Counting People in Crowded Environments by Fusion of Shape and Motion Information

Michael Pätzold, Rubén Heras Evangelio, T. Sikora
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引用次数: 49

Abstract

Knowing the number of people in a crowded scene is of big interest in the surveillance scene. In the past, this problem has been tackled mostly in an indirect, statistical way. This paper presents a direct, counting by detection, method based on fusing spatial information received from an adapted Histogram of Oriented Gradientsalgorithm (HOG) with temporal information by exploiting distinctive motion characteristics of different human body parts. For that purpose, this paper defines a measure for uniformity of motion. Furthermore, the system performance is enhanced by validating the resulting human hypotheses by tracking and applying a coherent motion detection. The approach is illustrated with an experimental evaluation.
基于形状和运动信息融合的拥挤环境人口统计
在监控场景中,了解拥挤场景中的人数是非常重要的。过去,这个问题主要是通过间接的统计方法来解决的。本文利用人体不同部位的不同运动特征,提出了一种基于自适应定向梯度直方图(HOG)的空间信息与时间信息融合的直接检测计数方法。为此,本文定义了运动均匀性的度量。此外,通过跟踪和应用相干运动检测来验证由此产生的人类假设,从而增强了系统性能。最后以实验评价说明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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