3.8 Proceedings Paper

Dynamic Multiscale Graph Neural Networks for 3D Skeleton-Based Human Motion Prediction

Publisher

IEEE
DOI: 10.1109/CVPR42600.2020.00029

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Funding

  1. National Key Research and Development Program of China [2019YFB1804304]
  2. SHEITC [2018-RGZN02046]
  3. NSFC [61521062]
  4. 111 plan [B07022]
  5. STCSM [18DZ2270700]

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We propose novel dynamic multiscale graph neural networks (DMGNN) to predict 3D skeleton-based human motions. The core idea of DMGNN is to use a multiscale graph to comprehensively model the internal relations of a human body for motion feature learning. This multiscale graph is adaptive during training and dynamic across network layers. Based on this graph, we propose a multiscale graph computational unit (MGCU) to extract features at individual scales and fuse features across scales. The entire model is action-category-agnostic and follows an encoder-decoder framework. The encoder consists of a sequence of MGCUs to learn motion features. The decoder uses a proposed graph-based gate recurrent unit to generate future poses. Extensive experiments show that the proposed DMGNN outperforms state-of-the-art methods in both short and long-term predictions on the datasets of Human 3.6M and CMU Mocap. We further investigate the learned multiscale graphs for the interpretability. The codes could be downloaded from https://github.com/limaosen0/DMGNN.

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