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Kai Liu, Lei Gao 0001, Naimul Mefraz Khan, Lin Qi 0001, Ling Guan. A Multi-Stream Graph Convolutional Networks-Hidden Conditional Random Field Model for Skeleton-Based Action Recognition. IEEE Transactions on Multimedia, 23:64-76, 2021. [doi]
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