A Fast Sub-Volume Search Method for Human Action Detection

Ping GUO, Zhenjiang MIAO, Xiao-Ping ZHANG, Zhe WANG
2012 IEICE transactions on information and systems  
This paper discusses the task of human action detection. It requires not only classifying what type the action of interest is, but also finding actions' spatial-temporal locations in a video. The novelty of this paper lies on two significant aspects. One is to introduce a new graph based representation for the search space in a video. The other is to propose a novel sub-volume search method by Minimum Cycle detection. The proposed method has a low computation complexity while maintaining a high
more » ... action detection accuracy. It is evaluated on two challenging datasets which are captured in cluttered backgrounds. The proposed approach outperforms other state-of-the-art methods in most situations in terms of both Precision-Recall values and running speeds.
doi:10.1587/transinf.e95.d.285 fatcat:yjaztlbmujevtdjriazoufocnu