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Journal Article

Citation

Sun B, Zhang Z, Liu X, Hu B, Zhu T. Gait Posture 2017; 58: 428-432.

Affiliation

Institute of Psychology, Chinese Academy of Sciences, Beijing, China. Electronic address: tszhu@psych.ac.cn.

Copyright

(Copyright © 2017, Elsevier Publishing)

DOI

10.1016/j.gaitpost.2017.09.001

PMID

28910655

Abstract

BACKGROUND: Self-esteem is an important aspect of individual's mental health. When subjects are not able to complete self-report questionnaire, behavioral assessment will be a good supplement. In this paper, we propose to use gait data collected by Kinect as an indicator to recognize self-esteem.

METHODS: 178 graduate students without disabilities participate in our study. Firstly, all participants complete the 10-item Rosenberg Self-Esteem Scale (RSS) to acquire self-esteem score. After completing the RRS, each participant walks for two minutes naturally on a rectangular red carpet, and the gait data are recorded using Kinect sensor. After data preprocessing, we extract a few behavioral features to train predicting model by machine learning. Based on these features, we build predicting models to recognize self-esteem.

RESULTS: For self-esteem prediction, the best correlation coefficient between predicted score and self-report score is 0.45 (p<0.001). We divide the participants according to gender, and for males, the correlation coefficient is 0.43 (p<0.001), for females, it is 0.59 (p<0.001).

CONCLUSION: Using gait data captured by Kinect sensor, we find that the gait pattern could be used to recognize self-esteem with a fairly good criterion validity. The gait predicting model can be taken as a good supplementary method to measure self-esteem.

Copyright © 2017 Elsevier B.V. All rights reserved.


Language: en

Keywords

Behavioral assessment; Gait pattern; Kinect; Machine learning; Self-esteem

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