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A Similarity Indicator for Differentiating Kinematic Performance Between Qualified Tennis Players

机译:用于区分合格网球运动员运动学性能的相似性指标

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This paper presents a data-driven approach to estimate the kinematic performance of tennis players, using kernels to extract a dynamic model of each player from motion capture (MoCap) data. Thus, a metric is introduced in the Reproducing Kernel Hilbert Space in order to compare the similarity between models so that the built kernel enhances groups separability: the baseline reference group and the group including players developing their skills. Validation is carried out on a specially constructed database that contains two main testing actions: serve and forehand strokes (carried out on a tennis court). Besides, the classical kinematic analysis is used to compare our kernel-based approach. Results show that our approach allows better representing the performance for each player regarding the ideal group.
机译:本文介绍了一种数据驱动方法来估计网球播放器的运动学性能,使用内核从运动捕获(Mocap)数据中提取每个玩家的动态模型。因此,在再生内核希尔伯特空间中引入了度量,以便比较模型之间的相似性,以便内置内核增强组可分离性:基线参考组和该组包括开发他们技能的球员。验证在特殊构造的数据库上执行,其中包含两个主要测试操作:服务和正手中行(在网球场进行)。此外,经典运动学分析用于比较基于内核的方法。结果表明,我们的方法允许更好地代表每个玩家对理想组的性能。

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