4.7 Article

Memory Attention Networks for Skeleton-Based Action Recognition

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2021.3061115

关键词

Skeleton; Spatiotemporal phenomena; Convolution; Feature extraction; Computer architecture; Collaboration; Learning systems; Collaborative memory fusion module (CMFM); memory attention networks (MANs); skeleton-based action recognition; spatiotemporal convolution module (STCM); temporal attention recalibration module

资金

  1. Natural Science Foundation of China [62076016, 61972016, 61601466]
  2. Open Projects Program of National Laboratory of Pattern Recognition
  3. Shenzhen Science and Technology Program [KQTD2016112515134654, 2019JZZY011101]
  4. Key Research and Development Program of Shandong Province

向作者/读者索取更多资源

A new method named memory attention networks (MANs) is proposed to address the complex variations of skeleton joints in 3-D spatiotemporal space for action recognition. By using the temporal attention recalibration module (TARM) and spatiotemporal convolution module (STCM), and introducing the collaborative memory fusion module (CMFM), the performance is significantly improved.
Skeleton-based action recognition has been extensively studied, but it remains an unsolved problem because of the complex variations of skeleton joints in 3-D spatiotemporal space. To handle this issue, we propose a newly temporal-then-spatial recalibration method named memory attention networks (MANs) and deploy MANs using the temporal attention recalibration module (TARM) and spatiotemporal convolution module (STCM). In the TARM, a novel temporal attention mechanism is built based on residual learning to recalibrate frames of skeleton data temporally. In the STCM, the recalibrated sequence is transformed or encoded as the input of CNNs to further model the spatiotemporal information of skeleton sequence. Based on MANs, a new collaborative memory fusion module (CMFM) is proposed to further improve the efficiency, leading to the collaborative MANs (C-MANs), trained with two streams of base MANs. TARM, STCM, and CMFM form a single network seamlessly and enable the whole network to be trained in an end-to-end fashion. Comparing with the state-of-the-art methods, MANs and C-MANs improve the performance significantly and achieve the best results on six data sets for action recognition. The source code has been made publicly available at https://github.com/memory-attention-networks.

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