DSSD with TAO Deploy#
To generate an optimized TensorRT engine for DSSD, the gen_trt_engine action takes an ONNX
file previously produced by the DSSD export action. For more information about training the
DSSD, refer to the DSSD training documentation.
Converting an .onnx File into TensorRT Engine#
You can reuse the spec from the DSSD export action as a starting point.
Note
When generating a TensorRT engine for a model trained with QAT enabled, the tensor
scale factors defined by the calibration cache file are required. However, the current
version of QAT does not natively support DLA int8 deployment on Jetson. To deploy this model
on a Jetson with DLA int8, force post-training quantization to generate the calibration
cache file.
Ask the agent to run the gen_trt_engine action against your spec. For example:
Build an INT8 TensorRT engine for DSSD from the exported ONNX at
``s3://my-bucket/dssd/model.onnx`` using ``trt-spec.yaml``. Calibrate
against ``s3://my-bucket/dssd/cal-images/`` and write the engine to
``s3://my-bucket/dssd/int8.engine``. Run on the local Docker backend.
Running Evaluation through TensorRT Engine#
Use the same specification file as the TAO evaluation specification file. The following is a sample specification file:
eval_config {
batch_size: 8
matching_iou_threshold: 0.5
}
nms_config {
confidence_threshold: 0.001
}
augmentation_config {
output_width: 1248
output_height: 384
output_channel: 3
}
dataset_config {
validation_data_sources: {
image_directory_path: "/workspace/tao-experiments/data/val/images"
label_directory_path: "/workspace/tao-experiments/data/val/labels"
}
image_extension: "png"
target_class_mapping {
key: "car"
value: "car"
}
target_class_mapping {
key: "pedestrian"
value: "pedestrian"
}
target_class_mapping {
key: "cyclist"
value: "cyclist"
}
target_class_mapping {
key: "van"
value: "car"
}
target_class_mapping {
key: "person_sitting"
value: "pedestrian"
}
validation_fold: 0
}
Ask the agent to run the evaluate action against the engine you built. For example:
Evaluate the DSSD TensorRT engine at ``s3://my-bucket/dssd/int8.engine``
against ``eval-spec.yaml``. Run on local Docker.
Running Inference through TensorRT Engine#
Ask the agent to run the inference action against the engine you built. For example:
Run DSSD inference with the TensorRT engine at
``s3://my-bucket/dssd/int8.engine`` using ``infer-spec.yaml``. Run on
your chosen backend.
Annotated visualizations are written to images_annotated under the configured results
directory, and KITTI-format predictions are written to labels.