Yuxin ChenZiqi ZhangChunfeng YuanBing LiYing DengWeiming Hu
Graph convolutional networks (GCNs) have been widely used and achieved remarkable results in skeleton-based action recognition. In GCNs, graph topology dominates feature aggregation and therefore is the key to extracting representative features. In this work, we propose a novel Channel-wise Topology Refinement Graph Convolution (CTR-GC) to dynamically learn different topologies and effectively aggregate joint features in different channels for skeleton-based action recognition. The proposed CTR-GC models channel-wise topologies through learning a shared topology as a generic prior for all channels and refining it with channel-specific correlations for each channel. Our refinement method introduces few extra parameters and significantly reduces the difficulty of modeling channel-wise topologies. Furthermore, via reformulating graph convolutions into a unified form, we find that CTR-GC relaxes strict constraints of graph convolutions, leading to stronger representation capability. Combining CTR-GC with temporal modeling modules, we develop a powerful graph convolutional network named CTR-GCN which notably outperforms state-of-the-art methods on the NTU RGB+D, NTU RGB+D 120, and NW-UCLA datasets. 1
Chuankun LiShuai LiYanbo GaoLijuan ZhouWanqing Li
Chuankun LiShuai LiYanbo GaoLijuan ZhouWanqing Li
Guangming ZhuLiang ZhangHongsheng LiPeiyi ShenSyed Afaq Ali ShahMohammed Bennamoun
Ruihao QianJiewen WangJianxiu WangShuang Liang
Xiao‐Wei ZhuQian HuangChang LiLulu WangZhuang Miao