Class-incremental learning for action recognition in videos

J Park, M Kang, B Han - Proceedings of the IEEE/CVF …, 2021 - openaccess.thecvf.com
Proceedings of the IEEE/CVF international conference on …, 2021openaccess.thecvf.com
We tackle catastrophic forgetting problem in the context of class-incremental learning for
video recognition, which has not been explored actively despite the popularity of continual
learning. Our framework addresses this challenging task by introducing time-channel
importance maps and exploiting the importance maps for learning the representations of
incoming examples via knowledge distillation. We also incorporate a regularization scheme
in our objective function, which encourages individual features obtained from different time …
Abstract
We tackle catastrophic forgetting problem in the context of class-incremental learning for video recognition, which has not been explored actively despite the popularity of continual learning. Our framework addresses this challenging task by introducing time-channel importance maps and exploiting the importance maps for learning the representations of incoming examples via knowledge distillation. We also incorporate a regularization scheme in our objective function, which encourages individual features obtained from different time steps in a video to be uncorrelated and eventually improves accuracy by alleviating catastrophic forgetting. We evaluate the proposed approach on brand-new splits of class-incremental action recognition benchmarks constructed upon the UCF101, HMDB51, and Something-Something V2 datasets, and demonstrate the effectiveness of our algorithm in comparison to the existing continual learning methods that are originally designed for image data.
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