Just a Glimpse: Rethinking Temporal Information for Video Continual Learning

CoRR(2023)

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摘要
Class-incremental learning is one of the most important settings for the study of Continual Learning, as it closely resembles real-world application scenarios. With constrained memory sizes, catastrophic forgetting arises as the number of classes/tasks increases. Studying continual learning in the video domain poses even more challenges, as video data contains a large number of frames, which places a higher burden on the replay memory. The current common practice is to sub-sample frames from the video stream and store them in the replay memory. In this paper, we propose SMILE a novel replay mechanism for effective video continual learning based on individual/single frames. Through extensive experimentation, we show that under extreme memory constraints, video diversity plays a more significant role than temporal information. Therefore, our method focuses on learning from a small number of frames that represent a large number of unique videos. On three representative video datasets, Kinetics, UCF101, and ActivityNet, the proposed method achieves state-of-the-art performance, outperforming the previous state-of-the-art by up to 21.49%.
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关键词
catastrophic forgetting,class-incremental learning,constrained memory sizes,current common practice,effective video continual,extreme memory constraints,important settings,novel replay mechanism,real-world application scenarios,replay memory,representative video datasets,sub-sample frames,temporal information,unique videos,video Continual Learning,video data,video diversity,video domain,video stream
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