Sensor-based stroke detection and stroke type classification in table tennis

Peter Blank, Julian Hossbach, D. Schuldhaus, B. Eskofier
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引用次数: 66

Abstract

In this paper we present a sensor-based table tennis stroke detection and classification system. We attached inertial sensors to table tennis rackets and collected data of 8 different basic stroke types from 10 amateur and professional players. Firstly, single strokes were detected by a event detection algorithm. Secondly, features were computed and used as input for stroke type classification. Multiple classifiers were compared regarding classification rates and computational effort. The overall sensitivity of the stroke detection was 95.7% and the best classifier reached a classification rate of 96.7%. Therefore, our presented approach is able to detect table tennis strokes in time-series data and to classify each stroke into correct stroke type categories. The system has the potential to be implemented as an embedded real-time application for other racket sports, to analyze training exercises and competitions, to present match statistics or to support the athletes' training progress. To our knowledge, this is the first paper that addresses a wearable support system for table tennis, and our future work aims at using the presented results to build a complete match analysis system for this sport.
基于传感器的乒乓球击球检测与击球类型分类
本文提出了一种基于传感器的乒乓球击球检测与分类系统。我们将惯性传感器安装在乒乓球拍上,收集了10名业余和职业运动员8种不同基本击球类型的数据。首先,采用事件检测算法检测单笔画;其次,计算特征并将其作为笔划类型分类的输入;比较了多个分类器的分类率和计算量。脑卒中检测的总体灵敏度为95.7%,最佳分类器的分类率为96.7%。因此,我们提出的方法能够检测时间序列数据中的乒乓球击球,并将每个击球分类到正确的击球类型类别中。该系统有潜力成为其他球拍运动的嵌入式实时应用程序,用于分析训练练习和比赛,显示比赛统计数据或支持运动员的训练进度。据我们所知,这是第一篇针对乒乓球可穿戴支持系统的论文,我们未来的工作旨在利用所呈现的结果为这项运动建立一个完整的比赛分析系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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