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Broaden Your Views for Self-Supervised Video Learning

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arxiv 2103.16559 v3 pith:ISRKYUOU submitted 2021-03-30 cs.CV

Broaden Your Views for Self-Supervised Video Learning

classification cs.CV
keywords videoviewsbravelearningself-supervisedmethodsviewaccess
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most successful self-supervised learning methods are trained to align the representations of two independent views from the data. State-of-the-art methods in video are inspired by image techniques, where these two views are similarly extracted by cropping and augmenting the resulting crop. However, these methods miss a crucial element in the video domain: time. We introduce BraVe, a self-supervised learning framework for video. In BraVe, one of the views has access to a narrow temporal window of the video while the other view has a broad access to the video content. Our models learn to generalise from the narrow view to the general content of the video. Furthermore, BraVe processes the views with different backbones, enabling the use of alternative augmentations or modalities into the broad view such as optical flow, randomly convolved RGB frames, audio or their combinations. We demonstrate that BraVe achieves state-of-the-art results in self-supervised representation learning on standard video and audio classification benchmarks including UCF101, HMDB51, Kinetics, ESC-50 and AudioSet.

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