Source code for torchaug.transforms.functional._temporal

# @Copyright: CEA-LIST/DIASI/SIALV/ (2023-    )
# @Author: Julien Denize <julien.denize@cea.fr>
# @License: CECILL-C
#
# Code partially based on Torchvision (BSD 3-Clause License), available at:
#   https://github.com/pytorch/vision

from __future__ import annotations

import torch
import torchvision.transforms.v2.functional as TVF

from torchaug import ta_tensors
from torchaug._utils import _log_api_usage_once

from ._utils._kernel import _get_kernel, _register_kernel_internal


[docs] def uniform_temporal_subsample(inpt: torch.Tensor, num_samples: int) -> torch.Tensor: """See :class:`~torchaug.transforms.UniformTemporalSubsample` for details.""" if torch.jit.is_scripting(): return uniform_temporal_subsample_video(inpt, num_samples=num_samples) _log_api_usage_once(uniform_temporal_subsample) kernel = _get_kernel(uniform_temporal_subsample, type(inpt)) return kernel(inpt, num_samples=num_samples)
@_register_kernel_internal(uniform_temporal_subsample, torch.Tensor) @_register_kernel_internal(uniform_temporal_subsample, ta_tensors.Video) @_register_kernel_internal(uniform_temporal_subsample, ta_tensors.BatchVideos) def uniform_temporal_subsample_video(video: torch.Tensor, num_samples: int) -> torch.Tensor: return TVF.uniform_temporal_subsample_video(video=video, num_samples=num_samples)