A robust and enhanced approach for human detection in crowd

Robina Khatoon, S. Saqlain, Shafina Bibi
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引用次数: 16

Abstract

In this paper we have presented and enhanced methodology for robust detection of human in videos. Our research covers most of the limitations for detection of human in crowded places like detection of non-human objects and large human shadow as humans. The proposed technique is based on hierarchal structure consisting of three phases. Firstly, segmentation of moving objects is done using Gaussian Mixture model. Secondly, shadow removal technique is applied to avoid detection of large human shadows as human. Finally, human detection is achieved by applying human detection algorithm [3] on shadowless segmented images. Experiments are performed on different videos having single and multiple humans in indoor and outdoor scenes and videos under different illumination producing large and small shadows. This paper also presents comparative results of our methodology with existing techniques and the results clearly proved that the proposed technique outperforms the existing techniques and this is proved by producing comparative results.
一种鲁棒和增强的人群人体检测方法
在本文中,我们提出并改进了视频中人类的鲁棒检测方法。我们的研究涵盖了大多数在拥挤场所检测人类的局限性,如检测非人类物体和人类的大阴影。该技术是基于由三个阶段组成的层次结构。首先,利用高斯混合模型对运动目标进行分割;其次,采用阴影去除技术,避免像人类一样检测到较大的人体阴影。最后,在无阴影分割图像上应用人体检测算法[3]实现人体检测。实验分别针对室内和室外场景下的单人和多人视频,以及不同光照下产生大阴影和小阴影的视频。本文还介绍了我们的方法与现有技术的比较结果,结果清楚地证明了所提出的技术优于现有技术,这是通过产生比较结果来证明的。
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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