Analysis of Students' Sports Exercise Behavior and Health Education Strategy Using Visual Perception-Motion Recognition Algorithm

作者全名:"Chen, Minwei; Zhou, Yunzheng"

作者地址:"[Chen, Minwei] Chongqing Univ, Coll Phys Educ, Chongqing, Peoples R China; [Zhou, Yunzheng] Chongqing Med Univ, Coll Phys Educ & Phys Med, Chongqing, Peoples R China"

通信作者:"Chen, MW (通讯作者),Chongqing Univ, Coll Phys Educ, Chongqing, Peoples R China."

来源:FRONTIERS IN PSYCHOLOGY

ESI学科分类:PSYCHIATRY/PSYCHOLOGY

WOS号:WOS:000802965900001

JCR分区:Q1

影响因子:3.8

年份:2022

卷号:13

期号: 

开始页: 

结束页: 

文献类型:Article

关键词:health education; vision sensing; skeleton recognition; artificial intelligence algorithm; Hidden Markov Model

摘要:"This study aims to explore the future development path of the college health education and health education's impact on students' sports exercise. Specifically, artificial intelligence (AI) algorithm is combined with intelligent robotics technology to acquire and analyze students' sports exercise behaviors. As a result, a new development model is formulated for college health education. First, it explores students' sports exercise and health education situation in Chinese higher institutions and uncovers the underlying problems. Then it puts forward the corresponding modification suggestions. Second, the AI algorithm and the Kinect sensor-mounted intelligent robot capture the human skeleton features to obtain smooth skeleton joint points data. At the same time, a visual perception human motion recognition (HMR) algorithm is established based on the Hidden Markov Model (HMM). Afterward, the proposed HMM-based HMR algorithm is used to recognize students' sports exercise motions by analyzing human motion skeleton images. The experimental outcomes suggest that the maximum reconstruction error of the HMR algorithm is 10 mm, and the compression ratio is between 5 and 10; the HMR rate is more than 96%. Compared with similar algorithms, the proposed visual perception HMR algorithm depends less on the number of training samples. It can achieve a high recognition rate given only a relatively few samples. Therefore, the proposed (AI + intelligent robot)-enabled HMM-based HMR algorithm can effectively identify the behavior characteristics of students in sports exercise. This study can provide a reference for exploring college students' health education development path."

基金机构: 

基金资助正文: