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Learning Graph Convolutional Network for Skeleton-based Human Action Recognition by Neural Searching

About

Human action recognition from skeleton data, fueled by the Graph Convolutional Network (GCN), has attracted lots of attention, due to its powerful capability of modeling non-Euclidean structure data. However, many existing GCN methods provide a pre-defined graph and fix it through the entire network, which can loss implicit joint correlations. Besides, the mainstream spectral GCN is approximated by one-order hop, thus higher-order connections are not well involved. Therefore, huge efforts are required to explore a better GCN architecture. To address these problems, we turn to Neural Architecture Search (NAS) and propose the first automatically designed GCN for skeleton-based action recognition. Specifically, we enrich the search space by providing multiple dynamic graph modules after fully exploring the spatial-temporal correlations between nodes. Besides, we introduce multiple-hop modules and expect to break the limitation of representational capacity caused by one-order approximation. Moreover, a sampling- and memory-efficient evolution strategy is proposed to search an optimal architecture for this task. The resulted architecture proves the effectiveness of the higher-order approximation and the dynamic graph modeling mechanism with temporal interactions, which is barely discussed before. To evaluate the performance of the searched model, we conduct extensive experiments on two very large scaled datasets and the results show that our model gets the state-of-the-art results.

Wei Peng, Xiaopeng Hong, Haoyu Chen, Guoying Zhao• 2019

Related benchmarks

TaskDatasetResultRank
Action RecognitionNTU RGB+D (Cross-View)
Accuracy95.7
609
Action RecognitionNTU RGB+D 60 (Cross-View)
Accuracy95.7
575
Action RecognitionNTU RGB+D (Cross-subject)
Accuracy89.4
474
Action RecognitionNTU RGB+D 60 (X-sub)--
467
Action RecognitionNTU RGB-D Cross-Subject 60
Accuracy89.4
305
Skeleton-based Action RecognitionNTU 60 (X-sub)
Accuracy89.4
220
Skeleton-based Action RecognitionNTU RGB+D (Cross-View)
Accuracy95.7
213
Action RecognitionNTU RGB+D X-View 60
Accuracy95.7
172
Skeleton-based Action RecognitionNTU RGB+D 60 (X-View)
Top-1 Accuracy95.7
126
Skeleton-based Action RecognitionNTU RGB+D (Cross-subject)
Accuracy89.4
123
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