Survey on Unsupervised Techniques for Person Re-Identification

Changshui Yang, Feng Qi, Huizhu Jia
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引用次数: 3

Abstract

Unsupervised person re-identification (ReID) might be difficult if lacking labeling information. The feature extraction scheme generally divides existing methods into handcrafted feature-based methods, unsupervised domain adaptation (UDA) based methods, and pseudo-labels estimation-based methods. Feature representations are extracted or learnt directly from unlabeled datasets to address the scalability issue by hand-crafted feature-based methods. The purpose of unsupervised domain adaptation is to relieve the domain bias as the learnt features are transferred to an unlabeled target from a labeled source. For pseudo-labels estimation-based methods, they take supervised pseudo-labels to learn feature representations and labels are estimated together for unlabeled datasets. In this paper, the state-of-the-art unsupervised techniques are reviewed to solve the task of person re-identification, a brief review of each method along with their evaluations on a set of widely used datasets in included. In addition, we give a detail comparison among these methods according to corresponding category.
无监督人员再识别技术研究综述
如果缺乏标签信息,无监督人员再识别(ReID)可能会很困难。特征提取方案一般将现有方法分为基于手工特征的方法、基于无监督域自适应(UDA)的方法和基于伪标签估计的方法。特征表示是直接从未标记的数据集中提取或学习的,通过手工制作的基于特征的方法来解决可伸缩性问题。无监督域自适应的目的是缓解从标记源学习到的特征转移到未标记目标时的域偏差。对于基于伪标签估计的方法,它们采用有监督的伪标签来学习特征表示,并对未标记的数据集一起估计标签。在本文中,回顾了最先进的无监督技术,以解决人员重新识别的任务,简要回顾了每种方法以及它们对一组广泛使用的数据集的评估。此外,我们还根据相应的类别对这些方法进行了详细的比较。
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