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Autori principali: Al-Saad, Mohammad, Ramaswamy, Lakshmish, Bhandarkar, Suchendra
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2401.08609
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author Al-Saad, Mohammad
Ramaswamy, Lakshmish
Bhandarkar, Suchendra
author_facet Al-Saad, Mohammad
Ramaswamy, Lakshmish
Bhandarkar, Suchendra
contents Recent studies have shown that video-level representation learning is crucial to the capture and understanding of the long-range temporal structure for video action recognition. Most existing 3D convolutional neural network (CNN)-based methods for video-level representation learning are clip-based and focus only on short-term motion and appearances. These CNN-based methods lack the capacity to incorporate and model the long-range spatiotemporal representation of the underlying video and ignore the long-range video-level context during training. In this study, we propose a factorized 4D CNN architecture with attention (F4D) that is capable of learning more effective, finer-grained, long-term spatiotemporal video representations. We demonstrate that the proposed F4D architecture yields significant performance improvements over the conventional 2D, and 3D CNN architectures proposed in the literature. Experiment evaluation on five action recognition benchmark datasets, i.e., Something-Something-v1, SomethingSomething-v2, Kinetics-400, UCF101, and HMDB51 demonstrate the effectiveness of the proposed F4D network architecture for video-level action recognition.
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publishDate 2023
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spellingShingle F4D: Factorized 4D Convolutional Neural Network for Efficient Video-level Representation Learning
Al-Saad, Mohammad
Ramaswamy, Lakshmish
Bhandarkar, Suchendra
Computer Vision and Pattern Recognition
Recent studies have shown that video-level representation learning is crucial to the capture and understanding of the long-range temporal structure for video action recognition. Most existing 3D convolutional neural network (CNN)-based methods for video-level representation learning are clip-based and focus only on short-term motion and appearances. These CNN-based methods lack the capacity to incorporate and model the long-range spatiotemporal representation of the underlying video and ignore the long-range video-level context during training. In this study, we propose a factorized 4D CNN architecture with attention (F4D) that is capable of learning more effective, finer-grained, long-term spatiotemporal video representations. We demonstrate that the proposed F4D architecture yields significant performance improvements over the conventional 2D, and 3D CNN architectures proposed in the literature. Experiment evaluation on five action recognition benchmark datasets, i.e., Something-Something-v1, SomethingSomething-v2, Kinetics-400, UCF101, and HMDB51 demonstrate the effectiveness of the proposed F4D network architecture for video-level action recognition.
title F4D: Factorized 4D Convolutional Neural Network for Efficient Video-level Representation Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2401.08609