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Hierarchical Graph Convolutional Skeleton Transformer for Action Recognition

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arxiv 2109.02860 v4 pith:GXGR6M6U submitted 2021-09-07 cs.CV cs.AI

Hierarchical Graph Convolutional Skeleton Transformer for Action Recognition

classification cs.CV cs.AI
keywords graphspatiotemporaltransformerconvolutionalglobalhgctlocalaction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Graph convolutional networks (GCNs) have emerged as dominant methods for skeleton-based action recognition. However, they still suffer from two problems, namely, neighborhood constraints and entangled spatiotemporal feature representations. Most studies have focused on improving the design of graph topology to solve the first problem but they have yet to fully explore the latter. In this work, we design a disentangled spatiotemporal transformer (DSTT) block to overcome the above limitations of GCNs in three steps: (i) feature disentanglement for spatiotemporal decomposition;(ii) global spatiotemporal attention for capturing correlations in the global context; and (iii) local information enhancement for utilizing more local information. Thereon, we propose a novel architecture, named Hierarchical Graph Convolutional skeleton Transformer (HGCT), to employ the complementary advantages of GCN (i.e., local topology, temporal dynamics and hierarchy) and Transformer (i.e., global context and dynamic attention). HGCT is lightweight and computationally efficient. Quantitative analysis demonstrates the superiority and good interpretability of HGCT.

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