An effective implementation of Gaussian of Gaussian descriptor for person re-identification

Thuy-Binh Nguyen, Duc-Long Tran, Thi-Lan Le, Thi Thanh Thuy Pham, H. Doan
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引用次数: 2

Abstract

Person re-identification (ReID), a critical task in surveillance systems, has obtained impressive advances in recent years. However, most current works focus on improving the person re-identification accuracy. In practical terms, the direct use of these works seems difficult, even infeasible. Among the features proposed for person representation in person ReID, Gaussian of Gaussian (GOG) has been proved to be robust. Towards applying this feature for practical usage, in this work, we simultaneously propose two improvements. First, we re-implement and perform intensive experiments to select the optimal parameters of GOG during feature extraction. Second, we propose and apply preprocessing techniques on person images. The experimental results show that the proposed approach allows to extract GOG 2 times faster than the available source code and achieve remarkably high accuracy for person ReID. The obtained accuracies at rank-1 on VIPeR dataset are 51.74% (with background) and 57.25% (without background). The implementations and evaluation datasets used in this paper are made publicly available.
一种有效实现高斯描述符的人再识别方法
人员再识别(ReID)是监控系统中的一项关键任务,近年来取得了令人瞩目的进展。然而,目前的工作大多集中在提高人的再识别精度上。实际上,直接使用这些作品似乎很困难,甚至是不可行的。在拟人ReID中拟人表示的特征中,高斯的高斯(GOG)已被证明具有鲁棒性。为了将该特性应用于实际应用,在本工作中,我们同时提出了两个改进。首先,我们重新实现并进行了大量的实验,以选择特征提取过程中GOG的最优参数。其次,提出并应用了人物图像预处理技术。实验结果表明,该方法能够以比现有源代码快2倍的速度提取GOG,并且能够达到非常高的个人身份识别精度。在VIPeR数据集上获得的rank-1的准确率分别为51.74%(有背景)和57.25%(无背景)。本文中使用的实现和评估数据集是公开的。
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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