使用逐帧归一化特征进行人员计数的低级人群分析

H. Fradi, J. Dugelay
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引用次数: 37

摘要

人数统计是视觉监控的重要组成部分,主要用于人群监控和管理。近年来,特征回归在这一领域取得了重大进展。在这种情况下,视角扭曲经常被研究,然而,拥挤的场景仍然特别具有挑战性,并且由于个体之间发生的部分遮挡可能会深刻影响计数。为了解决这些挑战,我们提出了一种人员计数方法,该方法利用将均匀运动模型纳入高斯混合模型(GMM)背景减法的优势,以获得高精度的前景分割。计数是基于前景测量,其中引入了视角归一化和人群测量通知角密度,前景像素计数为单个特征。然后,通过高斯过程回归学习该帧特征与人数之间的对应关系。实验结果表明,将GMM与运动线索相结合,并对所提出的特征进行归一化处理是有益的。此外,通过与其他基于特征的方法的比较,我们的方法已经得到了实验验证,显示出更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low level crowd analysis using frame-wise normalized feature for people counting
People counting is a crucial component in visual surveillance mainly for crowd monitoring and management. Recently, significant progress has been made in this field by using features regression. In this context, perspective distortions have been frequently studied, however, crowded scenes remain particularly challenging and could deeply affect the count because of the partial occlusions that occur between individuals. To address these challenges, we propose a people counting approach that harness the advantage of incorporating an uniform motion model into Gaussian Mixture Model (GMM) background subtraction to obtain high accurate foreground segmentation. The counting is based on foreground measurements, where a perspective normalization and a crowd measure-informed corner density are introduced with foreground pixel counts into a single feature. Afterwards, the correspondence between this frame-wise feature and the number of persons is learned by Gaussian Process regression. Experimental results demonstrate the benefits of integrating GMM with motion cue, and normalizing the proposed feature as well. Also, by means of comparisons to other feature-based methods, our approach has been experimentally validated showing more accurate results.
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