论文标题
SocCermap:足球视觉障碍分析的深度学习体系结构
SoccerMap: A Deep Learning Architecture for Visually-Interpretable Analysis in Soccer
论文作者
论文摘要
我们提出了一个完全卷积的神经网络结构,该结构能够估算来自高频时空数据的足球潜在传球的完全概率表面。该网络将接收低级输入的层,并学习一个特征层次结构,该层次结构以不同的采样级别产生预测,从而捕获了粗空间细节。通过合并这些预测,我们可以在任何游戏情况下产生视觉上富的概率表面,这使教练可以对球员的定位和决策进行精细分析,这是运动中尚未探索的领域。我们显示,该网络在估计成功概率方面的性能非常出色,并介绍如何轻松地适应其他两个具有挑战性的问题:估计通行证可能性的估计和通行证期望值的预测。我们的方法为学习完整的预测表面提供了一种新颖的解决方案,当时仅具有单像素的对应关系和预测的概率图。这种体系结构的灵活性使其适应足球中各种实际问题。我们还提供了一组实际的应用程序,包括评估球员级别的传球风险,确定最佳潜在传球选项以及团队之间传球趋势的差异。
We present a fully convolutional neural network architecture that is capable of estimating full probability surfaces of potential passes in soccer, derived from high-frequency spatiotemporal data. The network receives layers of low-level inputs and learns a feature hierarchy that produces predictions at different sampling levels, capturing both coarse and fine spatial details. By merging these predictions, we can produce visually-rich probability surfaces for any game situation that allows coaches to develop a fine-grained analysis of players' positioning and decision-making, an as-yet little-explored area in sports. We show the network can perform remarkably well in the estimation of pass success probability, and present how it can be adapted easily to approach two other challenging problems: the estimation of pass-selection likelihood and the prediction of the expected value of a pass. Our approach provides a novel solution for learning a full prediction surface when there is only a single-pixel correspondence between ground-truth outcomes and the predicted probability map. The flexibility of this architecture allows its adaptation to a great variety of practical problems in soccer. We also present a set of practical applications, including the evaluation of passing risk at a player level, the identification of the best potential passing options, and the differentiation of passing tendencies between teams.