1. Topology Learning by Context Embedding and Channel Refinement for Skeletal Behavior Recognition
- Author
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Tongchi Zhou, Lu Li, Lixiang Chen, Yanzhao Wang, Zhongyun Liu, Jiahao Liu, and Liangfeng Sun
- Subjects
Short-term context ,multi-channel ,cross-correlation ,behavior recognition ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
Skeletal behavior recognition provides a valuable method to understand the intricacies of human action and can handle the semantic gap relationships between physical constraints and intention. Although several studies have focused on graph convolutional network (GCN) based skeletal models, less attention has been paid to consider multiple channel together with short-term context for learning adjacent matrices. To address this problem, we present a learning framework with three branches, named context embedding and channel refinement topology learning network, which models the node pairs and inter-frame relationships, and refines channels to improve the ability of expression. Specifically, for the first branch, a learnable adjacent matrix and skeletal data are grouped, and channel groups based GCN are built to encode skeletal features and provide complementary for the other two submodules. For the second branch, after channel squeezing, context embedding-based cross-correlation and channel refinement are adopted to learn informative but compact adjacent matrices for node pairs. Inter-frame relationships, which serve as the third branch, are learnt by self, cross-correlation and fusion strategies. To the best of our knowledge, the proposed method obtains better experimental results, with accuracies of 97.05%, 92.02.0%, 88.72%, and 90.45% for NTU RGB+D 60 X-view, X-sub, NTU RGB+D 120 X-sub, and X-set, respectively.
- Published
- 2024
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