Large-Scale Analysis of Formations in Soccer

Xinyu Wei, Long Sha, P. Lucey, S. Morgan, S. Sridharan
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引用次数: 65

Abstract

Due to the demand for better and deeper analysis in sports, organizations (both professional teams and broadcasters) are looking to use spatiotemporal data in the form of player tracking information to obtain an advantage over their competitors. However, due to the large volume of data, its unstructured nature, and lack of associated team activity labels (e.g. strategic/tactical), effective and efficient strategies to deal with such data have yet to be deployed. A bottleneck restricting such solutions is the lack of a suitable representation (i.e. ordering of players) which is immune to the potentially infinite number of possible permutations of player orderings, in addition to the high dimensionality of temporal signal (e.g. a game of soccer last for 90 mins). Leveraging a recent method which utilizes a "role-representation", as well as a feature reduction strategy that uses a spatiotemporal bilinear basis model to form a compact spatiotemporal representation. Using this representation, we find the most likely formation patterns of a team associated with match events across nearly 14 hours of continuous player and ball tracking data in soccer. Additionally, we show that we can accurately segment a match into distinct game phases and detect highlights. (i.e. shots, corners, free-kicks, etc) completely automatically using a decision-tree formulation.
足球阵型的大规模分析
由于对更好和更深入的体育分析的需求,组织(包括职业球队和广播公司)正在寻求以球员跟踪信息的形式使用时空数据,以获得优于竞争对手的优势。然而,由于数据量大,其非结构化的性质,以及缺乏相关的团队活动标签(例如战略/战术),有效和高效的策略来处理这些数据尚未部署。限制这种解决方案的瓶颈是缺乏合适的表示(即球员排序),除了时间信号的高维性(例如一场足球比赛持续90分钟)之外,它还不受球员排序的潜在无限可能排列的影响。利用最近的一种利用“角色表示”的方法,以及一种使用时空双线性基模型形成紧凑时空表示的特征约简策略。使用这种表示,我们在近14个小时的连续足球球员和球跟踪数据中找到了与比赛事件相关的最可能的球队阵型模式。此外,我们证明了我们可以准确地将一场比赛分割成不同的比赛阶段并检测出亮点。(如射门,角球,任意球等)完全自动使用决策树公式。
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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