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Application of Computer Vision and Vector Space Model for Tactical Movement Classification in Badminton

机译:计算机视觉和向量空间模型在羽毛球战术动作分类中的应用

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Performance profiling in sports allow evaluating opponents' tactics and the development of counter tactics to gain a competitive advantage. The work presented develops a comprehensive methodology to automate tactical profiling in elite badminton. The proposed approach uses computer vision techniques to automate data gathering from video footage. The image processing algorithm is validated using video footage of the highest level tournaments, including the Olympic Games. The average accuracy of player position detection is 96.03% and 97.09% on the two halves of a badminton court. Next, frequent trajectories of badminton players are extracted and classified according to their tactical relevance. The classification performs at 97.79% accuracy, 97.81% precision, 97.44% recall, and 97.62% F-score. The combination of automated player position detection, frequent trajectory extraction, and the subsequent classification can be used to automatically generate player tactical profiles.
机译:运动中的表现分析可以评估对手的战术并开发反战术以获得竞争优势。提出的工作开发了一种综合方法,可以自动执行精英羽毛球比赛中的战术配置。所提出的方法使用计算机视觉技术来自动化从视频镜头中收集数据。使用包括奥运会在内的最高水平比赛的录像来验证图像处理算法。在羽毛球场的两半上,球员位置检测的平均准确性为96.03 \%和97.09 \%。接下来,根据羽毛球运动员的战术相关性,将其频繁运动的轨迹提取出来并进行分类。分类的执行准确度为97.79%,97.81%,97.44%和97.62%F得分。自动玩家位置检测,频繁轨迹提取和后续分类的组合可用于自动生成玩家战术配置文件。

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