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Shot Detection in Racket Sport Video at the Frame Level Using A Recurrent Neural Network

机译:使用递归神经网络的球拍运动视频帧级镜头检测

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In recent years, there has been a demand in the sports industry to reduce the burden of data collection and video editing for tactical analysis. To achieve these, a system that can recognize the game context is needed. In this study, we proposed a method to identify the player's shot timing at the frame level during a ball-striking sport. In this study, players' shots were detected in video of a tennis match. It was shown that shots could be detected with an F-score value of 87% or more within an error range of 1 frame (0.033 sec) by considering time-series information using a recurrent neural network. This technology is expected to be applied not only to tennis, but also to other sports that involve ball shots, such as table tennis, baseball, and volleyball. At the same time, it can be used to detect moments of a specific action (for example, touching or hitting an object).
机译:近年来,体育行业中一直需要减少用于战术分析的数据收集和视频编辑的负担。为了实现这些,需要一种能够识别游戏环境的系统。在这项研究中,我们提出了一种在击球运动中识别球员在框框上的射门计时的方法。在这项研究中,在网球比赛的视频中检测到了球员的投篮。结果表明,通过使用递归神经网络考虑时间序列信息,可以在1帧(0.033秒)的误差范围内检测到F分数为87%或更高的镜头。预计该技术不仅将应用于网球,而且还将应用于涉及击球的其他运动,例如乒乓球,棒球和排球。同时,它可以用于检测特定动作的时刻(例如,触摸或敲击物体)。

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