Visual Analytics of Multivariate Event Sequence Data in Racquet Sports

Jiang Wu, Ziyang Guo, Zuobin Wang, Qingyang Xu, Yingcai Wu
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引用次数: 21

Abstract

In this work, we propose a generic visual analytics framework to support tactic analysis based on data collected from racquet sports (such as tennis and badminton). The proposed approach models each rally in a game as a sequence of hits (i.e., events) until one athlete scores a point. Each hit can be described with a set of attributes, such as the positions of the ball and the techniques used to hit the ball (such as drive and volley in tennis). Thus, the mentioned sequence of hits can be viewed as a multivariate event sequence. By detecting and analyzing the multivariate subsequences that frequently occur in the rallies (namely, tactical patterns), athletes can gain insights into the playing styles adopted by their opponents, and therefore help them identify systematic weaknesses of the opponents and develop counter strategies in matches. To support such analysis effectively, we propose a steerable multivariate sequential pattern mining algorithm with adjustable weights over event attributes, such that the domain expert can obtain frequent tactical patterns according to the attributes specified by himself. We also propose a re-configurable glyph design to help users simultaneously analyze multiple attributes of the hits. The framework further supports comparative analysis of the tactical patterns, e.g., for different athletes or the same athlete playing under different conditions. By applying the framework on two datasets collected in tennis and badminton matches, we demonstrate that the system is generic and effective for tactic analysis in sports and can help identify signature techniques used by individual athletes. Finally, we discuss the strengths and limitations of the proposed approach based on the feedback from the domain experts.
球拍运动中多元事件序列数据的可视化分析
在这项工作中,我们提出了一个通用的可视化分析框架,以支持基于从球拍运动(如网球和羽毛球)收集的数据的战术分析。所提出的方法将游戏中的每个回合建模为一系列命中(即事件),直到一名运动员得分。每次击球都可以用一组属性来描述,比如球的位置和击球所用的技术(比如网球中的扣球和截击)。因此,上述命中序列可以看作是一个多变量事件序列。通过检测和分析在比赛中频繁出现的多元子序列(即战术模式),运动员可以深入了解对手的比赛风格,从而帮助他们识别对手的系统弱点,并在比赛中制定应对策略。为了有效地支持这种分析,我们提出了一种可操纵的多变量序列模式挖掘算法,该算法在事件属性上具有可调的权值,使领域专家能够根据自己指定的属性获得频繁的战术模式。我们还提出了一种可重新配置的字形设计,以帮助用户同时分析命中的多个属性。该框架进一步支持战术模式的比较分析,例如,不同运动员或同一运动员在不同条件下的比赛。通过将该框架应用于网球和羽毛球比赛的两个数据集,我们证明了该系统对于体育战术分析是通用的和有效的,并且可以帮助识别个人运动员使用的签名技术。最后,根据领域专家的反馈,讨论了该方法的优点和局限性。
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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