A people counting method based on head detection and tracking

Bin Li, Jian Zhang, Zheng Zhang, Yong Xu
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引用次数: 24

Abstract

This paper proposes a novel people counting method based on head detection and tracking to evaluate the number of people who move under an over-head camera. There are four main parts in the proposed method: foreground extraction, head detection, head tracking, and crossing-line judgment. The proposed method first utilizes an effective foreground extraction method to obtain foreground regions of moving people, and some morphological operations are employed to optimize the foreground regions. Then it exploits a LBP feature based Adaboost classifier for head detection in the optimized foreground regions. After head detection is performed, the candidate head object is tracked by a local head tracking method based on Meanshift algorithm. Based on head tracking, the method finally uses crossing-line judgment to determine whether the candidate head object will be counted or not. Experiments show that our method can obtain promising people counting accuracy about 96% and acceptable computation speed under different circumstances.
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一种基于头部检测和跟踪的人数计数方法
本文提出了一种基于头部检测和跟踪的新型人群计数方法,以评估在头顶摄像机下移动的人群数量。该方法主要包括前景提取、头部检测、头部跟踪和交叉线判断四个部分。该方法首先利用一种有效的前景提取方法获取运动人群的前景区域,并利用形态学运算对前景区域进行优化。然后利用基于LBP特征的Adaboost分类器在优化的前景区域进行头部检测。头部检测完成后,采用基于Meanshift算法的局部头部跟踪方法对候选头部目标进行跟踪。该方法在头部跟踪的基础上,最后通过交叉线判断来确定候选头部目标是否被计数。实验表明,该方法在不同情况下均能获得可观的人计数准确率,达到96%左右。
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