Static and Dynamic Features Analysis from Human Skeletons for Gait Recognition

2021 IEEE International Joint Conference on Biometrics (IJCB)(2021)

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摘要
Gait recognition is an effective way to identify a person due to its non-contact and long-distance acquisition. In addition, the length of human limbs and the motion pattern of human from human skeletons have been proved to be effective features for gait recognition. However, the length of human limbs and motion pattern are calculated through human prior knowledge, more important or detailed information may be missing. Our method proposes to obtain the dynamic information and static information from human skeletons through disentanglement learning. In the experiments, it has been shown that the features extracted by our method are effective.
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关键词
feature extraction,disentanglement learning,noncontact acquisition,static feature analysis,dynamic feature analysis,human limbs,long-distance acquisition,gait recognition,human skeletons,static information,dynamic information,human prior knowledge,motion pattern
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