nvidia.dali.fn.experimental.resize#
- nvidia.dali.fn.experimental.resize(__input, /, *, antialias=True, bytes_per_sample_hint=[0], dtype=None, interp_type=DALIInterpType.INTERP_LINEAR, mag_filter=DALIInterpType.INTERP_LINEAR, max_size=None, min_filter=DALIInterpType.INTERP_LINEAR, minibatch_size=32, mode='default', preserve=False, resize_longer=0.0, resize_shorter=0.0, resize_x=0.0, resize_y=0.0, resize_z=0.0, roi_end=None, roi_relative=False, roi_start=None, save_attrs=False, seed=-1, size=None, subpixel_scale=True, temp_buffer_hint=0, device=None, name=None)#
Resize images.
This operator allows sequence inputs and supports volumetric data.
- Supported backends
‘gpu’
- Parameters:
__input (TensorList ('HWC', 'FHWC', 'CHW', 'FCHW', 'CFHW', 'DHWC', 'FDHWC', 'CDHW', 'FCDHW', 'CFDHW')) – Input to the operator.
- Keyword Arguments:
antialias (bool, optional, default = True) –
If enabled, it applies an antialiasing filter when scaling down.
Note
Nearest neighbor interpolation does not support antialiasing.
bytes_per_sample_hint (int or list of int, optional, default = [0]) –
Output size hint, in bytes per sample.
If specified, the operator’s outputs residing in GPU or page-locked host memory will be preallocated to accommodate a batch of samples of this size.
dtype (
nvidia.dali.types.DALIDataType
, optional) –Output data type.
Must be same as input type or
float
. If not set, input type is used.image_type (
nvidia.dali.types.DALIImageType
) –Warning
The argument
image_type
is no longer used and will be removed in a future release.interp_type (
nvidia.dali.types.DALIInterpType
or TensorList ofnvidia.dali.types.DALIInterpType
, optional, default = DALIInterpType.INTERP_LINEAR) –Type of interpolation to be used.
Use
min_filter
andmag_filter
to specify different filtering for downscaling and upscaling.Note
Usage of INTERP_TRIANGULAR is now deprecated and it should be replaced by a combination of
INTERP_LINEAR with
antialias
enabled.mag_filter (
nvidia.dali.types.DALIInterpType
or TensorList ofnvidia.dali.types.DALIInterpType
, optional, default = DALIInterpType.INTERP_LINEAR) – Filter used when scaling up.max_size (float or list of float, optional) –
Limit of the output size.
When the operator is configured to keep aspect ratio and only the smaller dimension is specified, the other(s) can grow very large. This can happen when using
resize_shorter
argument or “not_smaller” mode or when some extents are left unspecified.This parameter puts a limit to how big the output can become. This value can be specified per-axis or uniformly for all axes.
Note
When used with “not_smaller” mode or
resize_shorter
argument,max_size
takes precedence and the aspect ratio is kept - for example, resizing withmode="not_smaller", size=800, max_size=1400
an image of size 1200x600 would be resized to 1400x700.min_filter (
nvidia.dali.types.DALIInterpType
or TensorList ofnvidia.dali.types.DALIInterpType
, optional, default = DALIInterpType.INTERP_LINEAR) – Filter used when scaling down.minibatch_size (int, optional, default = 32) – Maximum number of images that are processed in a kernel call.
mode (str, optional, default = ‘default’) –
Resize mode.
Here is a list of supported modes:
"default"
- image is resized to the specified size.Missing extents are scaled with the average scale of the provided ones."stretch"
- image is resized to the specified size.Missing extents are not scaled at all."not_larger"
- image is resized, keeping the aspect ratio, so that no extent of the output image exceeds the specified size.For example, a 1280x720, with a desired output size of 640x480, actually produces a 640x360 output."not_smaller"
- image is resized, keeping the aspect ratio, so that no extent of the output image is smaller than specified.For example, a 640x480 image with a desired output size of 1920x1080, actually produces a 1920x1440 output.This argument is mutually exclusive with
resize_longer
andresize_shorter
preserve (bool, optional, default = False) – Prevents the operator from being removed from the graph even if its outputs are not used.
resize_longer (float or TensorList of float, optional, default = 0.0) –
The length of the longer dimension of the resized image.
This option is mutually exclusive with
resize_shorter
and explicit size arguments, and the operator keeps the aspect ratio of the original image. This option is equivalent to specifying the same size for all dimensions andmode="not_larger"
.resize_shorter (float or TensorList of float, optional, default = 0.0) –
The length of the shorter dimension of the resized image.
This option is mutually exclusive with
resize_longer
and explicit size arguments, and the operator keeps the aspect ratio of the original image. This option is equivalent to specifying the same size for all dimensions andmode="not_smaller"
. The longer dimension can be bounded by setting themax_size
argument. Seemax_size
argument doc for more info.resize_x (float or TensorList of float, optional, default = 0.0) –
The length of the X dimension of the resized image.
This option is mutually exclusive with
resize_shorter
,resize_longer
andsize
. If theresize_y
is unspecified or 0, the operator keeps the aspect ratio of the original image. A negative value flips the image.resize_y (float or TensorList of float, optional, default = 0.0) –
The length of the Y dimension of the resized image.
This option is mutually exclusive with
resize_shorter
,resize_longer
andsize
. If theresize_x
is unspecified or 0, the operator keeps the aspect ratio of the original image. A negative value flips the image.resize_z (float or TensorList of float, optional, default = 0.0) –
The length of the Z dimension of the resized volume.
This option is mutually exclusive with
resize_shorter
,resize_longer
andsize
. If theresize_x
andresize_y
are left unspecified or 0, then the op will keep the aspect ratio of the original volume. Negative value flips the volume.roi_end (float or list of float or TensorList of float, optional) –
End of the input region of interest (ROI).
Must be specified together with
roi_start
. The coordinates follow the tensor shape order, which is the same assize
. The coordinates can be either absolute (in pixels, which is the default) or relative (0..1), depending on the value ofrelative_roi
argument. If the ROI origin is greater than the ROI end in any dimension, the region is flipped in that dimension.roi_relative (bool, optional, default = False) – If true, ROI coordinates are relative to the input size, where 0 denotes top/left and 1 denotes bottom/right
roi_start (float or list of float or TensorList of float, optional) –
Origin of the input region of interest (ROI).
Must be specified together with
roi_end
. The coordinates follow the tensor shape order, which is the same assize
. The coordinates can be either absolute (in pixels, which is the default) or relative (0..1), depending on the value ofrelative_roi
argument. If the ROI origin is greater than the ROI end in any dimension, the region is flipped in that dimension.save_attrs (bool, optional, default = False) – Save reshape attributes for testing.
seed (int, optional, default = -1) –
Random seed.
If not provided, it will be populated based on the global seed of the pipeline.
size (float or list of float or TensorList of float, optional) –
The desired output size.
Must be a list/tuple with one entry per spatial dimension, excluding video frames and channels. Dimensions with a 0 extent are treated as absent, and the output size will be calculated based on other extents and
mode
argument.subpixel_scale (bool, optional, default = True) –
If True, fractional sizes, directly specified or calculated, will cause the input ROI to be adjusted to keep the scale factor.
Otherwise, the scale factor will be adjusted so that the source image maps to the rounded output size.
temp_buffer_hint (int, optional, default = 0) –
Initial size in bytes, of a temporary buffer for resampling.
Note
This argument is ignored for the CPU variant.