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Tracking Multiple People in the Context of Video Surveillance

机译:在视频监控中跟踪多人

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摘要

This paper addresses the problem of detecting and tracking multiple moving people when the scene background is not known in advance. We have proposed a new background detection technique for dynamic environment that learns and models the scene background based on K-mean clustering technique and pixel statistics. The background detection is achieved using the first frames of the scene where, the number of these frames needed depends on how dynamic is the observed environment. We have also proposed a new feature-based framework, which requires feature extraction and feature matching, for tracking moving people. We have considered color, size, blob bounding box and motion information as features of people. In our feature-based tracking system, we have used Pearson correlation coefficient for matching feature-vector with temporal templates. The occlusion problem has been solved by sub-blobbing. Our tracking system is fast and free from assumptions about human structure. The tracking system has been implemented using Visual C++ and OpenCV and tested on real-world videos. Experimental results suggest that our tracking system achieved good accuracy and can process videos close to real-time.
机译:本文提出了在场景背景不为人知的情况下,检测并跟踪多个移动人的问题。我们提出了一种新的动态环境背景检测技术,该技术基于K均值聚类技术和像素统计信息来学习和建模场景背景。使用场景的第一帧来实现背景检测,其中所需的这些帧的数量取决于所观察到的环境的动态程度。我们还提出了一个新的基于特征的框架,该框架需要特征提取和特征匹配来跟踪移动人员。我们已经将颜色,大小,斑点边界框和运动信息视为人的特征。在基于特征的跟踪系统中,我们使用了Pearson相关系数将特征向量与时间模板进行匹配。遮挡问题已通过子斑点解决。我们的跟踪系统快速且没有关于人的结构的假设。跟踪系统已使用Visual C ++和OpenCV实现,并在真实视频上进行了测试。实验结果表明,我们的跟踪系统具有良好的准确性,可以处理接近实时的视频。

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