu [bool] [default=true]: If enabled GPU accelerated CUDA kernels are used; otherwise computations are done on CPU.
isaac.rgbd_processing.FreespaceFromDepth
Description
The FreespaceFromDepth class flattens a depth image into a 2D range scan.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth [DepthCameraProto]: Input image use to compute the range scan
Outgoing messages
flatscan [FlatscanProto]: Output the freespace as a range scan that can be used for example to produce a local map for navigation
Parameters
last_range_cell_additional_contribution [double] [default=2.5]: In order to favor the last cell in case there is no obstacle, we arbitrarily increase the value by this factor scaled by the average occupancy.
edge_distance_cost [double] [default=0.5]: Factor to compute the cost of an edge (multiplied by the distance) Reducing this value might increase processing time.
max_edge_cost [double] [default=1.0]: Cap on the maximum cost of an edge (Reducing this value might speed up the processing time.)
max_contribution_after_wall [double] [default=2.5]: Once we hit a wall, we cap the value of a cell at: max_contribution_after_wall * average_weight
wall_threshold [double] [default=5.0]: The minimum value needed for a cell to be considered as a wall (as a factor of the average value.)
fov [double] [default=DegToRad(90.0)]: The field of view to use for the result range scan
num_sectors [int] [default=180]: Angular resolution of the result range scan
range_delta [double] [default=0.1]: Range resolution of the result range scan
height_min [double] [default=-1.00]: Maximum height in ground coordinates in which a point is considered valid
height_max [double] [default=2.00]: Minimum height in ground coordinates in which a point is considered valid
max_distance [double] [default=20.0]: Max range for the extraction.
reduce_scale [int] [default=2]: Reduction factor for image. Values greater than one shrink the image by that amount
integrate_temporal_information [bool] [default=false]: Reduction factor for image. values greater than one shrink the image by that amount
use_predicted_height [bool] [default=false]: Whether to use the predicted height (from measurement) or 0 when rendering the freespace
camera_name [string] [default=]: Name of the camera used to get the camera position in the world
isaac.rl.DollyDockingAuxDecoder
Description
Generates an auxiliary tensor as described in https://arxiv.org/abs/1606.01540 . The auxiliary tensor is used to inform the codelets later in the pipeline about important events that impact the flow of Gym and simulation. For the dolly navigation task, the auxiliary tensor is of dimension 7 and data is arranged as follows: Index 0 : Flag to signify if a collision has occurred in simulation Index 1 : DollyDockingDeath uses this index to store a value indicating whether the agent died due to old age Index 2 : Ground truth pose of dolly relative to robot (robot_T_dolly) : x-cordinate (forward) Index 3 : Ground truth pose of dolly relative to robot (robot_T_dolly) : y-cordinate (sideways) Index 4 : Ground truth pose of dolly relative to robot (robot_T_dolly) : heading Index 5 : Difference between dolly and robot translations (dolly_T_robot) : x-cordinate Index 6 : Difference between dolly and robot translations (dolly_T_robot) : y-cordinate
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
body_collision [CollisionProto]: Receives a collision message whenever a robot collision occurs in simulation
scene_pose [RigidBody3GroupProto]: Message containing the true positions of all the bodies from simulation
Outgoing messages
agent_aux [TensorProto]: Send the composed auxiliary tensor to Gym
- Parameters
(none)
isaac.rl.DollyDockingBirth
Description
Publishes reset messages to simulation when an agent dies in the dolly docking scene. StateMachineGymFlow expects one clone of this codelet for each agent in simulation and resets the scene for a single agent whenever Gym calls its spawn function. This codelet is also responsible for randomizing the various objects in the scene. The tx hook is created dynamically and the output channel of this codelet must be connected to the Teleport script for the particular agent scene inside the simulation.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
names [std::vector<std::string>] [default=std::vector<std::string>({“robot”, “dolly”, “left_wall”, “right_wall”, “rear_wall”, “left_block”, “right_block”, “rear_block”})]: Name of objects in the scene that can be reset The order of the strings must follow the order in the reset_state tensor
agents_per_row [int] [default=3]: Number of agents in each row of the scene
start_coordinate [Vector2d] [default=Vector2d(0.0, -2.0)]: Start spawning robots from the given x and y coordinate
target_separation [Vector2d] [default=Vector2d(4.0, 0.0)]: Distance between the target(dolly) and the robot along x and y coordinates
obstacle_separation [Vector2d] [default=Vector2d(0.0, 5.0)]: Spawn position of the obstacles (walls, blocks, etc) before randomization is applied along x and y coordinates
agent_spawn_randomization [Vector3d] [default=Vector3d(0.0, 0.0, 0.2)]: Randomize the pose of the robot from its center in x, y and angle coordinates This parameter lists the maximum displacement allowed in each of those coordinates
target_spawn_randomization [Vector3d] [default=Vector3d(0.0, 0.0, 0.2)]: Randomize the pose of the target(dolly) from its center in x, y and angle coordinates This parameter lists the maximum displacement allowed in each of those coordinates
obstacle_spawn_randomization [Vector3d] [default=Vector3d(2.0, 2.0, 0.2)]: Randomize the pose of the walls and blocks from their centers in x, y and angle coordinates This parameter lists the maximum displacement allowed in each of those coordinates
obstacle_scale_randomization [Vector3d] [default=Vector3d(0.0, 2.0, 0.0)]: Randomize the scale of the blocks from their original sizes This parameter lists the maximum displacement allowed in the elements of the scale vector
dividing_space [Vector2d] [default=Vector2d(30.0, 35.0)]: Distance between two robot-dolly setups in simulation along x and y coordinate
odometry_codelet_prefix [string] [default=”odometry_”]: DollyDockingBirth expects that each odometry node hosts a single odometry codelet. It assumes the nodes are named in the format odometry_1, odometry_2. …odometry_n. This param sets the prefix for the node name.
pid_codelet_prefix [string] [default=”pid_”]: DollyDockingBirth expects that each controller to hosts a single controller codelet. It assumes the nodes are named in the format pid_1, pid_2. …pid_n. This param sets the prefix for the node name.
isaac.rl.DollyDockingDeath
Description
DollyDockingDeath implements the Death interface. StateMachineGymFlow expects one clone of this codelet for each agent in simulation and evaluates the state of a single agent at every step. It decides whether an agent needs to be killed and respawned. The conditions for the robot dying are : 1. If the robot collides with another object in the scene 2. If the age of the robot is greater than the maximum allowable age 3. If the robot has veered far off from its goal (example, itturned 180 degrees)
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
maximum_age [int] [default=500]: Stores the maximum number of timesteps the robot is allowed to run
x_allowance [Vector2f] [default=Vector2f(-1.0f, 6.0f)]: The maximum allowable distance that the agent can move before getting killed along negative and positive x direction respectively
y_allowance [float] [default=3.5f]: The maximum allowable distance that the agent can move before getting killed along y-direction (on either side)
angle_allowance [float] [default=1.3f]: The maximum allowable radians that the agent can rotate before getting killed on either direction of the axis
isaac.rl.DollyDockingReward
Description
DollyDockingReward implements the Reward interface. StateMachineGymFlow expects one clone of this codelet for each agent in simulation and computes the reward for the robot docking under a dolly task. Rewards are gained by the agent if the action that was performed helped the agent get closer to the center of the target dolly.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
collision_penalty [float] [default=-50.0]: Penalty awarded when the robot collides with the dolly or walls in the scene
success_reward [float] [default=100.0]: Final reward received on reaching the target pose within tolerance limits
reward_clip_range [Vector2f] [default=(Vector2f{-20.0, 20.0})]: Trim the reward values if they exceed this range on both sides of number scale
tolerance [Vector2f] [default=(Vector2f{0.11, 0.085})]: Deltas along the x and y directions from the center of the dolly which are considered to be successful docking end poses
bias [Vector3f] [default=(Vector3f{1.0, 7.5, 10.0})]: Coeffecients for the x-cordinate, y-cordinate and the angle (radians) in the cost equation
ideal_docking_pose [Vector2f] [default=(Vector2f{0.335, 0.0})]: Perfect docking coordinate of the robot with respect to the center of the dolly in (x,y)
isaac.rl.DollyDockingStateDecoder
Description
Forms the state tensor which is the input to the policy neural network. For the dolly navigation task, the input is composed of 1. State of the robot derived from the odometry message (odom_T_robot.x, odom_T_robot.y, odom_T_robot.angle, linear speed, angular speed, linear acceleration, angular acceleration) 2. Observation map for the environment. The expected size of the map is 128 * 128. The observation map is flattened into a one-dimensional tensor of size 16384. The tensor published by the codelet consists of 16391 floats.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
base_state [Odometry2Proto]: Receive odometry data for the robot that forms a part of the input to the policy
local_map [ImageProto]: Receive the observation map for the robot that forms a part of the input to the policy
Outgoing messages
agent_state [TensorProto]: Send the composed agent state to Gym in the form of a one-dimensional tensor by combining the odometry data and the observation map data together
Parameters
use_pose_tree [bool] [default=false]: Specify if the latest pose of the robot should be queried from the pose tree
robot_frame [string] [default=”robot”]: Name of robot’s frame
target_frame [string] [default=”dolly”]: Name of the target frame. Used to convert odom message to robot_T_target information.
