人再识别的半监督距离度量学习

F. Chen, Jinhong Chai, Dinghu Ren, Xiaofang Liu, Yun Yang
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引用次数: 5

摘要

作为自动化视频监控的一项基础任务,人员再识别的目标是在多摄像头监控系统中实现非重叠视角下的人员匹配,近年来受到越来越多的关注。据报道,KISS度量学习已经被大多数先前的监督工作所遵循,因为它在VIPeR数据集上的人员再识别性能达到了最先进的水平。然而,由于可供训练的标记图像对数量很少,匹配模型的学习过程不稳定,匹配效果不佳。为了解决这一严重的实际问题,我们提出了一种新的半监督KISS度量学习(SS-KISS)方法,该方法利用未标记的数据来提高再识别性能:1)结合全局和局部信息从未标记的数据中选择最自信的图像对;2)采用集成方法,通过智能加权模式将标记和未标记数据的两个匹配模型调和为最优模型,探索有监督学习和无监督学习的优势。在VIPeR、ETHZ和i-LiDS三个数据集上进行了大量的实验,实验结果表明,我们的方法在少量标记数据的情况下取得了良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised distance metric learning for person re-identification
As a fundamental task in automated video surveillance, person re-identification, which has received increasing attention in recent years, aims to match people across non-overlapping camera views in a multi-camera surveillance system. It has been reported that KISS metric learning has been followed by most of the previous supervised work because of its state of the art performance for person re-identification on VIPeR dataset. However, given only a small number of labeled image pairs available for training, the matching model certainly suffers from unstable learning process and poor matching result. To address this serious practical issue, we proposed a novel semi-supervised KISS metric learning (SS-KISS) approach which makes use of unlabeled data to improve the re-identification performance by 1) combining both global and local information to select the most confident image pairs from the unlabeled data; 2) using an ensemble approach, which explores advantages of supervised and unsupervised learning by reconciling two matching models on which labeled and un-labeled data to an optimal one via smart weighting schema. Extensive experiments have been conducted on three datasets: VIPeR, ETHZ, and i-LiDS, experimental results demonstrate that our approach achieves a sound performance in the case of small amount of labeled data.
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