TennisMaster: an IMU-based online serve performance evaluation system

Disheng Yang, Jian Tang, Yang Huang, Chaonan Xu, Jinyang Li, Liang Hu, G. Shen, C. Liang, Hengchang Liu
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引用次数: 23

Abstract

Tennis sport has become more popular all over the world in recent years. While tennis lovers wish to improve their tennis skill set for better performance, unfortunately only few of them could be guided under professional training. Especially, serve is probably the most important skill in tennis skill set. In this paper, we present TennisMaster, an online diagnosis and feedback system, that aims at performing online assessment of tennis serve during the training process using IMU sensors. In particular, we propose a hierarchical evaluation approach based on the fusion of two IMU sensors mounted on the racket and shank of the player. In order to achieve online serve assessment, we first develop an online serve extraction algorithm to identify the serve segments and filter the non-serve events. Then we use Hidden Markov Model (HMM) to segment the serve process into eight stages. By extracting unique features on the basis of the serve segmentation, we build a regression model which outputs the score of a serve. We conduct experiments to collect 1,030 serves involving 12 subjects at various professional levels. Evaluation results show that our system achieves high accuracy of performance assessment for tennis serves.
TennisMaster:基于imu的在线发球性能评估系统
近年来,网球运动在全世界越来越受欢迎。虽然网球爱好者希望提高自己的网球技术,以取得更好的成绩,但遗憾的是,只有少数人能得到专业培训的指导。特别是,发球可能是网球技术组合中最重要的技术。在本文中,我们介绍了TennisMaster,一个在线诊断和反馈系统,旨在使用IMU传感器在训练过程中对网球发球进行在线评估。特别是,我们提出了一种基于两个IMU传感器融合的分层评估方法,该传感器安装在球员的球拍和腿上。为了实现在线发球评估,我们首先开发了一种在线发球提取算法来识别发球段并过滤非发球事件。然后利用隐马尔可夫模型(HMM)将服务过程划分为8个阶段。通过在发球分割的基础上提取唯一特征,建立回归模型,输出发球得分。我们进行了实验,收集了1030份服务,涉及12名不同专业水平的受试者。评价结果表明,该系统对网球发球动作的评价具有较高的准确性。
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