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利用机器学习管道预测足球比赛中的进入进攻区。

Using machine learning pipeline to predict entry into the attack zone in football.

机构信息

School of Technology, University of Campinas, Limeira, São Paulo, Brazil.

Brazilian Synchrotron Light Laboratory (LNLS), Brazilian Center for Research in Energy and Materials (CNPEM), Campinas, São Paulo, Brazil.

出版信息

PLoS One. 2023 Jan 18;18(1):e0265372. doi: 10.1371/journal.pone.0265372. eCollection 2023.

Abstract

Sports sciences are increasingly data-intensive nowadays since computational tools can extract information from large amounts of data and derive insights from athlete performances during the competition. This paper addresses a performance prediction problem in soccer, a popular collective sport modality played by two teams competing against each other in the same field. In a soccer game, teams score points by placing the ball into the opponent's goal and the winner is the team with the highest count of goals. Retaining possession of the ball is one key to success, but it is not enough since a team needs to score to achieve victory, which requires an offensive toward the opponent's goal. The focus of this work is to determine if analyzing the first five seconds after the control of the ball is taken by one of the teams provides enough information to determine whether the ball will reach the final quarter of the soccer field, therefore creating a goal-scoring chance. By doing so, we can further investigate which conditions increase strategic leverage. Our approach comprises modeling players' interactions as graph structures and extracting metrics from these structures. These metrics, when combined, form time series that we encode in two-dimensional representations of visual rhythms, allowing feature extraction through deep convolutional networks, coupled with a classifier to predict the outcome (whether the final quarter of the field is reached). The results indicate that offensive play near the adversary penalty area can be predicted by looking at the first five seconds. Finally, the explainability of our models reveals the main metrics along with its contributions for the final inference result, which corroborates other studies found in the literature for soccer match analysis.

摘要

如今,运动科学越来越依赖数据,因为计算工具可以从大量数据中提取信息,并从运动员在比赛中的表现中得出洞察。本文解决了足球中的一个表现预测问题,足球是一种流行的集体运动模式,由两支队伍在同一场地相互竞争。在足球比赛中,球队通过将球踢进对方球门得分,得分最高的球队获胜。保持控球是成功的关键之一,但这还不够,因为球队需要进球才能获胜,这需要向对方球门发起进攻。这项工作的重点是确定分析球队控制球后的前五秒钟是否提供了足够的信息来确定球是否会到达足球场地的最后四分之一,从而创造进球机会。通过这样做,我们可以进一步研究哪些条件可以增加战略优势。我们的方法包括将球员的相互作用建模为图结构,并从这些结构中提取指标。这些指标组合在一起形成时间序列,我们将其编码为视觉节奏的二维表示形式,通过深度卷积网络进行特征提取,并结合分类器来预测结果(是否到达场地的最后四分之一)。结果表明,可以通过观察前五秒钟来预测进攻方在对方禁区附近的比赛情况。最后,我们的模型可解释性揭示了主要指标及其对最终推断结果的贡献,这与文献中其他关于足球比赛分析的研究结果相符。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3fdf/9847968/789ebd465858/pone.0265372.g001.jpg

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