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Evaluation of Image Representations for Player Detection in Field Sports Using Convolutional Neural Networks

机译:利用卷积神经网络评估运动员检测的图像表示

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摘要

Player detection is an important task in sport video analysis. Once players are detected accurately, it can be used for player tracking, player activity/performance analysis as well as team activity recognition. Recently, convolutional Neural Networks (CNN) became the state-of-the-art in computer vision for object recognition. CNN based methods usually use gray or RGB images as an input. It is also possible to use other image representation techniques such as shape information image and polar transformed shape information image for player detection. In this paper, we evaluate various image representation techniques for player detection using CNN. In our evaluation, first the candidate image regions for players are determined using a sliding window technique. Then these regions are input to CNN for player detection. We examine four different types of image representations as an input to CNN: RGB, gray, shape information and polar transformed shape information image. Evaluation is conducted on a field hockey dataset. Results show that CNN based player detection is effective and different image representations yield different performances.
机译:播放器检测是运动视频分析中的重要任务。一旦准确地检测到球员,它可以用于玩家跟踪,玩家活动/性能分析以及团队活动识别。最近,卷积神经网络(CNN)成为对象识别的计算机视觉中的最先进。基于CNN的方法通常使用灰度或RGB图像作为输入。还可以使用其他图像表示技术,例如形状信息图像和偏振变换形状信息图像进行播放器检测。在本文中,我们使用CNN评估用于玩家检测的各种图像表示技术。在我们的评估中,首先使用滑动窗技术来确定用于玩家的候选图像区域。然后,这些区域输入到CNN以进行玩家检测。我们检查四种不同类型的图像表示作为CNN的输入:RGB,灰色,形状信息和极性转换形状信息图像。评估在现场曲棍球数据集上进行。结果表明,基于CNN的玩家检测是有效的,不同的图像表示产生不同的性能。

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