Feature Extraction and Data Analysis of Basketball Motion Postures: Acquisition With an Inertial Sensor

Author:

Li Zhuqing1

Affiliation:

1. Wanjiang College, Anhui Normal University, No. 171, Jiuhua North Road, Wuhu, Anhui 241008, China

Abstract

Abstract This paper mainly analyzed the application of inertial sensors in basketball posture analysis. The data of 20 basketball players in different postures were collected by Micro-electromechanical systems inertial sensors. The mean, variance, and skewness were taken as features to compare the performance of C4.5, random forest (RF), k-nearest neighbor, and support vector machine (SVM) algorithms in analyzing posture data. It was found that the classification accuracy of the k-nearest neighbor algorithm was around 90%, and the classification accuracy of C4.5, RF, and SVM algorithms was all above 90%. The classification accuracy of the RF algorithm was the highest (98.72%), which was significantly higher than C4.5 and SVM algorithms. The results verified the advantages of the RF algorithm in basketball posture analysis. The research results confirm the reliability of the inertial sensor in the field of motion posture analysis and make some contributions to its application in sport training. This paper provides support for the analysis of motion posture.

Publisher

ASME International

Subject

General Earth and Planetary Sciences,General Environmental Science

Reference17 articles.

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