网球击球分类:比较手腕和球拍作为IMU传感器位置

Christopher Ebner, R. Findling
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引用次数: 7

摘要

自动识别网球击球可以帮助网球运动员提高他们的训练体验。以往的工作中,传感器的位置包括手腕和网球拍,不同的生理方面带来不同的传感能力。然而,目前还没有对这两个职位的表现进行比较。在本文中,我们比较评估了手腕和球拍传感器的位置用于网球击球检测和分类。我们研究了8种已知的冲程类型的检测和分类率,并可视化了它们在3D加速度和角速度方面的差异。我们的笔画检测利用阈值和窗对感知加速度导数的峰值检测,而对于我们的笔画识别,我们评估不同的特征集和分类模型。尽管腕部和球拍作为传感器位置的生理方面有所不同,但在受控环境下,结果表明在中风检测(98.5%-99.5%)和用户依赖和独立分类(89%-99%)方面的性能相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tennis Stroke Classification: Comparing Wrist and Racket as IMU Sensor Position
Automatic tennis stroke recognition can help tennis players improve their training experience. Previous work has used sensors positions on both wrist and tennis racket, of which different physiological aspects bring different sensing capabilities. However, no comparison of the performance of both positions has been done yet. In this paper we comparatively assess wrist and racket sensor positions for tennis stroke detection and classification. We investigate detection and classification rates with 8 well-known stroke types and visualize their differences in 3D acceleration and angular velocity. Our stroke detection utilizes a peak detection with thresholding and windowing on the derivative of sensed acceleration, while for our stroke recognition we evaluate different feature sets and classification models. Despite the different physiological aspects of wrist and racket as sensor position, for a controlled environment results indicate similar performance in both stroke detection (98.5%-99.5%) and user-dependent and independent classification (89%-99%).
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