pastanet
PaStaNet: Toward Human Activity Knowledge Engine
Li, Yong-Lu, Xu, Liang, Liu, Xinpeng, Huang, Xijie, Xu, Yue, Wang, Shiyi, Fang, Hao-Shu, Ma, Ze, Chen, Mingyang, Lu, Cewu
Existing image-based activity understanding methods mainly adopt direct mapping, i.e. from image to activity concepts, which may encounter performance bottleneck since the huge gap. In light of this, we propose a new path: infer human part states first and then reason out the activities based on part-level semantics. Human Body Part States (PaSta) are fine-grained action semantic tokens, e.g.