Predicting Shot Locations in Tennis Using Spatiotemporal Data

Xinyu Wei, P. Lucey, S. Morgan, S. Sridharan
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引用次数: 32

Abstract

Over the past decade, vision-based tracking systems have been successfully deployed in professional sports such as tennis and cricket for enhanced broadcast visualizations as well as aiding umpiring decisions. Despite the high-level of accuracy of the tracking systems and the sheer volume of spatiotemporal data they generate, the use of this high quality data for quantitative player performance and prediction has been lacking. In this paper, we present a method which predicts the location of a future shot based on the spatiotemporal parameters of the incoming shots (i.e. shot speed, location, angle and feet location) from such a vision system. Having the ability to accurately predict future short-term events has enormous implications in the area of automatic sports broadcasting in addition to coaching and commentary domains. Using Hawk-Eye data from the 2012 Australian Open Men's draw, we utilize a Dynamic Bayesian Network to model player behaviors and use an online model adaptation method to match the player's behavior to enhance shot predictability. To show the utility of our approach, we analyze the shot predictability of the top 3 players seeds in the tournament (Djokovic, Federer and Nadal) as they played the most amounts of games.
利用时空数据预测网球击球位置
在过去的十年中,基于视觉的跟踪系统已经成功地应用于网球和板球等职业运动中,以增强转播的可视化效果,并帮助裁判做出决定。尽管追踪系统的精确度很高,它们产生的时空数据量也很大,但这种高质量数据在量化球员表现和预测方面的使用一直很缺乏。在本文中,我们提出了一种基于该视觉系统中入射投篮的时空参数(即投篮速度、位置、角度和脚位置)来预测未来投篮位置的方法。除了教练和解说领域外,拥有准确预测未来短期事件的能力在自动体育广播领域具有巨大的意义。利用2012年澳大利亚网球公开赛男子抽签的鹰眼数据,我们利用动态贝叶斯网络对球员行为建模,并使用在线模型自适应方法对球员的行为进行匹配,以提高击球的可预测性。为了展示我们的方法的实用性,我们分析了比赛中排名前三的种子选手(德约科维奇,费德勒和纳达尔)的击球可预测性,因为他们打了最多的比赛。
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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