UCF101-DS (UCF101 Distribution Shift)

Introduced by Schiappa et al. in Large-scale Robustness Analysis of Video Action Recognition Models

Existing benchmark datasets in real-world distribution shifts are generally synthetically generated via augmentations to simulate real-world shifts such as weather and camera rotation. The UCF101-DS dataset consists of real-world distribution shifts from user-generated videos without synthetic augmentation. It has videos for 47 UCF-101 classes with 63 different distribution shifts that can be categorized into 15 categories. A total of 536 unique videos split into a total of 4,708 clips. Each clip ranges from 7 to 10 seconds long.

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