4.7 Article

Associated Spatio-Temporal Capsule Network for Gait Recognition

Journal

IEEE TRANSACTIONS ON MULTIMEDIA
Volume 24, Issue -, Pages 846-860

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2021.3060280

Keywords

Feature extraction; Gait recognition; Data mining; Legged locomotion; Heuristic algorithms; Data models; Biological system modeling; Associated capsules; capsule network; gait recognition; multi-sensor; spatio-temporal

Funding

  1. National Key Research and Development Plan Key Special Projects [2018YFB2100303]
  2. Shandong Province Colleges and Universities Youth Innovation Technology Plan Innovation Team Project [2020KJN011]
  3. Shandong Provincial Natural Science Foundation [ZR2020MF060]
  4. Program for Innovative Postdoctoral Talents in Shandong Province [40618030001]
  5. National Natural Science Foundation of China [61802216]
  6. Postdoctoral Science Foundation of China [2018M642613]

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This study establishes an automated learning system for gait recognition using multi-sensor datasets and ASTCapsNet, and validates its effectiveness on various public datasets.
It is a challenging task to identify a person based on her/his gait patterns. State-of-the-art approaches rely on the analysis of temporal or spatial characteristics of gait, and gait recognition is usually performed on single modality data (such as images, skeleton joint coordinates, or force signals). Evidence has shown that using multi-modality data is more conducive to gait research. Therefore, we here establish an automated learning system, with an associated spatio-temporal capsule network (ASTCapsNet) trained on multi-sensor datasets, to analyze multimodal information for gait recognition. Specifically, we first design a low-level feature extractor and a high-level feature extractor for spatio-temporal feature extraction of gait with a novel recurrent memory unit and a relationship layer. Subsequently, a Bayesian model is employed for the decision-making of class labels. Extensive experiments on several public datasets (normal and abnormal gait) validate the effectiveness of the proposed ASTCapsNet, compared against several state-of-the-art methods.

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