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Automated Stroke Classification in Tennis

机译:网球中的自动中风分类

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摘要

Stroke recognition in tennis is important for building up statistics of the player and also quickly analyzing the player. It is difficult primarily on account of low resolution, variability in strokes of the same player as well as among players, variations in background, weather and illumination conditions. This paper proposes a technique to automatically classify tennis strokes efficiently under these varying circumstances. We use the geometrical information of the player to classify the strokes. The player is modeled using a color histogram and tracked across the video using histogram back projection. The binarized (segmented) output of the tracker is skeletonized and the gradient information of the skeleton is extracted to form a feature vector. A three class SVM classifier is then used to classify the stroke to be a Forehand, Backhand or Neither. We evaluated the performance of our approach with real world datasets and have obtained promising results. Finally, the proposed approach is real time and can be used with live tennis broadcasts.
机译:网球中的笔画识别对于建立运动员的统计数据并快速分析运动员很重要。主要由于分辨率低,同一玩家的笔画变化以及玩家之间的变化,背景,天气和照明条件的变化而造成困难。本文提出了一种在这些不同情况下自动有效地对网球笔划进行自动分类的技术。我们使用玩家的几何信息对笔划进行分类。使用颜色直方图对播放器建模,并使用直方图反投影在视频中跟踪播放器。对跟踪器的二值化(分段)输出进行骨骼化,并提取骨骼的梯度信息以形成特征向量。然后使用三类SVM分类器将笔划分类为正手,反手或均不。我们用现实世界的数据集评估了该方法的性能,并获得了可喜的结果。最后,所提出的方法是实时的,可以与现场网球广播一起使用。

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