论文标题

球员接下来会在哪里移动?羽毛球中的动态图和运动预测的分层融合

Where Will Players Move Next? Dynamic Graphs and Hierarchical Fusion for Movement Forecasting in Badminton

论文作者

Chang, Kai-Shiang, Wang, Wei-Yao, Peng, Wen-Chih

论文摘要

体育分析引起了人们越来越多的关注,因为对各种数据的分析使培训策略,球员评估等的见解。在本文中,我们专注于预测将进行哪种类型的返回笔触,并且玩家将根据先前的笔触而转向。由于迄今为止尚未解决此问题,因此可以通过基于序列的模型来解决运动预测,以作为序列预测任务来解决。但是,现有的基于序列的模型忽略了玩家之间相互作用的效果,基于图的模型仍然对下一个运动的多方面角度遭受。此外,没有关于代表玩家射击类型和运动中战略关系的现有工作。为了应对这些挑战,我们首先介绍玩家运动(PM)图的过程,以利用战略关系的玩家的结构运动。基于PM图,我们提出了一个新颖的动态图和用于运动预测模型(DYMF)的层次融合,以捕获玩家本身以及在集会中的玩家之间的相互作用,以及跨时间的动态玩家的策略。此外,分层融合模块旨在结合玩家和拉力赛互动的风格影响。广泛的实验表明,我们的模型在经验上比基于序列和图形的方法均优于基于序列的方法,并证明了运动预测的实际用法。

Sports analytics has captured increasing attention since analysis of the various data enables insights for training strategies, player evaluation, etc. In this paper, we focus on predicting what types of returning strokes will be made, and where players will move to based on previous strokes. As this problem has not been addressed to date, movement forecasting can be tackled through sequence-based and graph-based models by formulating as a sequence prediction task. However, existing sequence-based models neglect the effects of interactions between players, and graph-based models still suffer from multifaceted perspectives on the next movement. Moreover, there is no existing work on representing strategic relations among players' shot types and movements. To address these challenges, we first introduce the procedure of the Player Movements (PM) graph to exploit the structural movements of players with strategic relations. Based on the PM graph, we propose a novel Dynamic Graphs and Hierarchical Fusion for Movement Forecasting model (DyMF) with interaction style extractors to capture the mutual interactions of players themselves and between both players within a rally, and dynamic players' tactics across time. In addition, hierarchical fusion modules are designed to incorporate the style influence of both players and rally interactions. Extensive experiments show that our model empirically outperforms both sequence- and graph-based methods and demonstrate the practical usage of movement forecasting.

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