Video Swin Transformers for Egocentric Video Understanding @ Ego4D Challenges 2022
classification
💻 cs.CV
keywords
videochallengesswinachievedarchitecturebasechangeclassification
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We implemented Video Swin Transformer as a base architecture for the tasks of Point-of-No-Return temporal localization and Object State Change Classification. Our method achieved competitive performance on both challenges.
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