Classification of Gait Anomaly due to Lesion Using Full-Body Gait Motions

Tsuyoshi HIGASHIGUCHI  Toma SHIMOYAMA  Norimichi UKITA  Masayuki KANBARA  Norihiro HAGITA  

Publication
IEICE TRANSACTIONS on Information and Systems   Vol.E100-D   No.4   pp.874-881
Publication Date: 2017/04/01
Online ISSN: 1745-1361
Type of Manuscript: PAPER
Category: Image Recognition, Computer Vision
Keyword: 
gait motion,  full-body motion,  lesioned part,  3D human skeleton,  

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Summary: 
This paper proposes a method for evaluating a physical gait motion based on a 3D human skeleton measured by a depth sensor. While similar methods measure and evaluate the motion of only a part of interest (e.g., knee), the proposed method comprehensively evaluates the motion of the full body. The gait motions with a variety of physical disabilities due to lesioned body parts are recorded and modeled in advance for gait anomaly detection. This detection is achieved by finding lesioned parts a set of pose features extracted from gait sequences. In experiments, the proposed features extracted from the full body allowed us to identify where a subject was injured with 83.1% accuracy by using the model optimized for the individual. The superiority of the full-body features was validated in in contrast to local features extracted from only a body part of interest (77.1% by lower-body features and 65% by upper-body features). Furthermore, the effectiveness of the proposed full-body features was also validated with single universal model used for all subjects; 55.2%, 44.7%, and 35.5% by the full-body, lower-body, and upper-body features, respectively.