isaac.rl.DollyDockingStateNoiser
Description
DollyDockingStateNoiser implements the StateRefiner interface. StateMachineGymFlow expects one clone of this codelet for each agent in simulation. It is responsible for storing a noisy target pose to the dolly (odom_T_target) and post-processes the coordinates from odom_T_robot to robot_T_target.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
target_pose_noise [Vector3f] [default=Vector3f(0.0, 0.0, 0.0)]: Noise to add to the target pose coordinate along th x, y, and angle coordinate during training of the reinforcement learning policy
isaac.rl.StateMachineGymFlow
Description
The Gym Codelet provides a state machine to run reinforcement learning algorithms. For n agents, it expects n Reward codelets, n Death codelets n Birth codelets and optionally n StateRefiner codelets be present in the same node. In the beginning of the state machine, the state machine synchronizes its clock with the simulation clock. Once the clocks are synchronized, it sets the state of all the agents to dead in order to initialize the scene and begins the following cycle 1. Call the spawn() function of the Birth component for each dead agent in simulation 2. Waits till the aggregated state tensor is received from the aggregator along with
auxiliary tensors if present.
Pass the newly received state tensor to Death::is_dead() function that evaluates if the agent is dead for being in an invalid state.
Compute rewards for each agent based on the latest transition
Publish the state of the robots along with rewards, death flags and last action performed as aggregate tensors
Wait till the neural network performs a forward pass by taking in the state tensor to output the action tensor
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
state [TensorProto]: Receive vectorized states of agents after performing action in simulation This channel is typically connected to the TensorAggregator codelet receiving two dimensional tensor from the State Decoders
aux [TensorProto]: Receive auxillary / misc state information from simulator This channel is typically connected to the TensorAggregator codelet receiving two dimensional tensor of size (num_agents, aux_dim) from the Aux Decoders
action [TensorProto]: Receive vectorized actions for agents with tensor of size (num_agents, action_dim) This channel is typically connected to the neural network inference codelet
Outgoing messages
command [TensorProto]: Forwards data received from the rx_action() channel after progressing the state machine
transition_state [TensorProto]: Send latest agent states for the recently concluded transition This channel is typically connected to the TemporalBatching codelet
transition_action [TensorProto]: Send actions that were last performed in the recently concluded transition This channel is typically connected to the TemporalBatching codelet
transition_reward [TensorProto]: Send the rewards obtained by the agents in the recently concluded transition This channel is typically connected to the TemporalBatching codelet
transition_dead [TensorProto]: Send the dead or alive vector for the agents in the recently concluded transition This channel is typically connected to the TemporalBatching codelet
transition_aux [TensorProto]: Send the aux tensor for the agents in the recently concluded transition This channel is typically connected to the TemporalBatching codelet
Parameters
num_agents [int] [default=1]: Specify number of agents in simulation
state_dimension [int] [default=1]: Specify dimensions of the state space for each agent
action_dimension [int] [default=1]: Specify dimensions of the action space for each agent
aux_dimension [int] [default=1]: Specify dimensions of auxillary data per agent
episode_end_flag_index [int] [default=-1]: Specify the index in the auxiliary tensor that contains a flag indicating if an episode has ended. This flag is optional but setting it ensures that when the agents are reset at the end of the episode, they are not penalized in the reward unfairly.
delay_sending [float] [default=2.5]: Delay in seconds before sending first message
reaction_time [float] [default=0.1]: Delay in seconds before simulation reacts
isaac.rl.TemporalBatching
Description
The Temporal Batching codelet performs two distinct functions. First, it sends the state tensor to the neural network policy for inference. To do so, it aggregates the state tensors received over the ‘step’ channel over multiple past ticks into a flattened two dimensional tensor (one row for each agent). This flattened tensor is created by copying the most recent state tensor that was received followed by the state tensor recieved in the timestep before it, and so on. During the first timestep in the life of the agent, or when enough historical tensors are unavailable, the first tensor is repeatedly copied to fill the space in the flattened tensor for that agent. This allows us to create inputs to the neural network composed of past states and actions, not just the current immediate state and action. Second, the codelet is also responsible for populating the sample accumulator. To do so, it deaggreates the two dimensional tensors received from Gym into seperate one dimensional tensors and publishes the states, actions, rewards, and dead flag for each agent individually to the Sample Accumulator. Data sent simultaneously to the sample accumulator is treated as a single tuple. Hence, at every step, the number of tuples published from the Temporal Batching to the Sample Accumulator is equal to the number of agents in simulation.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
step [TensorProto]: Receive 2 dimensional states, one row for each agent transition
action [TensorProto]: Receive 2 dimensional actions, one row for each agent action
reward [TensorProto]: Receive rewards, one cell for each agent
aux [TensorProto]: Receive 2 dimensional aux, one row for each agent transition
dead [TensorProto]: Receive 1 dimensional tensor, one cell for each agent indicating if the agent is dead or alive
Outgoing messages
temporal_tensor [TensorProto]: Publishes the two dimensional state tensor for inference to the neural network. The published state tensor is formed by linearly combining the tensors received on the step channel over multiple past timesteps
state_samples [TensorProto]: Send the current state of the agents to the sample accumulator
last_state_samples [TensorProto]: Send the state of the agents in the last tick to the sample accumulator
reward_samples [TensorProto]: Send the reward obtained by the agents in the current tick to the sample accumulator
action_samples [TensorProto]: Send the actions performed by the agents in the current tick to the sample accumulator
dead_samples [TensorProto]: Send the dead or alive status of the agents in the current tick to the sample accumulator
Parameters
num_agents [int] [default=1]: Specify number of the agents in simulation
look_back [int] [default=1]: Specify the numbers of past steps we should store in our history
reset_interval [int] [default=-1]: Clear the history of all agents based on elapsed number of ticks irrespective of their age If -1, the agent history is only cleared at the death of the agent.
is_connected_to_gym [bool] [default=true]: If the input to the Temporal Batcher is not from StateMachineGymFlow, then ignore all inputs other than the state. This might be useful when deploying to hardware where the StateMachineGymFlow is not needed.
episode_end_flag_index [int] [default=-1]: The StateMachineGymFlow and SequentialGymFlow codelets in Isaac SDK publish a unified tuple (s,a,r,d,aux). This parameter contains the index of the flag in the aux tensor that signifies the end of the episode. When the episode ends and the agent is not dead, the past data still needs to be cleared. If -1, it is assumed that there is no end of episode flag.
isaac.rl.TensorAggregator
Description
Combines an arbitrary number of one-dimensional tensors of the same size into a single two-dimensional tensor. Each message channel represents a single row in the output tensor. The row number of a received 1f tensor within the combined 2f tensor depends on the order in which the channels are connected to this codelet. The channel connected first to this codelet in the application json fills the first row in the combined tensor.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
aggregate_tensor [TensorProto]: Publish the aggregated two-dimensional tensor message
Parameters
wait_till_all_dirty [bool] [default=true]: Block publication of aggregated message until a new tensor is received for each row If false, an aggregate two-dimensional tensor is published every tick with only those rows updated that had new tensor messages on their channels between the ticks.
isaac.rl.TensorDeaggregator
Description
Splits or deaggregates the received two-dimensional tensor into a set of one-dimensional tensors (one tensor per row). Each output message channel represents a single row in the input tensor. The row number of a published 1f tensor within the input 2f tensor depends on the order in which the output channels are connected from this codelet. The output channel connected first from this codelet in the application json will contain the first row extracted from the input tensor.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
aggregate_tensor [TensorProto]: Receives the two-dimensional tensor whose rows need to be published as one-dimensional tensors
- Outgoing messages
- Parameters
(none)
(none)
isaac.rl.TensorToCompositeVelocityProfile
Description
Converts the tensor received from the neural network policy into a Composite. The six elements of the tensor form linear and angular velocity pairs for the next three timesteps. The codelet rescales the elements of the tensor to the desired range and appends a target timestamp to each row of the Composite. The target timestamp signifies the time by which the robot must achieve the controls predicted by the neural network.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
policy [TensorProto]: Receives the output of the neural network as a 1d tensor during training or when conducting inference without a frozen model.
