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Part-Based Player Identification Using Deep Convolutional Representation and Multi-scale Pooling

机译:基于部分的玩家识别使用深度卷积表示和多尺度汇集

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This paper addresses the problem of automatic player identification in broadcast sports videos filmed with a single side-view medium distance camera. Player identification in this setting is a challenging task because visual cues such as faces and jersey numbers are not clearly visible. Thus, this task requires sophisticated approaches to capture distinctive features from players to distinguish them. To this end, we use Convolutional Neural Networks (CNN) features extracted at multiple scales and encode them with an advanced pooling, called Fisher vector. We leverage it for exploring representations that have sufficient discriminatory power and ability to magnify subtle differences. We also analyze the distinguishing parts of the players and present a part based pooling approach to use these distinctive feature points. The resulting player representation is able to identify players even in difficult scenes. It achieves state-of-the-art results up to 96% on NBA basketball clips.
机译:本文解决了拍摄了单一侧视图中距离相机的广播运动视频中自动播放器识别问题。此设置中的播放器识别是一个具有挑战性的任务,因为诸如面孔和泽西号码之类的视觉提示并不清晰可见。因此,这项任务需要复杂的方法来捕获来自玩家的独特功能以区分它们。为此,我们使用在多个尺度上提取的卷积神经网络(CNN)功能,并用一个名为Fisher向量的高级池编码它们。我们利用它来探索具有充分歧视力和放大微妙差异的能力的表现。我们还分析了玩家的区别部分,并提出了一种基于部分的汇集方法来使用这些独特的特征点。由此产生的玩家表示能够在困难的场景中识别玩家。它在NBA篮球剪辑上实现了最先进的结果高达96%。

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