本文主要从面向公安图像监控的行人重识别的应用需求出发,首先分析面向视频监控应用的行人重识别软件系统的价值,然后归纳总结当前国内外在行人重识别领域的研究框架和思路,分析选择了生物特征与行人外观特征相结合的方法,并对该行人重识别算法进行软件系统的设计开发。算法经过实际监控场景的数据测试评估,准确性和运行效率达到较好的效果。 According to the demands on city public security video surveillance for person re-identification, we first analyze the value of a person re-identification software system for video surveillance system and then analyze the advanced research development in person re-identification. Furthermore, we design a software system by combining appearance and biological feature for person re-identification. Finally we conduct the online test of the software system and obtain the good performance.
视频监控,行人重识别,软件系统, Video Surveillance Person Re-Identification Software System基于监控摄像机网络的行人比对系统设计和实现
黄 凯,王新宇,杨 华. 基于监控摄像机网络的行人比对系统设计和实现Person Re-Identification System Design and Implementation Based on Camera Network[J]. 计算机科学与应用, 2017, 07(06): 499-506. http://dx.doi.org/10.12677/CSA.2017.76061
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