Outgoing messages
velocity_profile [CompositeProto]: Publishes the scaled values of the input tensor as a Composite with timestamps appended to each prediction, signifying velocity targets the low-level controller needs to acheive at those defined timesteps.
Parameters
input_linear_velocity_range [Vector2f] [default=(Vector2f{-0.5, 0.5})]: Range of the values expected from the neural network for linear velocity indices
input_angular_velocity_range [Vector2f] [default=(Vector2f{-0.5, 0.5})]: Range of the values expected from the neural network for angular velocity indices
output_linear_velocity_range [Vector2f] [default=(Vector2f{0.0, 1.0})]: Rescale the received linear velocity indices to this range
output_angular_velocity_range [Vector2f] [default=(Vector2f{-0.5, 0.5})]: Rescale the received angular velocity indices to this range
timestamp_profile [Vector3f] [default=(Vector3f{0.1, 0.4, 0.8})]: Target timesteps to append to each of our three velocity pairs. These timesteps are appended to the tick time of the codelet and form the target timestamp.
isaac.ros_bridge.CameraImageToRos
Description
This codelet receives ColorCameraProto data within Isaac application and publishes it to ROS.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
frame_id [string] [default=”camera”]: This param will populate frame_id in ROS image message. Details at http://docs.ros.org/api/sensor_msgs/html/msg/Image.html
isaac.ros_bridge.CameraInfoToRos
Description
This codelet receives ColorCameraProto data within Isaac application and publishes it to ROS.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
frame_id [string] [default=”camera”]: This param will populate frame_id in ROS CameraInfo message. Details at http://docs.ros.org/api/sensor_msgs/html/msg/CameraInfo.html
isaac.ros_bridge.FlatscanToRos
Description
This codelet receives flatscan data within Isaac application and publishes it to ROS.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
frame_id [string] [default=”base_scan”]: Name of the frame to be used in outgoing message
isaac.ros_bridge.GoalToRos
Description
This codelet receives goal as message within Isaac application and publishes it to ROS as a message. If goal feedback is needed, use similar codelet named “GoalToRosAction” instead.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
goal_frame [string] [default=”map”]: Frame of the goal in outgoing message
robot_frame [string] [default=”base_link”]: Frame of the robot in ROS. Used to stop the robot if needed.
isaac.ros_bridge.GoalToRosAction
Description
This codelet receives goal as message within Isaac application and publishes it to ROS as an action. Unlike the similar codelet named “GoalToRos”, GoalToRosAction then publishes Goal2FeedbackProto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination
odometry [Odometry2Proto]: The odometry information with current speed
Outgoing messages
feedback [Goal2FeedbackProto]: Feedback regarding the goal
Parameters
action_name [string] [default=”move_base”]: ROS namespace where action will be communicated to
goal_frame_ros [string] [default=”map”]: Frame of the goal in outgoing ROS message
robot_frame_ros [string] [default=”base_link”]: Frame of the robot in ROS. Used to stop the robot if needed.
robot_frame_isaac [string] [default=”robot”]: Frame of the robot in Isaac. Used in publishing feedback pose.
stationary_speed_thresholds [Vector2d] [default=Vector2d(0.025, DegToRad(5.0))]: Threshold on speed to determine if the robot is stationary (positional and angular)
isaac.ros_bridge.OdometryToRos
Description
This codelet receives odometry data within Isaac application and publishes it to ROS. This codelet assumes ROS subscriber is respecting https://www.ros.org/reps/rep-0103.html, i.e., x forward y left z up
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
pose_frame [string] [default=”odom”]: Frame of the pose in outgoing message
twist_frame [string] [default=”base_footprint”]: Frame of the twist in outgoing message
isaac.ros_bridge.PosesToRos
Description
For a list of pose mappings, reads pose from Isaac Pose Tree and writes it to ROS tf2. Note that frame definitions between Isaac and ROS may not match, e.g., “map” frame of Isaac and “map” frame of ROS are typically different.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
ros_node [string] [default=”ros_node”]: Name of the Isaac node with RosNode component Needs to be set before the application starts.
pose_mappings [std::vector<IsaacRosPoseMapping>] [default={}]: A json object from configuration containing the poses to read from Isaac Pose Tree and write to
ROS. Left hand side (lhs_frame) corresponds to target_frame in tf2 notation. Right hand side (rhs_frame) corresponds to source_frame in tf2 notation. Layout:
- [
-
- {
-
- {
-
- “isaac_pose”: {
“lhs_frame”: “odom”, “rhs_frame”: “robot”
- },
-
- “ros_pose”: {
“lhs_frame”: “odom”, “rhs_frame”: “base_footprint”
}
}
}
]
isaac.ros_bridge.RosNode
Description
This codelet initializes a ROS node and ticks until roscore is up. Every Isaac application with ROS bridge needs to have one and only one node with a single component of this type. This codelet also provides 1. ros::NodeHandle, which can be used to initialize ROS message subscribers and publishers, 2. checkBeforeInterface() which should be used before carrying ROS operations.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
ros_node_name [string] [default=”isaac_bridge”]: Node name that will appear in ROS node diagram
isaac.ros_bridge.RosToDifferentialBaseCommand
Description
This codelet receives twist message from ROS and publishes it as a velocity command for a differential base robot.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.ros_bridge.RosToImage
Description
ROS’s sensor_msgs/Image.msg message contains uncompressed image. Details:http://docs.ros.org/melodic/api/sensor_msgs/html/msg/Image.html. This ROS bridge converter codelet helps convert ROS’s sensor_msgs/Image.msg into Isaac’s ImageProto Type. This codelet can be used, for example, to use run GPU accelerated perception algorithms of Isaac with ROS images.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.ros_bridge.RosToPoses
Description
For a list of pose mappings, reads pose from ROS tf2 and writes it to Isaac Pose Tree. Note that frame definitions between Isaac and ROS may not match, e.g., “map” frame of Isaac and “map” frame of ROS are typically different.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
ros_node [string] [default=”ros_node”]: Name of the Isaac node with RosNode component Needs to be set before the application starts.
pose_mappings [std::vector<IsaacRosPoseMapping>] [default={}]: A json object from configuration containing the poses to read from Isaac Pose Tree and write to
ROS. Left hand side (lhs_frame) corresponds to target_frame in tf2 notation. Right hand side (rhs_frame) corresponds to source_frame in tf2 notation. Layout:
- [
-
- {
-
- {
-
- “isaac_pose”: {
“lhs_frame”: “odom”, “rhs_frame”: “robot”
- },
-
- “ros_pose”: {
“lhs_frame”: “odom”, “rhs_frame”: “base_footprint”
}
}
}
]
isaac.sight.AliceSight
Description
Interface for sight. Provide a default implementation which does nothing.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.sight.SightWidget
Description
A component which can be used to create a widget for sight.
