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用于域适应的加权相关嵌入学习

Weighted Correlation Embedding Learning for Domain Adaptation.

作者信息

Lu Yuwu, Zhu Qi, Zhang Bob, Lai Zhihui, Li Xuelong

出版信息

IEEE Trans Image Process. 2022;31:5303-5316. doi: 10.1109/TIP.2022.3193758. Epub 2022 Aug 16.

DOI:10.1109/TIP.2022.3193758
PMID:35914043
Abstract

Domain adaptation leverages rich knowledge from a related source domain so that it can be used to perform tasks in a target domain. For more knowledge to be obtained under relaxed conditions, domain adaptation methods have been widely used in pattern recognition and image classification. However, most of the existing domain adaptation methods only consider how to minimize different distributions of the source and target domains, which neglects what should be transferred for a specific task and suffers negative transfer by distribution outliers. To address these problems, in this paper, we propose a novel domain adaptation method called weighted correlation embedding learning (WCEL) for image classification. In the WCEL approach, we seamlessly integrated correlation learning, graph embedding, and sample reweighting into a unified learning model. Specifically, we extracted the maximum correlated features from the source and target domains for image classification tasks. In addition, two graphs were designed to preserve the discriminant information from interclass samples and neighborhood relations in intraclass samples. Furthermore, to prevent the negative transfer problem, we developed an efficient sample reweighting strategy to predict the target with different confidence levels. To verify the performance of the proposed method in image classification, extensive experiments were conducted with several benchmark databases, verifying the superiority of the WCEL method over other state-of-the-art domain adaptation algorithms.

摘要

领域自适应利用来自相关源域的丰富知识,以便将其用于在目标域中执行任务。为了在宽松条件下获得更多知识,领域自适应方法已在模式识别和图像分类中得到广泛应用。然而,现有的大多数领域自适应方法仅考虑如何最小化源域和目标域的不同分布,这忽略了针对特定任务应转移的内容,并会因分布异常值而遭受负迁移。为了解决这些问题,在本文中,我们提出了一种用于图像分类的新颖领域自适应方法,称为加权相关嵌入学习(WCEL)。在WCEL方法中,我们将相关学习、图嵌入和样本重新加权无缝集成到一个统一的学习模型中。具体而言,我们从源域和目标域中提取用于图像分类任务的最大相关特征。此外,设计了两个图来保留类间样本的判别信息和类内样本的邻域关系。此外,为了防止负迁移问题,我们开发了一种有效的样本重新加权策略,以不同的置信水平预测目标。为了验证所提出方法在图像分类中的性能,我们使用几个基准数据库进行了广泛的实验,验证了WCEL方法优于其他现有最先进的领域自适应算法。

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