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首页> 外文期刊>Computer vision and image understanding >Scene-specific classifier for effective and efficient team sport players detection from a single calibrated camera
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Scene-specific classifier for effective and efficient team sport players detection from a single calibrated camera

机译:特定于场景的分类器,可通过单个校准摄像机有效,高效地检测团队运动运动员

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摘要

This paper considers the detection of players in team sport scenes observed with a still or motion-compensated camera. Background-subtracted foreground masks provide easy-to-compute primary cues to identify the vertical silhouettes of moving players in the scene. However, they are shown to be too noisy to achieve reliable detections when only a single viewpoint is available, as often desired for reduced deployment cost. To circumvent this problem, our paper investigates visual classification to identify the true positives among the candidates detected by the foreground mask. It proposes an original approach to automatically adapt the classifier to the game at hand, making the classifier scene-specific for improved accuracy. Since this adaptation implies the use of potentially corrupted labels to train the classifier, a semi-naive Bayesian classifier that combines random sets of binary tests is considered as a robust alternative to boosted classification solutions. In final, our validations on two publicly released datasets prove that our proposed combination of visual and temporal cues supports accurate and reliable players' detection in team sport scenes observed from a single viewpoint.
机译:本文考虑使用静止或运动补偿的摄像机在团队运动场景中检测运动员。减去背景的前景蒙版可提供易于计算的主要提示,以识别场景中移动玩家的垂直轮廓。但是,当只有一个视点可用时,它们显示过于嘈杂而无法实现可靠的检测,而这通常是降低部署成本所需的。为了避免这个问题,我们研究了视觉分类,以识别前景遮罩检测到的候选对象中的真实阳性。它提出了一种使分类器自动适应手边游戏的原始方法,使分类器针对特定场景以提高准确性。由于这种适应意味着使用可能损坏的标签来训练分类器,因此结合了二进制测试的随机集的半朴素贝叶斯分类器被认为是增强分类解决方案的可靠替代方案。最后,我们对两个公开发布的数据集的验证证明,我们提出的视觉和时间提示的组合支持从单个角度观察到的团队运动场景中准确可靠的运动员检测。

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