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
base_frame [string] [default=]: If specified the window will use this frame as the base frame (the frame used as reference when rendering).
static_frame [string] [default=]: If specified the window will use this frame as the static frame (the frame used to synchronize the channel with the base channel).
title [string] [default=]: The caption of the widget. If not specified the component name will be used
type [Type] [default=]: The type of the widget (mandatory). Possible choices are: “2d”, “3d”, “plot”.
dimensions [Vector2i] [default=]: The initial dimensions of the widget. If not specified sight will decide.
channels [std::vector<Channel>] [default={}]: A list of channels to display on the sight widget. Channels have several parameters: * name: The name of the sight channel in the form: node_name/component_name/channel_name * active: If disabled the channel will not be drawn initially when the widget is created
prepend_channel_name_with_app_name [bool] [default=true]: If enabled all channel names are prefixed with the app name.
prepend_title_with_app_name [bool] [default=true]: If enabled the title of the widget will be prefixed with the app name.
enabled [bool] [default=true]: If false, this SightWidget will not create a window in Sight
isaac.sight.WebsightServer
Description
The webSightServer class serves the frontend web visualization. Data is sent over a websocket defined by a predefined API.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
port [int] [default=3000]: Port for the communication between web server and Sight
webroot [string] [default=”packages/sight/webroot”]: Path to the files needed for Sight
assetroot [string] [default=”../isaac_assets”]: Path to assets used by the webpage like for example pictures or robot model.
bandwidth [int] [default=10000000]: Bandwidth to limit the rate of data transfer
use_compression [bool] [default=true]: Whether to compress data for transfer
ui_config [json] [default=(nlohmann::json{{“windows”, {}}})]: Configuration for User Interface (UI)
isaac.skeleton_pose_estimation.OpenPoseDecoder
Description
OpenPoseDecoder converts a tensor from OpenPose-type model into a list of Skeleton models Note: Because a modified OpenPose architecture is used, tensors are not compatible with the original paper.
OpenPose is a popular model architecture that allows 2D pose estimation of keypoints (or “parts”) of articulate and solid objects. Examples of such objects include humans, vehicles, animals, and robotic arms. Only a single type of object is normally supported by the model; however, multiple instances of the object are supported Note: OpenPose performs simultaneous detection and ‘skeleton model’ pose estimation of objects. In the following documentation, ‘objects’, ‘skeleton models’, and ‘skeletons’ may be used. For more information about the model, please refer to https://arxiv.org/pdf/1812.08008.pdf
OpenPoseDecoder takes in a multiple tensors from the Open Pose neural network. Specifically these tensors are used: Part Affinity Fields, Parts Gaussian Heatmaps, and Parts Gaussian Heatmaps MaxPool tensors. It uses Parts Gaussian Heatmaps and Parts Gaussian Heatmaps MaxPool to compute the PeakMap for detecting the potential key points for each object in the frame and outputs these keypoints as the vertex of a graph. The graph edges are made based on prior knowledge of the edges between object parts. It then uses the Part Affinity Fields tensor to make the graph weighted. The weighted graph contains all possible edges between candidates of two parts. Then a greedy algorithm specialized to the task is used to find the optimum edges based on the maximum score that can be obtained from the weights of the graph. It then refines the positions of final keypoints and publishes final graphs as a Skeleton2ListProto message.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
part_affinity_fields [TensorProto]: [0] : part_affinity_fields : PAFLayer = “lambda_2/conv2d_transpose”
gaussian_heatmap [TensorProto]: [1] : gaussian_heatmap : GaussianHeatMapLayer = “lambda_3/tensBlur_depthwise_conv2d”
maxpool_heatmap [TensorProto]: [2] : maxpool_heatmap : MaxPoolGHMLayer = “tensBlur/MaxPool”
Outgoing messages
skeletons [Skeleton2ListProto]: A list of 2D pose estimations of skeleton models for detected objects (list of SkeletonProto). See SkeletonProto for more details.
Parameters
label [string] [default=]: A string to initialize the ‘label’ field of the output SkeletonProto object. It should be set to match the type of object detected by the model (for example ‘human’).
labels [std::vector<std::string>] [default=]: List of strings to use as detected joints labels. For example: [“Elbow”, “Wrist”, …] It is used to initialize the ‘label’ field of skeleton joints. Note, the order and size of this list of labels should match that of the gaussian_heatmap tensor (channels dimension).
edges [std::vector<Vector2i>] [default=]: List of edges to detect (as edges of the skeleton model). Each edge is defined by a pair of indices into the labels array specified by the ‘labels’ parameter. Indices are zero-based. For example [[0, 1], [2, 3]] will define two edges with the first edge “Elbow” - “Wrist”. This list is configured at the training time of the model.
edges_paf [std::vector<Vector2i>] [default=]: List of indices to channels of the part_affinity_fields tensor, to locate components of the parts affinity field. This list is ‘indexed by edge_id’ (so the order and size of this list should match that of the edges parameter. This list is configured at the model training time.
threshold_heatmap [float] [default=]: Peak-map preprocessing threshold. Part-candidates below this threshold are discarded.
threshold_edge_size [float] [default=]: PAF-candidate edge size. Connection-candidates below this threshold are discarded.
threshold_edge_score [float] [default=]: PAF-candidate dot-product threshold. Connection-candidates below this threshold are discarded.
threshold_edge_sampling_counter [int] [default=]: PAF-candidate counter threshold. Connection-candidates below this threshold are discarded. Number of times dot-product was larger than threshold_edge_score during edge_sampling_steps Note, it depends on edge_sampling_steps (should be smaller or equal to edge_sampling_steps).
threshold_part_counter [int] [default=]: Final skeleton detection part counter threshold. Detections with fewer parts are discarded.
threshold_object_score [float] [default=]: Final skeleton detection score threshold. Detections with lower threshold are discarded.
threshold_split_score [float] [default=]: Final skeleton detection split threshold, objects with lower threshold are not merged.
edge_sampling_steps [int] [default=]: Number of sampling steps to calculate line integral over the part affinity field. Note also: threshold_edge_sampling_counter.
refine_parts_coordinates [bool] [default=]: Refine peaks of gaussian heatmap with “weighted coordinates” approach. The gaussian heatmap grid cells of adjacent to the initial peak are used to refine the peak position to get better estimates of parts coordinates. Note, the output of “refined parts coordinates” are floating point subpixel coordinates placed at “grid centers”, rather than integer rows and columns.
output_scale [Vector2d] [default=]: Output scale for the decoded skeleton pose output. For example, this could be the image resolution (before downscaling to fit the network input tensor resolution). The format is [output_scale_rows, output_scale_cols]
isaac.stereo_depth.CoarseToFineStereoDepth
Description
CoarseToFineStereoDepth takes a pair of left and right images as input and infers depth using the NVStereomatcher library. It utilizes CUDA to speed up the computation of depth by running it on the GPU. This codelet also takes in the extrinsics of the camera pair and outputs depth as perceived by the left camera. The NVStereoMatcher library uses RGBA buffers, so RGB images are copied into RGBA buffers before running depth estimation.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
left_image [ColorCameraProto]: RGB input images. Images should be rectified and undistorted prior to being passed in here. RGB input left image
right_image [ColorCameraProto]: RGB input right image
Outgoing messages
left_depth_image [DepthCameraProto]: The inferred depth in meters (from the view of the left camera).
Parameters
baseline [double] [default=0.12]: default baseline for the stereo camera (in meters) if no extrinsics provided
min_depth [double] [default=0.0]: minimum depth of the scene (in meters)
max_depth [double] [default=20.0]: maximum depth of the scene (in meters)
isaac.superpixels.RgbdSuperpixelCostMap
Description
Creates a cost map from superpixels. The cost map is a birdview around the robot where cells are marked with a cost depending on if they are free or blocked.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
superpixels [SuperpixelsProto]: Superpixels used to segment the image
labels [SuperpixelLabelsProto]: Superpixels labels used to label pixels
Outgoing messages
occupancy_map_lattice [LatticeProto]: Cost map computed from obstacle superpixel
occupancy_map [ImageProto]: Cost map computed from obstacle superpixel
Parameters
costmap_frame [string] [default=”costmap”]: The name of the costmap frame
superpixels_frame [string] [default=”superpixels”]: The name of the superpixels frame
clear_radius [int] [default=10]: A small rectangular area around the robot with this radius is always marked as free to prevent the robot from seeing itself.
