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Convolutional Neural Networks Based Ball Detection in Tennis Games

机译:基于卷积神经网络的网球比赛球检测

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In recent years sport video research has gained a steady interest among the scientific community. The large amount of video data available from broadcast transmissions and from dedicated camera setups, and the need of extracting meaningful information from data, pose significant research challenges. Hence, computer vision and machine learning are essential for enabling automated or semi-automated processing of big data in sports. Although sports are diverse enough to present unique challenges on their own, most of them share the need to identify active entities such as ball or players. In this paper, an innovative deep learning approach to the identification of the ball in tennis context is presented. The work exploits the potential of a convolutional neural network classifier to decide whether a ball is being observed in a single frame, overcoming the typical issues that can occur dealing with classical approaches on long video sequences (e.g. illumination changes and flickering issues). Experiments on real data confirm the validity of the proposed approach that achieves 98.77% accuracy and suggest its implementation and integration at a larger scale in more complex vision systems.
机译:近年来,体育视频研究引起了科学界的持续关注。可从广播传输和专用摄像机设置中获得大量视频数据,并且需要从数据中提取有意义的信息,这对研究提出了重大挑战。因此,计算机视觉和机器学习对于实现运动中大数据的自动或半自动处理至关重要。尽管体育运动足够多样化,可以独自提出独特的挑战,但大多数体育运动都需要识别活跃的实体,例如球或球员。在本文中,提出了一种创新的深度学习方法来识别网球环境中的球。这项工作利用了卷积神经网络分类器的潜力来决定是否在单个帧中观察到一个球,从而克服了在处理长视频序列的经典方法时可能发生的典型问题(例如照明变化和闪烁问题)。在真实数据上的实验证实了该方法的有效性,该方法可达到98.77%的准确性,并建议在更复杂的视觉系统中大规模实施和集成。

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