Robust Real Time Moving People Detection in Surveillance Scenarios

Álvaro García-Martín, J. Sanchez
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引用次数: 26

Abstract

In this paper an improved real time algorithm for detectingpedestrians in surveillance video is proposed. Thealgorithm is based on people appearance and defines a personmodel as the union of four models of body parts. Firstly,motion segmentation is performed to detect moving pixels.Then, moving regions are extracted and tracked. Finally,the detected moving objects are classified as human or nonhumanobjects. In order to test and validate the algorithm,we have developed a dataset containing annotated surveillancesequences of different complexity levels focused onthe pedestrians detection. Experimental results over thisdataset show that our approach performs considerably wellat real time and even better than other real and non-realtime approaches from the state of art.
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监控场景中鲁棒实时移动人群检测
本文提出了一种改进的监控视频中行人的实时检测算法。该算法以人的外表为基础,将人体模型定义为四个身体部位模型的结合。首先,进行运动分割,检测运动像素;然后,提取并跟踪运动区域。最后,将检测到的运动物体分类为人类或非人类物体。为了测试和验证该算法,我们开发了一个数据集,其中包含不同复杂程度的带注释的监视序列,专注于行人检测。在这个数据集上的实验结果表明,我们的方法在实时方面表现相当好,甚至比目前的其他实时和非实时方法更好。
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