cell_size [double] [default=0.035]: The size of a cell in the costmap
dimensions [Vector2i] [default=Vector2i(64, 64)]: The dimensions of the costmap
relative_offset [Vector2d] [default=Vector2d(0.125, 0.5)]: The zero position of the costmap frame inside the costmap array
isaac.superpixels.RgbdSuperpixels
Description
Computes fast superpixel clustering for an RGB-D image. This algorithms uses a GPU friendly, single-pass clustering algorithm which assigns every pixel to a local cluster based on similarity in color and depth. Clusters seeds are fixed on the image in a hexagonal pattern.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
color [ColorCameraProto]: Color image used for superpixel computation
depth [DepthCameraProto]: Depth image used for superpixel computation
points [ColorCameraProto]: Pixel points
edges [ColorCameraProto]: Pixel edges
normals [ColorCameraProto]: Pixel normals
Outgoing messages
superpixels [SuperpixelsProto]: The computed superpixels
surflets [CompositeProto]: Computed superpixel surflets as a composite type. Surflets are published as batches. Each surflet has the following information: pixel coordinate, color, point, normal
Parameters
seed_radius [int] [default=1]: Pixel radius over which initial superpixel features are averaged
delta [int] [default=32]: The size of the region of influence of a superpixel
px_expected_point_distance [double] [default=0.04]: Various parameters for superpixel computation
px_expected_normal_distance [double] [default=0.05]:
px_expected_color_distance [double] [default=0.25]:
px_weight_point [double] [default=0.0]:
px_weight_normal [double] [default=0.0]:
px_weight_color [double] [default=3.0]:
sp_expected_point_distance [double] [default=0.17]:
sp_expected_normal_distance [double] [default=0.15]:
sp_expected_color_distance [double] [default=0.27]:
sp_weight_point [double] [default=1.0]:
sp_weight_normal [double] [default=1.0]:
sp_weight_color [double] [default=3.0]:
regularization [double] [default=0.25]:
smoothing [double] [default=1.0]:
use_gpu [bool] [default=true]: If enabled GPU accelerated CUDA kernels are used; otherwise computations are done on CPU.
show_boundaries [bool] [default=true]: If enabled superpixel color visualization will show boundaries. This is slightly slower.
isaac.superpixels.SuperpixelImageLabeling
Description
This component creates a pixel-wise segmentation of the original camera based on a superpixel labeling.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
superpixels [SuperpixelsProto]: Superpixels used to segment the image
labels [SuperpixelLabelsProto]: Superpixels labels used to label pixels
Outgoing messages
segmentation [SegmentationCameraProto]: Computed segmentation which labels every pixel of the original camera image
Parameters
label_invalid [int] [default=2]: The output label for pixels labeled as invalid for example used for pixels with invalid depth, or pixels which are not assigned to a superpixel.
isaac.surflets.MinimumDistanceAssignment
Description
This class derives from Assignment base class and implements minimum distance based assignment from model to measurement. Different distance functions can be provided using surflets_distance variable. Assignment_j = argmin_i(distance(s1_i, s1_D_S2 * s2_j))
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
scale [double] [default=0.5]: Scaling parameter for assignment
isaac.surflets.PointDistance
Description
This class inherits from base component Distance. It implements point to point distance between model and measurement surflets. distance_i = |s1_i - (s1_R_s2 * s2 + s1_P_s2)| ^ 2 distance = sum_j(|s1_a_j - (s1_R_s2 * s2_j + s1_P_s2)| ^ 2) gradient = -2.0 * jacobian(s1_D_s2 * s2_j)T * (s1_a_j - (s1_R_s2 * s2_j + s1_P_s2))
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.surflets.PositionNormalDistance
Description
This class inherits from Distance base class and implements plane normal distance distance_i = |p1_i - s1_D_s2 * p2|^2 + |n1_i - s1_R_s2 * n2|^2 distance = sum_j(|p1_a_j - s1_D_s2 * p2_j|^2 + |n1_a_j - s1_R_s2 * n2_j|^2) gradient = sum_j(-2.0 * jacobian(s1_D_s2 * p2_j)T * (p1_a_j - s1_D_s2 * p2_j)
2.0 * jacobian(s1_R_s2 * n2_j)T * (n1_a_j - s1_R_s2 * n2_j)))
Type: Component - This component does not tick and only provides certain helper functions.
- Incoming messages
- Outgoing messages
- Parameters
(none)
(none)
(none)
isaac.surflets.SurfletMasking
Description
This codelet takes in measurement surflets, object detections and decoder segmentation as input It rectifies the NxN segmentation image into size of detection. It compares if the measurement surflet position is within the detection bounding box and segmentation value is greater than threshold to ensure that the measurement belongs to that object and assigns “1”. If the measurement does not below to object assignment is set to 0.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
surflets [CompositeProto]: Input image superpixels (pixel coordinate)
detections [Detections2Proto]: Input object detections from resnet object detection module
segmentation [TensorProto]: Input segmentation tensor from pose estimation. It has the object segmentation mask as a tensor(detection x 128 x 128)
Outgoing messages
assignment [TensorProto]: Output object association for every image surflet. It contains 0,1. 1’s where the object is and zeros everywhere else. Tensor(dectection x surflets size)
Parameters
threshold [double] [default=0.5]: Threshold for filtering the surflets
isaac.utils.ColorCameraProtoSplitter
Description
Splits a ColorCameraProto into an ImageProto and a PinholeProto. This is a temporary component for deprecating ColorCameraProto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
color_camera [ColorCameraProto]: The incoming message which will be split
Outgoing messages
image [ImageProto]: The image stored in the incoming message
pinhole [PinholeProto]: The pinhole stored in the incoming message
intrinsics [CameraIntrinsicsProto]: The full image intrinsics including pinhole and distortion parameters
Parameters
only_pinhole [bool] [default=true]: If the parameter is set, only the Pinhole image parameters are published. Could be used for undistorted camera frames that have only pinhole parameters.
isaac.utils.CompositeToDifferentialTrajectoryConverter
Description
Converts from composite type to a differential state trajectory in a chosen coordinate frame
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
input_plan [CompositeProto]: Composite message that contains time series of poses and velocities to form the trajectory.
Outgoing messages
output_plan [DifferentialTrajectoryPlanProto]: Output message that contains time series of poses and velocities to form the trajectory.
Parameters
frame [string] [default=]: The desired frame in which to publish the trajectory
isaac.utils.DetectionUnprojection
Description
Takes detections with bounding boxes in pixel coordinates and projects them into robot coordinates to output poses relative to the robot frame.
For a point of interest in camera image, we can get a 3D translation relative to the camera frame using (1) camera intrinsics, (2) depth information, and (3) location on the image. The question is which location to use. For each detection, we have a bounding box. Naive approach would be to pick only the center location. For robustness, we generalize this idea below.
For each detection, we would like to focus around the center of bounding box, because every pixel of bounding box is not going to belong to the object of interest. 2. We get the region of interest (ROI) by shrinking bounding box using roi_scale. 3. Around each of the 4 corners of ROI, we create a small bounding box called unprojection_area. 4. We take average of points (represented in the camera frame) for every pixel of the 4 unprojection_areas to get our final estimate.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth_image [DepthCameraProto]: Input depth image to use to find real-world coordinates of bounding boxes
detections [Detections2Proto]: Bounding box in pixel coordinates and class label of objects in an image
Outgoing messages
detections_with_poses [Detections3Proto]: Output list of detections with their 3D poses populated by this codelet
Parameters
roi_scale [double] [default=0.25]: Scale factor for getting the region of interest (ROI) from detection bounding box. Please see codelet summary above for details.
spread [Vector2i] [default=Vector2i(10, 10)]: In pixels, half dimensions of the unprojection_areas in row and column. Please see codelet summary above for details.
invalid_depth_threshold [double] [default=0.05]: Depth values smaller than this value are considered to be invalid.
isaac.utils.Detections3Filter
Description
Receives detections as message, filters them using parameters, and publishes them as message. It also shows the region of interest for the center of detection in 2D and 3D on Sight. As an example usage, imagine a cart delivery robot. Robot first drives to the pickup area to detect the cart to carry. In case multiple detections are made, the robot would not know which cart to carry. This codelet can help the selection by dropping the carts that are out of region of interest.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections_in [Detections3Proto]: Input list of detections with their 3D poses
Outgoing messages
detections_out [Detections3Proto]: Output list of detections with their 3D poses
Parameters
labels [std::vector<std::string>] [default={}]: If non-empty, only the detections whose label is in this list will pass.
