A Fully Autonomous Person Re-Identification System

Roxana Mihaescu, Mihai Chindea, S. Carata, M. Ghenescu, C. Paleologu
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Abstract

The problem of re-identification involves the association of the appearances of a person caught with one or more surveillance cameras. This task is especially challenging in very crowded areas, where possible occlusions of people can drastically reduce visibility. In this paper, we aim to obtain a fully automatic re-identification system containing a stage of detection of persons before the stage of re-identification. Both stages are based on a general-purpose DNN (Deep Neural Network) object detector - the YOLO (You Only Look Once) model. The primary purpose and novelty of the proposed method are to obtain an autonomous re-identification system, starting from a simple detection model. Thus, with minimal computational and hardware resources, the proposed method leads to comparable results with other existing methods, even when running in real-time on multiple security cameras.
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一个完全自主的人员再识别系统
重新识别的问题涉及到将一个或多个监控摄像头拍到的人的外表联系起来。这项任务在非常拥挤的地区尤其具有挑战性,在那里可能出现的人群遮挡会大大降低能见度。在本文中,我们的目标是获得一个完全自动化的再识别系统,该系统包含在再识别阶段之前的人员检测阶段。这两个阶段都是基于一个通用的DNN(深度神经网络)对象检测器- YOLO(你只看一次)模型。该方法的主要目的和新颖之处在于,从一个简单的检测模型出发,获得一个自主的再识别系统。因此,即使在多个安全摄像机上实时运行时,所提出的方法在计算和硬件资源最少的情况下也能获得与其他现有方法相当的结果。
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