Skip to main content

Research Repository

Advanced Search

Multiview latent space learning with progressively fine-tuned deep features for unsupervised domain adaptation

Zhu, Chenyang; Wang, Qian; Xie, Yunxin; Xu, Shoukun

Authors

Chenyang Zhu

Profile Image

Qian Wang qian.wang@durham.ac.uk
Academic Visitor

Yunxin Xie

Shoukun Xu



Abstract

Unsupervised Domain Adaptation (UDA) and Multi-source Domain Adaptation (MDA) have emerged as practical techniques to address the domain shift between source and target domains with different statistical distributions, where the target domain often has unlabeled samples. In recent years, end-to-end training approaches have been employed to learn domain-invariant representations, which enable customized adaptations simultaneously for UDA and MDA tasks. Although the conventional pseudo-labeling approach can leverage unlabeled target samples, the potential for inaccurate pseudo-labeling is counterproductive. This work proposes a multiview latent space learning framework with progressively fine-tuned deep features to improve UDA and MDA performance. Specifically, we construct three views, including features directly extracted from pre-trained deep learning models, fine-tuned features with source samples, and fine-tuned features with source samples and pseudo-labeled target samples, to enable unsupervised clustering analysis. More importantly, we utilize a multiview-based selective pseudo-labeling approach that selects the most confident labeled target samples with the maximum conditional probability. Through systematic experiential evaluations incorporating deep learning backbones such as ResNet-50 and DeiT-base, we demonstrate that our proposed multiview latent space learning method consistently outperforms state-of-the-art approaches on various UDA and MDA tasks.

Citation

Zhu, C., Wang, Q., Xie, Y., & Xu, S. (2024). Multiview latent space learning with progressively fine-tuned deep features for unsupervised domain adaptation. Information Sciences, 662, Article 120223. https://doi.org/10.1016/j.ins.2024.120223

Journal Article Type Article
Acceptance Date Jan 23, 2024
Online Publication Date Feb 1, 2024
Publication Date 2024-03
Deposit Date Mar 22, 2024
Journal Information Sciences
Print ISSN 0020-0255
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 662
Article Number 120223
DOI https://doi.org/10.1016/j.ins.2024.120223
Public URL https://durham-repository.worktribe.com/output/2231914