Publication | Closed Access
MM-ViT: Multi-Modal Video Transformer for Compressed Video Action Recognition
118
Citations
70
References
2022
Year
Image AnalysisMachine LearningMachine VisionMultiple ModalitiesPattern RecognitionAvailable ModalitiesVideo Action RecognitionEye TrackingEngineeringComputer ScienceVideo UnderstandingVideo TransformerDeep LearningVideo RetrievalVideo InterpretationComputer VisionMulti-modal Video Transformer
This paper presents a pure transformer-based approach, dubbed the Multi-Modal Video Transformer (MM-ViT), for video action recognition. Different from other schemes which solely utilize the decoded RGB frames, MM-ViT operates exclusively in the compressed video domain and exploits all readily available modalities, i.e., I-frames, motion vectors, residuals and audio waveform. In order to handle the large number of spatiotemporal tokens extracted from multiple modalities, we develop several scalable model variants which factorize self-attention across the space, time and modality dimensions. In addition, to further explore the rich inter-modal interactions and their effects, we develop and compare three distinct cross-modal attention mechanisms that can be seamlessly integrated into the transformer building block. Extensive experiments on three public action recognition benchmarks (UCF-101, Something-Something-v2, Kinetics-600) demonstrate that MM-ViT outperforms the state-of-the-art video transformers in both efficiency and accuracy, and performs better or equally well to the state-of-the-art CNN counterparts with computationally-heavy optical flow.
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