[Feature] Add RandAugment_T to pipelines #2154
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Motivation
While
torchvision.transforms.RandAugment
works effectively for spatial transformations, it does not cover any temporally varying transformations needed for video clips. T. Kim et al. proposedRandAug_T
in their paper, Learning Temporally Invariant and Localizable Features via Data Augmentations, which is an extension oftorchvision.transforms.RandAugment
that, linearly interpolates a random transformation between two magnitudes from the first frame to the last frame in a video clip.Modification
Added
randaugment_utils.py
undermmaction/datasets/pipelines
.Modified
__init__.py
andaugmentations.py
undermmaction/datasets/pipelines
to add new data augmentation,RandAugment_T
.Use cases (Optional)
Sample Use:
Checklist