Unsupervised Domain Adaptation
Unsupervised domain adaptation (UDA) tackles the challenge of training machine learning models on labeled data from one domain (source) and applying them effectively to unlabeled data from a different but related domain (target). Current research focuses on improving the robustness and efficiency of UDA, exploring techniques like adversarial training, self-training, and representation learning using architectures such as convolutional neural networks and vision transformers. These advancements are crucial for various applications, including medical image analysis, remote sensing, and time series classification, where obtaining sufficient labeled data for each domain is often impractical or expensive. The development of standardized evaluation frameworks and the exploration of efficient UDA methods for resource-constrained environments are also significant current trends.
Papers
CAD Models to Real-World Images: A Practical Approach to Unsupervised Domain Adaptation in Industrial Object Classification
Dennis Ritter, Mike Hemberger, Marc Hönig, Volker Stopp, Erik Rodner, Kristian Hildebrand
Towards Dynamic and Small Objects Refinement for Unsupervised Domain Adaptative Nighttime Semantic Segmentation
Jingyi Pan, Sihang Li, Yucheng Chen, Jinjing Zhu, Lin Wang
WLST: Weak Labels Guided Self-training for Weakly-supervised Domain Adaptation on 3D Object Detection
Tsung-Lin Tsou, Tsung-Han Wu, Winston H. Hsu
Mitigating the Influence of Domain Shift in Skin Lesion Classification: A Benchmark Study of Unsupervised Domain Adaptation Methods on Dermoscopic Images
Sireesha Chamarthi, Katharina Fogelberg, Roman C. Maron, Titus J. Brinker, Julia Niebling