min_confidence [double] [default=0.0]: Detections need at least this confidence to pass.
detection_frame [string] [default=]: Reference frame for the poses in detections message.
roi_frame [string] [default=]: Reference frame for the region of interest (roi). If not set, detection_frame is used.
threshold_translation [Vector3d] [default=]: Only the detections whose pose are within this threshold of roi_frame will be published. Values are (x, y, z).
threshold_rotation [Vector3d] [default=]: Only the detections whose pose are within this threshold of roi_frame will be published. Values are (roll, pitch, yaw).
isaac.utils.DetectionsToPoseTree
Description
Writes received detections to the pose tree. Input is a list of detections with 3D poses. Output is the updated pose tree. Coordinate frame where the detections are made is a parameter to this codelet.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections3Proto]: List of object detections made, potentially by an object detection model using camera
- Outgoing messages
(none)
Parameters
detection_frame [string] [default=]: Frame where detections are made
reference_frame [string] [default=]: Optional frame to use when writing poses to the PoseTree. If not set, detection_frame is used.
label [string] [default=]: If set, we only write detection with this label to the pose tree.
report_success [bool] [default=false]: Whether to report success upon writing to PoseTree
isaac.utils.DifferentialTrajectoryToPlanConverter
Description
Converts a differential state trajectory to a plan in a chosen coordinate frame TODO This should be changed to output a differential trajectory plan proto
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
original_trajectory [DifferentialTrajectoryPlanProto]: The original trajectory in some coordinate frame
Outgoing messages
plan [Plan2Proto]: The computed plan in the desired coordinate frame
Parameters
frame [string] [default=]: The desired frame in which to publish the plan
isaac.utils.FlatscanToPointCloud
Description
Converts a flatscan to a 3D point cloud. This is useful to run point cloud based algorithms on flatscan for example for scan-to-scan matching. In many cases however much more efficient algorithms could be written for the two-dimensional case of a flatscan.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Input flatscan
Outgoing messages
cloud [PointCloudProto]: Output 3D point cloud
- Parameters
(none)
isaac.utils.JoystickConfirmation
Description
Using joystick data received as a message, reports success or failure. A potential use of this codelet is to to test behavior trees that are missing the intermediate steps, e.g., say the application has a sequence behavior: A -> B -> C and say B is not implemented yet. To test the rest of the app, this codelet can be used to manually report success or failure.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
joystick_state [JoystickStateProto]: Joystick state including information about which buttons are pressed
- Outgoing messages
(none)
Parameters
success_button_index [int] [default=6]: When the button with this ID is pressed on the joystick, this codelet reports success. For a PlayStation Dualshock 4 Wireless Controller, this button may correspond to ‘L2’.
failure_button_index [int] [default=7]: When the button with this ID is pressed on the joystick, this codelet reports failure. For a PlayStation Dualshock 4 Wireless Controller, this button may correspond to ‘R2’.
isaac.utils.Plan2Converter
Description
Converts a plan from its current into a chosen coordinate frame
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
original_plan [Plan2Proto]: The original plan in some coordinate frame
Outgoing messages
plan [Plan2Proto]: The computed plan in the desired coordinate frame
Parameters
frame [string] [default=]: The desired frame in which to publish the plan
isaac.utils.Pose2GaussianDistributionEstimation
Description
Estimates mean and covariance distribution parameters from a list of weighted samples for the case of SE(2), i.e. translation and rotation in two-dimensional space.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
samples [Pose2Samples]: A list of samples of Pose2 type
Outgoing messages
mean_and_covariance [Pose2MeanAndCovariance]: Mean and covariance of the received pose samples
Parameters
lhs_frame [string] [default=]: If set the mean will also be written to the pose tree. The name of the target frame is composed from the parameters lhs_frame and rhs_frame as: lhs_frame_T_rhs_frame.
rhs_frame [string] [default=]: See comment for lhs_frame.
isaac.utils.PoseEvaluation
Description
Compares two poses over time and computes various comparison metrics. This can for example be used to measure localization performance by evaluating tracked robot pose against ground truth. The codelets computes results every tick and shows them in sight. It also publishes data in bulk as JSON periodically for further processing.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
samples [JsonProto]: A report consisting of all samples since the last time samples where published. The JSON
is an array where each entry has the following format: {
“reference_T_expected”: [px, py, pa], “reference_T_actual”: [px, py, pa], “pose_delta”: [dx, dy, da], “speed_delta”: [dx, dy, da]
} Here pose_delta is computed as Log(expected_T_ref * reference_T_actual) and speed_delta is Log(actual_prev_T_ref * reference_T_actual) - Log(expected_prev_T_ref * reference_T_expected). Where *_prev indicate the position of a frame at the the previous timestamp. pose_delta measures how well the pose of the two frames match while speed_delta measures how well their speed matches. A frame can match quite well in pose but be very unstable over time.
Parameters
delay [double] [default=0.250]: Errors are computed in the past. This solves potential problems with tick order.
reference_frame [string] [default=]: Reference frame in which the two transformations are compared
expected_frame [string] [default=]: Coordinate frame name of the expected transformation
actual_frame [string] [default=]: Coordinate frame name of the actual transformation
histogram_sample_count [int] [default=100]: Number of samples in the histograms
histogram_linear_resolution [double] [default=0.005]: Position resolution of pose delta and speed delta histograms
histogram_angular_resolution [double] [default=0.0025]: Angular resolution of pose delta and speed delta histograms
batch_size [int] [default=100]: Number of samples to publish per message. If set to 0 no samples will be published
isaac.utils.PoseMonitor
Description
Generates json report per tick for a list of poses as Pose2d, relative to a reference frame. In each tick, as pose is included in the log if it’s available on the pose tree. Input is a list of names for the poses, and the name of the reference frame. Output is the json log including list of pose name to 2d pose.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
report [Json]: The log of poses as json message.
Parameters
reference_frame [string] [default=”world”]: Name of the reference frame.
pose_names [std::vector<std::string>] [default={}]: List of names for the poses to report.
isaac.utils.PoseTreeFeed
Description
Broadcast all pose tree updates as proto messages
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
pose [PoseTreeEdgeProto]: proto edge, including the lhs, rhs, and the pose
- Parameters
(none)
isaac.utils.RigidBodiesToDetections
Description
Receives rigid bodies in 3D and publishes them as detections. This codelet can be used, for example, receiving ground truth information for objects in NavSim and converting this information to imitate object detections to be used in various applications, e.g. Kaya approaching an apple.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
bodies [RigidBody3GroupProto]: Input information regarding rigid bodies in 3D
Outgoing messages
detections [Detections3Proto]: Output list of objects with poses in 3D
Parameters
confidence [double] [default=0.99]: Output detections will have this prediction confidence
isaac.utils.SegmentationCameraProtoSplitter
Description
Splits a SegmentationCameraProtoSplitter into ImageProtos for class and instance labels and into a PinholeProto. This is a temporary component for deprecating SegmentationCameraProto.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segmentation_camera [SegmentationCameraProto]: The incoming message which will be split
Outgoing messages
class_labels [ImageProto]: The class label segmentation image
instance_labels [ImageProto]: The instance label segmentation image
pinhole [PinholeProto]: The pinhole stored in the incoming message
- Parameters
(none)
isaac.utils.SendTextMessages
Description
Publishes text messages one by one from the given list in a loop.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
text_output [ChatMessageProto]: Sends out a single text string periodically.
