计算机科学
人工智能
机器学习
一般化
元学习(计算机科学)
分类器(UML)
鉴定(生物学)
规范化(社会学)
监督学习
人工神经网络
数学分析
任务(项目管理)
管理
经济
社会学
人类学
生物
植物
数学
作者
Yuyang Zhao,Zhun Zhong,Fengxiang Yang,Zhiming Luo,Yaojin Lin,Shaozi Li,Nicu Sebe
出处
期刊:Cornell University - arXiv
日期:2020-01-01
被引量:1
标识
DOI:10.48550/arxiv.2012.00417
摘要
Recent advances in person re-identification (ReID) obtain impressive accuracy in the supervised and unsupervised learning settings. However, most of the existing methods need to train a new model for a new domain by accessing data. Due to public privacy, the new domain data are not always accessible, leading to a limited applicability of these methods. In this paper, we study the problem of multi-source domain generalization in ReID, which aims to learn a model that can perform well on unseen domains with only several labeled source domains. To address this problem, we propose the Memory-based Multi-Source Meta-Learning (M$^3$L) framework to train a generalizable model for unseen domains. Specifically, a meta-learning strategy is introduced to simulate the train-test process of domain generalization for learning more generalizable models. To overcome the unstable meta-optimization caused by the parametric classifier, we propose a memory-based identification loss that is non-parametric and harmonizes with meta-learning. We also present a meta batch normalization layer (MetaBN) to diversify meta-test features, further establishing the advantage of meta-learning. Experiments demonstrate that our M$^3$L can effectively enhance the generalization ability of the model for unseen domains and can outperform the state-of-the-art methods on four large-scale ReID datasets.
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