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Action Recognition in Broadcast Tennis Video Using Optical Flow and Support Vector Machine

机译:使用光流量和支持向量机的广播网球视频行动识别

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Motion analysis in broadcast sports video is a challenging problem especially for player action recognition due to the low resolution of players in the frames. In this paper, we present a novel approach to recognize the basic player actions in broadcast tennis video where the player is about 30 pixels tall. Two research challenges, motion representation and action recognition, are addressed. A new motion descriptor, which is a group of histograms based on optical flow, is proposed for motion representation. The optical flow here is treated as spatial pattern of noisy measurement instead of precise pixel displacement. To recognize the action performed by the player, support vector machine is employed to train the classifier where the concatenation of histograms is formed as the input features. Experimental results demonstrate that our method is promising by integrating with the framework of multimodal analysis in sports video.
机译:广播运动视频中的运动分析是一个具有挑战性的问题,特别是由于框架中的玩家的低分辨率导致的玩家动作识别。在本文中,我们提出了一种新的方法来识别广播网球视频中的基本球员动作,其中玩家大约30像素高。解决了两项研究挑战,运动代表和行动识别。提出了一种新的运动描述符,其是基于光流的一组直方图,用于运动表示。这里的光学流量被视为噪声测量的空间模式,而不是精确的像素位移。为了识别玩家执行的动作,采用支持向量机来训练直方图的串联形成为输入特征的分类器。实验结果表明,我们的方法是通过集成体育视频中的多模式分析框架的承诺。

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