Multi-Domain Adversarial Variational Bayesian Inference for Domain Generalization

IF 11.1 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Zhifan Gao;Saidi Guo;Chenchu Xu;Jinglin Zhang;Mingming Gong;Javier Del Ser;Shuo Li
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引用次数: 0

Abstract

Domain generalization aims to learn common knowledge from multiple observed source domains and transfer it to unseen target domains, e.g. the object recognition in varieties of visual environments. Traditional domain generalization methods aim to learn the feature representation of the raw data with its distribution invariant across domains. This relies on the assumption that the two posterior distributions (the distributions of the label given the feature distribution and given the raw data) are stable in different domains. However, this does not always hold in many practical situations. In this paper, we relax the above assumption by permitting the posterior distribution of the label given the raw data changes in difference domains, and thus focuses on a more realistic learning problem that infers the conditional domain-invariant feature representation. Specifically, a multi-domain adversarial variational Bayesian inference approach is proposed to minimize the inter-domain discrepancy of the conditional distributions of the feature given the label. Besides, it is imposed by the constraints from the adversarial learning and feedback mechanism to enhance the condition invariant feature representation. The extensive experiments on two datasets demonstrate the effectiveness of our approach, as well as the state-of-the-art performance comparing with thirteen methods.
面向领域泛化的多领域对抗变分贝叶斯推理
领域泛化旨在从多个观察到的源领域中学习到共同的知识,并将其转移到未知的目标领域中,例如各种视觉环境下的目标识别。传统的领域泛化方法旨在学习原始数据跨领域分布不变性的特征表示。这依赖于两个后验分布(给定特征分布的标签分布和给定原始数据的标签分布)在不同领域是稳定的假设。然而,这在许多实际情况下并不总是成立。在本文中,我们通过允许给定不同域的原始数据变化的标签的后验分布来放宽上述假设,从而专注于一个更现实的学习问题,即推断条件域不变特征表示。具体而言,提出了一种多域对抗变分贝叶斯推理方法,以最小化给定标签的特征条件分布的域间差异。此外,利用对抗学习和反馈机制的约束来增强条件不变特征的表示。在两个数据集上的广泛实验证明了我们方法的有效性,以及与13种方法相比的最先进性能。
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来源期刊
CiteScore
13.80
自引率
27.40%
发文量
660
审稿时长
5 months
期刊介绍: The IEEE Transactions on Circuits and Systems for Video Technology (TCSVT) is dedicated to covering all aspects of video technologies from a circuits and systems perspective. We encourage submissions of general, theoretical, and application-oriented papers related to image and video acquisition, representation, presentation, and display. Additionally, we welcome contributions in areas such as processing, filtering, and transforms; analysis and synthesis; learning and understanding; compression, transmission, communication, and networking; as well as storage, retrieval, indexing, and search. Furthermore, papers focusing on hardware and software design and implementation are highly valued. Join us in advancing the field of video technology through innovative research and insights.
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