2021
DOI: 10.48550/arxiv.2104.09760
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HCMS: Hierarchical and Conditional Modality Selection for Efficient Video Recognition

Zejia Weng,
Zuxuan Wu,
Hengduo Li
et al.

Abstract: Videos are multimodal in nature. Conventional video recognition pipelines typically fuse multimodal features for improved performance. However, this is not only computationally expensive but also neglects the fact that different videos rely on different modalities for predictions. This paper introduces Hierarchical Modality Selection (HMS), a simple yet efficient multimodal learning framework for efficient video recognition. HMS operates on a low-cost modality, i.e., audio clues, by default, and dynamically de… Show more

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