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
CALI: Coarse-to-Fine ALIgnments Based Unsupervised Domain Adaptation of Traversability Prediction for Deployable Autonomous Navigation
Zheng Chen, Durgakant Pushp, Lantao Liu
Unsupervised Domain Adaptation for Cardiac Segmentation: Towards Structure Mutual Information Maximization
Changjie Lu, Shen Zheng, Gaurav Gupta
Unsupervised domain adaptation and super resolution on drone images for autonomous dry herbage biomass estimation
Paul Albert, Mohamed Saadeldin, Badri Narayanan, Jaime Fernandez, Brian Mac Namee, Deirdre Hennessey, Noel E. O'Connor, Kevin McGuinness
Understanding Gradual Domain Adaptation: Improved Analysis, Optimal Path and Beyond
Haoxiang Wang, Bo Li, Han Zhao