Better Pseudo-label: Joint Domain-aware Label and Dual-classifier for Semi-supervised Domain Generalization
Ruiqi Wang, Lei Qi, Yinghuan Shi, Yang Gao

TL;DR
This paper introduces a semi-supervised domain generalization framework that leverages joint domain-aware labels and dual classifiers to improve model generalization to unseen domains with limited labeled data.
Contribution
The paper proposes a novel deep framework combining domain-aware pseudo-labeling and dual classifiers to enhance semi-supervised domain generalization performance.
Findings
Effective pseudo-labeling under domain shift.
Improved generalization on unseen domains.
Beneficial domain mixup augmentation.
Abstract
With the goal of directly generalizing trained model to unseen target domains, domain generalization (DG), a newly proposed learning paradigm, has attracted considerable attention. Previous DG models usually require a sufficient quantity of annotated samples from observed source domains during training. In this paper, we relax this requirement about full annotation and investigate semi-supervised domain generalization (SSDG) where only one source domain is fully annotated along with the other domains totally unlabeled in the training process. With the challenges of tackling the domain gap between observed source domains and predicting unseen target domains, we propose a novel deep framework via joint domain-aware labels and dual-classifier to produce high-quality pseudo-labels. Concretely, to predict accurate pseudo-labels under domain shift, a domain-aware pseudo-labeling module is…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
MethodsMixup
