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Fine-Grained Visual Dribbling Style Analysis for Soccer Videos With Augmented Dribble Energy Image

机译:具有增强的滴灌能量图像的足球视频的细粒度视觉盘带风格分析

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Recent advances in interpretations of soccer are predominantly made through analyzing high-level contents of soccer videos. This work targets on these highlight actions and movements in soccer games and it focuses on dribbling skills performed by the top players. Our work leverages understanding of complex dribbling video clips by representing a video sequence with a single Dribble Energy Image(DEI) that is informative for dribbling styles recognition. To overcome the shortage of labelled data, this paper introduces a dataset of soccer video clips from Youtube, employs Mask-RCNN to segment out dribbling players and OpenPose to obtain joints information of dribbling players. Besides, to solve issues caused by camera motions in highlight soccer videos, our work proposes to register a video sequence to generate a single image representation DEI and dribbling styles classification. Our approach can achieve an accuracy of 87.65% on dribbling styles classification and it is observed that data augmentation using joints-reasoned GAN can improve the classification performance.
机译:足球解释的最新进展主要是通过分析足球视频的高级内容而取得的。这项工作针对足球比赛中这些突出的动作和动作,并着重于顶级球员所发挥的运球技巧。我们的工作通过使用单个滴灌能量图像(DEI)表示视频序列,从而对滴灌样式的识别提供信息,从而充分理解了复杂的滴灌视频剪辑。为了克服标记数据的不足,本文引入了来自Youtube的足球视频剪辑数据集,采用Mask-RCNN来划分运球球员,并使用OpenPose获取运球球员的关节信息。此外,为解决足球精彩视频中摄像机运动引起的问题,我们的工作建议注册一个视频序列以生成单个图像表示DEI和盘带样式分类。我们的方法在运球样式分类上可以达到87.65%的准确性,并且可以观察到,使用关节推理GAN进行数据增强可以提高分类性能。

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