Code underlying the publication: "Video BagNet: short temporal receptive fields increase robustness in long-term action recognition"

Code underlying the publication: "Video BagNet: short temporal receptive fields increase robustness in long-term action recognition"

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Previous work on long-term video action recognition relies on deep 3D-convolutional models that have a large temporal receptive field (RF). We argue that these models are not always the best choice for temporal modeling in videos. A large temporal receptive field allows the model to encode the exact sub-action order of a video, which causes a performance decrease when testing videos have a different sub-action order. In this work, we investigate whether we can improve the model robustness to the sub-action order by shrinking the temporal receptive field of action recognition models. For this, we design Video BagNet, a variant of the 3D ResNet-50 model with the temporal receptive field size limited to 1, 9, 17 or 33 frames. We analyze Video Bag-Net on synthetic and real-world video datasets and experimentally compare models with varying temporal receptive fields. We find that short receptive fields are robust to sub-action order changes, while larger temporal receptive fields are sensitive to the sub-action order. In this repository, we provide our code, including the implementation of Video Bag-Net.

Logo of Code underlying the publication: "Video BagNet: short temporal receptive fields increase robustness in long-term action recognition"
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  • Python 97%
  • Markdown 2%
  • XML 1%
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  • CC0-1.0
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