自动视觉监控系统的鲁棒实时多人检测与跟踪

Lakhyadeep Konwar, A. K. Talukdar, K. K. Sarma
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引用次数: 1

摘要

视觉监控系统的人的检测为未来自动化系统的设计提供了最重要的准则。在未来的自动视觉监视系统(AVSS)中,人的检测和跟踪是非常重要的。在本文中,我们提出了一个灵活的技术,以适当的人的检测和跟踪设计的AVSS。通过消去背景,利用图割对分割的人体作为前景图像,利用HOG、SVM分类器提取部分特征点进行适当分类,最后利用粒子滤波对检测到的人体特征点进行跟踪。由于使用HOG特征描述符和粒子过滤器,我们的系统可以很容易地检测和跟踪光照条件差,颜色,大小,形状和服装的人。我们使用基于图切的分割技术,因此我们的系统可以处理约88%的遮挡。由于使用HOG提取特征,我们的系统可以在室内和室外环境下正常工作,自动人体检测准确率为97.61%,多人自动人体检测和跟踪准确率为92%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Real Time Multiple Human Detection and Tracking for Automatic Visual Surveillance System
Detection of human for visual surveillance system provides most important rule for advancement in the design of future automation systems. Human detection and tracking are important for future automatic visual surveillance system (AVSS). In this paper we have proposed a flexible technique for proper human detection and tracking for the design of AVSS. We used graph cut for segment human as a foreground image by eliminating background, extract some feature points by using HOG, SVM classifier for proper classification and finally we used particle filter for tracking those of detected human. Our system can easily detect and track humans in poor lightening conditions, color, size, shape, and clothing due to the use of HOG feature descriptor and particle filter. We use graph cut based segmentation technique, therefore our system can handle occlusion at about 88%. Due to the use of HOG to extract features our system can properly work in indoor as well as outdoor environments with 97.61% automatic human detection and 92% automatic human detection and tracking accuracy of multiple human
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