Strategic approach for high performance object tracking in a network of surveillance cameras

H. H. Weerasena, P. B. S. Bandara, J. R. B. Kulasekara, B. M. B. Dassanayake, U. Niroshika, P. Wijenayake
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引用次数: 3

Abstract

Tracking human objects in a network of surveillance cameras has become an essential requirement in current surveillance systems. Increasing efficiency (response time)of these real-time systems is a challenging task. When searching for a better solution, it was discovered that if software solutions are used it is more effective than using powerful hardware to increase the performance. Many systems use motion detection, feature extraction and appearance matching for re-identification of human objects across cameras. A problem that greatly decreases the efficiency of the system is; features of the object that is being tracked have to be matched with all the objects in all other cameras in the network. This research introduces different strategies that resolve the above mentioned problem of unnecessary feature matching, and enhance the system performance.
监控摄像机网络中高性能目标跟踪的策略方法
在监控摄像机网络中跟踪人的目标已成为当前监控系统的基本要求。提高这些实时系统的效率(响应时间)是一项具有挑战性的任务。在寻找更好的解决方案时,发现使用软件解决方案比使用强大的硬件更有效地提高性能。许多系统使用运动检测、特征提取和外观匹配来跨摄像头重新识别人类物体。大大降低系统效率的一个问题是;被跟踪对象的特征必须与网络中所有其他摄像机中的所有对象相匹配。本研究引入不同的策略来解决上述不必要的特征匹配问题,提高系统性能。
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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