Parameters
text_list [std::vector<std::string>] [default=]: List of text messages to send
initial_delay [double] [default=0.0]: Delay (in seconds) before publishing the first text message
isaac.utils.WaitUntilDetection
Description
Reports success once an object is detected. Detections are received as messages. This codelet keeps ticking until a message with at least one object detection with desired label is received.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections3Proto]: List of object detections made, potentially by an object detection model using camera
- Outgoing messages
(none)
Parameters
label [string] [default=]: If set, we wait until a detection with this label is made. Otherwise, we report success after any detection.
isaac.velodyne_lidar.VelodyneLidar
Description
A driver for the Velodyne VLP16 Lidar.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
scan [RangeScanProto]: A range scan slice published by the Lidar
Parameters
ip [string] [default=”192.168.2.201”]: The IP address of the Lidar device
port [int] [default=2368]: The port at which the Lidar device publishes data.
type [VelodyneModelType] [default=VelodyneModelType::VLP16]: The type of the Lidar (currently only VLP16 is supported).
isaac.viewers.BinaryMapViewer
Description
Visualizes a binary map with sight. On the one hand it provides a basic visualization which just displays the map as an image in sight. On the other hand it creates an advanced visualization which visualizes the binary map on a camera image or in 3D.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
binary_map [ImageProto]: The binary map to visualize with sight (Image1ub, 0 means free and 255 occupied)
binary_map_lattice [LatticeProto]: Lattice information of the binary map
- Outgoing messages
(none)
Parameters
min_interval [double] [default=0.05]: The minimum time which has to elapse before we publish data to sight again.
smooth_boundary [bool] [default=true]: If enabled boundary and interior visualization will use smooth boundaries
isaac.viewers.ColorCameraViewer
Description
Visualizes a color camera image in sight. This is useful to limit the bandwidth used for visualization.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
color_listener [ColorCameraProto]: 8-bit RGB color camera to visualize
- Outgoing messages
(none)
Parameters
target_fps [double] [default=30.0]: Maximum framerate at which images are displayed in sight.
reduce_scale [int] [default=1]: Reduction factor for image, values greater than one will shrink the image by that factor.
use_png [bool] [default=false]: Renders tensor image as PNG if true, otherwise renders as JPG
camera_name [string] [default=”“]: Frame of the camera (to get the position from the PoseTree)
isaac.viewers.DepthCameraViewer
Description
DepthCameraViewer visualizes a depth camera image in sight. This is useful to limit the bandwidth used for visualization.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
depth_listener [DepthCameraProto]: 32-bit float depth image to visualize
- Outgoing messages
(none)
Parameters
target_fps [double] [default=30.0]: Maximum framerate at which images are displayed in sight
reduce_scale [int] [default=1]: Reduction factor for image, values greater than one will shrink the image by that factor
min_visualization_depth [double] [default=0.0]: Minimum depth in meters used in color grading the depth image for visualization
max_visualization_depth [double] [default=32.0]: Maximum depth in meters used in color grading the depth image for visualization
colormap [std::vector<Vector3i>] [default=]: A color gradient used for depth visualization. The min_visualization_depth gets mapped to the first color, the max gets mapped to last color. Everything else in between gets interpolated.
camera_name [string] [default=”“]: Name of the camera used to get the camera pose from the pose tree (optional)
enable_depth_point_cloud [bool] [default=false]: Enable depth point cloud visualization, can slow down sight if too many points are being drawn
isaac.viewers.Detections3Viewer
Description
Visualize detections with poses in 3D. Unlike DetectionsViewer, where detections are displayed on images, Detections3Viewer shows the locations of detections. This pose information can be potentially supplied by DetectionUnprojection codelet. It provides the choice of rendering in 3D a mesh, a bounding box, or a sphere.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections3Proto]: List of detections with their 3D poses in robot frame
- Outgoing messages
(none)
Parameters
radius [double] [default=]: Radius used when visualizing the detections TODO: Can we get this value from DetectionUnprojection?
mesh_name [string] [default=]: Name of the mesh in sight
object_T_box_center [Pose3d] [default=Pose3d::Identity()]: Position of the center of the bounding box.
box_dimensions [Vector3d] [default=]: Dimensions of the bounding box.
detections_color [Vector4ub] [default=Vector4ub(118, 185, 0, 255)]: Color of the detections
frame [string] [default=]: Reference frame of the detection. TODO(ben): this should come from the Detections3Proto.
isaac.viewers.DetectionsViewer
Description
This codelet shows detections received via message. It can be used to visualize the 2D bounding boxes of detections on an image.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
detections [Detections2Proto]: Bounding box in pixel coordinates and class label of objects in an image
- Outgoing messages
(none)
Parameters
reduce_scale [int] [default=1]: Reduction factor for bounding boxes, values greater than one will shrink the box by that amount. Should match the factor of the image being drawn upon.
border_background_color [Pixel3ub] [default=Colors::Black()]: Background border color for the bounding boxes
border_foreground_color [Pixel3ub] [default=Colors::NvidiaGreen()]: Foreground border color for the bounding boxes
border_background_width [double] [default=4.0]: Background border width for the bounding boxes
border_foreground_width [double] [default=2.0]: Foreground border width for the bounding boxes
font_size [double] [default=30.0]: Foxt size for the class label displayed
textbox_height [double] [default=35.0]: Height of the textbox in which the class label is displayed
minimum_textbox_width [double] [default=80.0]: Minimum width for the textbox. If the bounding box width is greater than this, the textbox width will be set to the bounding box width instead.
enable_labels [bool] [default=true]: If true, displays the text label under each bounding box
isaac.viewers.FiducialsViewer
Description
Receives fiducials and shows them in Sight. Users can provide configurations for specific tags. If no configuration is supplied for a tag, it will be shown with default color with the tag id as a text below it.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
fiducials [FiducialListProto]: The input channel to receive fiducial detections
- Outgoing messages
(none)
Parameters
text_size [double] [default=30.0]: The size of the text used in sight, in pixels (px)
id_specific_configs [Json] [default=Json::object()]: An optional json object for configuring tag visualization for certain tags. Currently supported parameters are “color_fill”, “text_below”, and “text_above”. Color needs to be in a valid JavaScript format, e.g., “#C0C0C0”, “#C0C0C05C”, “rgb(255, 99, 71), or “white”. Here is an example layout:
{
"tag36h11_6": { "text_below": "Metal", "color_fill": "#C0C0C05C" },
"tag36h11_7": { "text_below": "Compost", "color_fill": "#FFA95F5C" },
"tag36h11_8": { "text_below": "Paper", "color_fill": "#F2EECB5C" },
"tag36h11_9": { "text_below": "Paper -->", "text_above": "<-- Metal" }
}
isaac.viewers.FlatscanViewer
Description
Visualizes a flatscan at the estimated position.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
flatscan [FlatscanProto]: Incoming range scan used to localize the robot
- Outgoing messages
(none)
Parameters
beam_skip [int] [default=4]: The number of beams which are skipped for visualization
map [string] [default=”map”]: Map node to use for localization
range_scan_model [string] [default=”shared_robot_model”]: Name of the robot model node
flatscan_frame [string] [default=”lidar”]: Frame which flatscan is defined at
isaac.viewers.GoalViewer
Description
In Sight, shows the goal received as a message using the shape of the robot model.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
goal [Goal2Proto]: The target destination received
- Outgoing messages
(none)
Parameters
robot_model [string] [default=”shared_robot_model”]: Name of the robot model node
isaac.viewers.ImageKeypointViewer
Description
The ImageKeypointViewer visualizes tensors by assigning color randomly to feature id.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
coordinates [TensorProto]: Coordinates for image keypoints
features [TensorProto]: Optional. Image features ids. If received with the same (coordinates) timestamp, feature colors will be selected randomly and be persistent between ticks. Features with the same id will have the same color. If enable_features is not set all features will be rendered with the same color. See the “color” parameter.
