TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/A Balanced and Uncertainty-aware Approach for Partial Doma...

A Balanced and Uncertainty-aware Approach for Partial Domain Adaptation

Jian Liang, Yunbo Wang, Dapeng Hu, Ran He, Jiashi Feng

2020-03-05ECCV 2020 8Partial Domain AdaptationUnsupervised Domain AdaptationDomain Adaptation
PaperPDFCode(official)

Abstract

This work addresses the unsupervised domain adaptation problem, especially in the case of class labels in the target domain being only a subset of those in the source domain. Such a partial transfer setting is realistic but challenging and existing methods always suffer from two key problems, negative transfer and uncertainty propagation. In this paper, we build on domain adversarial learning and propose a novel domain adaptation method BA$^3$US with two new techniques termed Balanced Adversarial Alignment (BAA) and Adaptive Uncertainty Suppression (AUS), respectively. On one hand, negative transfer results in misclassification of target samples to the classes only present in the source domain. To address this issue, BAA pursues the balance between label distributions across domains in a fairly simple manner. Specifically, it randomly leverages a few source samples to augment the smaller target domain during domain alignment so that classes in different domains are symmetric. On the other hand, a source sample would be denoted as uncertain if there is an incorrect class that has a relatively high prediction score, and such uncertainty easily propagates to unlabeled target data around it during alignment, which severely deteriorates adaptation performance. Thus we present AUS that emphasizes uncertain samples and exploits an adaptive weighted complement entropy objective to encourage incorrect classes to have uniform and low prediction scores. Experimental results on multiple benchmarks demonstrate our BA$^3$US surpasses state-of-the-arts for partial domain adaptation tasks. Code is available at \url{https://github.com/tim-learn/BA3US}.

Results

TaskDatasetMetricValueModel
Domain AdaptationOffice-HomeAccuracy (%)76BA^3US
Domain AdaptationOffice-31Accuracy (%)97.8BA^3US
Domain AdaptationImageNet-CaltechAccuracy (%)83.7BA^3US
Domain AdaptationDomainNetAccuracy (%)60.63BA^3US

Related Papers

A Privacy-Preserving Semantic-Segmentation Method Using Domain-Adaptation Technique2025-07-17Domain Borders Are There to Be Crossed With Federated Few-Shot Adaptation2025-07-14An Offline Mobile Conversational Agent for Mental Health Support: Learning from Emotional Dialogues and Psychological Texts with Student-Centered Evaluation2025-07-11The Bayesian Approach to Continual Learning: An Overview2025-07-11Doodle Your Keypoints: Sketch-Based Few-Shot Keypoint Detection2025-07-10YOLO-APD: Enhancing YOLOv8 for Robust Pedestrian Detection on Complex Road Geometries2025-07-07CORE-ReID V2: Advancing the Domain Adaptation for Object Re-Identification with Optimized Training and Ensemble Fusion2025-07-04Underwater Monocular Metric Depth Estimation: Real-World Benchmarks and Synthetic Fine-Tuning2025-07-02