Generalizable Person Re-Identification by Domain-Invariant Mapping Network

Jifei Song, Yongxin Yang, Yi-Zhe Song, T. Xiang, Timothy M. Hospedales
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引用次数: 179

Abstract

We aim to learn a domain generalizable person re-identification (ReID) model. When such a model is trained on a set of source domains (ReID datasets collected from different camera networks), it can be directly applied to any new unseen dataset for effective ReID without any model updating. Despite its practical value in real-world deployments, generalizable ReID has seldom been studied. In this work, a novel deep ReID model termed Domain-Invariant Mapping Network (DIMN) is proposed. DIMN is designed to learn a mapping between a person image and its identity classifier, i.e., it produces a classifier using a single shot. To make the model domain-invariant, we follow a meta-learning pipeline and sample a subset of source domain training tasks during each training episode. However, the model is significantly different from conventional meta-learning methods in that: (1) no model updating is required for the target domain, (2) different training tasks share a memory bank for maintaining both scalability and discrimination ability, and (3) it can be used to match an arbitrary number of identities in a target domain. Extensive experiments on a newly proposed large-scale ReID domain generalization benchmark show that our DIMN significantly outperforms alternative domain generalization or meta-learning methods.
基于域不变映射网络的广义人物再识别
我们的目标是学习一个领域可泛化的人物再识别(ReID)模型。当这样的模型在一组源域(来自不同相机网络的ReID数据集)上进行训练时,它可以直接应用于任何新的未见过的数据集,而无需更新模型。尽管它在实际部署中具有实用价值,但很少对其进行研究。本文提出了一种新的深度ReID模型——域不变映射网络(Domain-Invariant Mapping Network, DIMN)。DIMN被设计用来学习人物图像与其身份分类器之间的映射,也就是说,它使用单个镜头生成分类器。为了使模型域不变,我们遵循元学习管道,并在每个训练集期间对源域训练任务的子集进行采样。然而,该模型与传统元学习方法的显著不同在于:(1)不需要对目标域进行模型更新;(2)不同的训练任务共享一个记忆库,以保持可扩展性和区分能力;(3)它可以用于匹配目标域中任意数量的身份。在新提出的大规模ReID域泛化基准上的大量实验表明,我们的DIMN显著优于其他域泛化或元学习方法。
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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