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
Day-Night Adaptation: An Innovative Source-free Adaptation Framework for Medical Image Segmentation
Ziyang Chen, Yiwen Ye, Yongsheng Pan, Jingfeng Zhang, Yanning Zhang, Yong Xia
SiamSeg: Self-Training with Contrastive Learning for Unsupervised Domain Adaptation Semantic Segmentation in Remote Sensing
Bin Wang, Fei Deng, Shuang Wang, Wen Luo, Zhixuan Zhang, Peifan Jiang
S4DL: Shift-sensitive Spatial-Spectral Disentangling Learning for Hyperspectral Image Unsupervised Domain Adaptation
Jie Feng, Tianshu Zhang, Junpeng Zhang, Ronghua Shang, Weisheng Dong, Guangming Shi, Licheng Jiao
RTF-Q: Efficient Unsupervised Domain Adaptation with Retraining-free Quantization
Nanyang Du, Chen Tang, Yuxiao Jiang, Yuan Meng, Zhi Wang