足球运动员检测的无监督颜色分类器训练

S. Gerke, Shiwang Singh, A. Linnemann, P. Ndjiki-Nya
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引用次数: 13

摘要

体育视频中的球员检测是一项具有挑战性的任务:与典型的监控应用相比,使用了一种泛倾斜变焦相机模型。因此,不能使用简单的背景学习方法。此外,相机运动导致严重的运动模糊,使基于梯度的方法不如相机静态设置的鲁棒性。本文的贡献是一种序列自适应方法,该方法以无监督的方式利用颜色信息来提高检测精度。因此,评估不同的颜色特征,即颜色直方图,颜色空间图以及颜色和边缘指向性描述符。结果表明,所提出的颜色自适应方法提高了检测精度。在最大F1分数方面,使用分块HSV直方图可以从0.79提高到0.81。在两个固定召回水平下,每张图像的平均误报数(FPPI)下降了约23%。
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Unsupervised color classifier training for soccer player detection
Player detection in sports video is a challenging task: In contrast to typical surveillance applications, a pan-tilt-zoom camera model is used. Therefore, simple background learning approaches cannot be used. Furthermore, camera motion causes severe motion blur, making gradient based approaches less robust than in settings where the camera is static. The contribution of this paper is a sequence adaptive approach that utilizes color information in an unsupervised manner to improve detection accuracy. Therefore, different color features, namely color histograms, color spatiograms and a color and edge directivity descriptor are evaluated. It is shown that the proposed color adaptive approach improves detection accuracy. In terms of maximum F1 score, an improvement from 0.79 to 0.81 is reached using block-wise HSV histograms. The average number of false positives per image (FPPI) at two fixed recall levels decreased by approximately 23%.
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