Skeleton-Based Action Recognition With Shift Graph ...
spatial graph convolution and temporal graph convolution. For spatial graph convolution, the neighbor set of joints is defined as an adjacent matrix A ∈ {0,1}N×N. To spec-ify the spatial location of graph convolution, the adjacent matrix is typically partitioned into 3 partitions: 1) the cen-tripetal group, which contains neighboring nodes ...
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