Look, Listen and Pay More Attention: Fusing Multi-Modal Information for Video Violence Detection
Donglai Wei, Chengeng Liu, Yang Liu, Jing Liu, Xiaoguang Zhu, Xinhua Zeng
Abstract
Violence detection is an essential and challenging problem in the computer vision community. Most existing works focus on single modal data analysis, which is not effective when multi-modality is available. Therefore, we propose a two-stage multi-modal information fusion method for violence detection: 1) the first stage adopts multiple instance learning strategies to refine video-level hard labels into clip-level soft labels, and 2) the next stage uses multi-modal information fused attention module to achieve fusion, and supervised learning is carried out using the soft labels generated at the first stage. Extensive empirical evidence on the XD-Violence dataset shows that our method outperforms the state-of-the-art methods.