- Outgoing messages
(none)
Parameters
enable_features [bool] [default=true]: Enable features RX channel. If it’s enabled, rendering will wait until coordinates and features with the same timestamp are received.
radius [float] [default=3]: Radius in pixel of a circle drawn around every image feature which is visualized in sight.
color [Vector3ub] [default=]: Optional. If it is set then all keypoints will be the same color even if features ids are present.
isaac.viewers.MosaicViewer
Description
Receives tensors on multiple channels, combines them into a mosaic and visualizes them with sight. Each channel is mapped to a fixed panel in the mosaic view. The number of panels is determined by the rx tags in the graph.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
tile_dimensions [Vector2i] [default=Vector2i(360, 640)]: Dimensions of one tile in the mosaic. Images will be resized to fit the tile.
tiles_per_column [int] [default=2]: Number of tiles per row in the mosaic.
margin [int] [default=10]: Number of pixels of the margin for each panel
colormap [std::vector<Vector3ub>] [default=]: List of colors for the margin and text of each panel
isaac.viewers.ObjectViewer
Description
Visualizes object in 3D after reading its pose from the PoseTree. Provides the choice of rendering in 3D a mesh or a bounding box. If such renderings are not required, interactive markers can be used instead to visualize poses of PoseTree.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
frame [string] [default=]: Frame of the object to visualize
mesh_name [string] [default=]: If set, this mesh will be rendered
bounding_box [geometry::BoxD] [default=]: If set, this bounding will be rendered
isaac.viewers.OccupancyMapViewer
Description
Visualizes an occupancy map with sight. It shows both mean and standard deviation in one single image. Areas with high confidence are shown in black or white. Areas with low confidence go towards grey.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
occupancy_map [ImageProto]: The occupancy map to visualize with sight
occupancy_map_lattice [LatticeProto]: The occupancy lattice information about the grid
- Outgoing messages
(none)
Parameters
min_interval [double] [default=0.05]: The minimum time which has to elapse before we publish data to sight again.
isaac.viewers.PointCloudViewer
Description
Visualizes a point cloud in sight. This component is useful to limit the overall bandwidth when displaying a point cloud.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
cloud [PointCloudProto]: The point cloud which will be visualized in sight.
- Outgoing messages
(none)
Parameters
target_fps [double] [default=10.0]: Maximum framerate at which images are displayed in sight.
skip [int] [default=11]: If set to a value greater than 1 points will be skipped. For example skip = 2 will skip half of the points. Use this value to limit the number of points visualized in sight.
max_distance [double] [default=5.0]: Points which have a depth (z-component) greater than this value will be skipped
frame [string] [default=]: The coordinate frame in which the point cloud is visualized.
isaac.viewers.PoseTrailViewer
Description
Visualizes the path over time of a given pose as a 2D line in Sight. The pose trail can be drawn as an overlay over 3D and 2D navigation map views. The pose for visualization is obtained from the Pose Tree.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
- Outgoing messages
(none)
(none)
Parameters
lhs_frame [string] [default=”world”]: Defines the name of the left hand side reference frame of the pose.
rhs_frame [string] [default=”robot”]: Defines the name of the right hand side reference frame of the pose.
trail_count [int] [default=30]: Defines the number of the previous locations included in the pose trail.
trail_time_step [double] [default=0.5]: Defines the time difference between the points shown as part of the trail.
isaac.viewers.SegmentationCameraViewer
Description
Class that receives Segmentation camera information from simulator
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
segmentation_listener [SegmentationCameraProto]: The segmentation_listener object receives 8 bit class, 16 bit instance and class label (string, int pair) information from a SegmentationCameraProto message
- Outgoing messages
(none)
Parameters
target_fps [double] [default=30.0]: Target FPS used to show images to sight, decrease to reduce overall bandwidth needed
reduce_scale [int] [default=1]: Reduction factor for image, values greater than one will shrink the image by that amount
camera_name [string] [default=]: Frame of the camera (to get the position from the PoseTree)
isaac.viewers.SegmentationViewer
Description
Visualizes a pixel-wise segmentation on top of a camera image. This component supports synchronization and transparency overlay.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
color [ColorCameraProto]: The original camera image
segmentation [SegmentationCameraProto]: Pixel-wise image segmentation which is overlayed on top of the camera image
- Outgoing messages
(none)
Parameters
max_fps [double] [default=20.0]: Maximum FPS for show images to sight which can be used to reduce overall bandwidth
reduce_scale [int] [default=2]: Reduction factor for image, values greater than one will shrink the image by that amount
highlight_label [int] [default=0]: The label which will be overlayed on top of the color image.
highlight_color [Pixel3ub] [default=Pixel3ub(255, 255, 255)]: The color which is used to overlay the label.
opacity [double] [default=0.5]: Opacity (0.0: full transparent, 1.0: full overlay) of the overlayed labels
camera_name [string] [default=]: Frame of the camera (to get the position from the PoseTree)
isaac.viewers.SkeletonViewer
Description
This codelet takes in a Skeleton2ListProto message containing a list of skeletons with 2D joint locations. It then visualises the 2D joint locations and connectivity. For better visualisation, SkeletonViewer may draw edges that are different from the prior edges list used by OpenPoseDecoder.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
skeletons [Skeleton2ListProto]: A list of skeleton models.
- Outgoing messages
(none)
Parameters
labels [std::vector<std::string>] [default=]: List of joints labels to render (as joints of the skeleton model). For example: [“Elbow”, “Wrist”, …]
edges_render [std::vector<Vector2i>] [default=]: List of edges to render (as edges of the skeleton model). Each edge is defined by a pair of indices into the labels array specified by the ‘labels’ parameter. Indices are zero-based. For example [[0, 1], [2, 3]] will define two edges with the first edge “Elbow” - “Wrist”.
isaac.viewers.TensorViewer
Description
“Flattens” and colorizes a tensor into an image and visualizes them with sight. Depending on the element type and rank of the tensor different visualization techniques are used.
- Element type:
32-bit floating points are colorized with StarryNightColorGradient using the range specified by the parameter range
32-bit integers are colorized using a standard set of random colors
- Rank:
A rank 1 tensor is reformatted into a rank-2 tensor with tile_columns number of columns. If tile_columns is not specified only a single row will be used.
A rank 2 tensor is visualized directly using its dimensions.
A rank 3 tensor is visualized as stitched slices. Slices are extracted based on the storage order. The tile_columns parameters defines how many tiles are used horizontally for the stitched mosaic.
Tensors with rank 4 or higher are not supported.
Note that dimensions of 1 are ignored, e.g. a 1x1x8 tensor is considered to have rank 1.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
tensor [TensorProto]: A tensor to visualize in sight. Multiple different formats are supported as explained in the class comment.
Outgoing messages
colorized [ImageProto]: The computed image which is shown via sight is also published as a message on this channel.
Parameters
tile_columns [int] [default=]: Number of columns in the resulting mosaic image
rank_3_as_color [bool] [default=false]: If enabled a rank three tensor will be interpreted as a 3-channel RBG image. Otherwise one tile will be generated per channel slices.
storage_order [TensorViewerStorage] [default=TensorViewerStorage::kPlanar]: Defines how a rank 3 tensor is sliced for visualization.
range [Vector2d] [default=Vector2d(0.0, 1.0)]: For floating-point tensors values will be clamped to this range.
render_size [Vector2i] [default=]: Optionally enlarge or shrink the resulting image before visualization with sight.
use_png [bool] [default=false]: Renders tensor image as PNG if true, otherwise renders as JPG
isaac.viewers.TrajectoryListViewer
Description
Visualization channels for trajectories. The component ticks on receiving a collection of trajectories to display. You may use the trajectories channels in compatible 2D or 3D renderers.
Type: Codelet - This component ticks either periodically or when it receives messages.
Incoming messages
trajectories [Vector3TrajectoryListProto]: The input channel to receive all trajectories to be displayed.
- Outgoing messages
(none)
Parameters
renderer_frame [string] [default=”world”]: Renderer frame to transform the trajectories per their respective frames.
isaac.ydlidar.YdLidar
Description
YDLidar X4 is alow cost LIDAR that is popular with hobbyist.
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
flatscan [FlatscanProto]: A flat scan from the LIDAR Average message covers about 0.4 radians and contains 40 measurements Average message publish rate is 120 messages per second
Parameters
device [string] [default=”/dev/ttyUSB0”]: Serial port where device is connected
isaac.zed.ZedImuReader
Description
Publishes IMU readings obtained from a ZED Mini camera Requires a ZedCamera component to exist in the same node
Type: Codelet - This component ticks either periodically or when it receives messages.
- Incoming messages
(none)
Outgoing messages
imu_raw [ImuProto]: IMU data (if available) This is performed on every tick, so IMU poll rate is equal to the codelet tick frequency
Parameters
imu_translation_scaling_factor [double] [default=1.0e3]: ZED SDK <= 2.8.3 has a bug - the reported IMU translation is incorrectly scaled by 1.0e-3 https://github.com/stereolabs/zed-examples/issues/192
imu_frame [string] [default=”zed_imu”]: The IMU frame used to define the left_camera_T_imu transform in the PoseTree