Source Free Domain Adaptation
Source-free domain adaptation (SFDA) tackles the challenge of adapting a pre-trained model to a new, unlabeled target domain without access to the original source data, addressing privacy and data scarcity issues. Current research focuses on improving the robustness and accuracy of SFDA methods across various tasks, including image classification, object detection, and time-series analysis, employing techniques like self-training with pseudo-labels, adversarial training, and active learning, often within teacher-student or contrastive learning frameworks. These advancements are significant for applications where source data is unavailable or ethically restricted, enabling model deployment in diverse and sensitive contexts while minimizing the need for extensive new data annotation. The development of more efficient and reliable SFDA techniques is crucial for advancing various fields, including medical imaging, remote sensing, and autonomous driving.
Papers
What Has Been Overlooked in Contrastive Source-Free Domain Adaptation: Leveraging Source-Informed Latent Augmentation within Neighborhood Context
Jing Wang, Wonho Bae, Jiahong Chen, Kuangen Zhang, Leonid Sigal, Clarence W. de Silva
Federated Source-free Domain Adaptation for Classification: Weighted Cluster Aggregation for Unlabeled Data
Junki Mori, Kosuke Kihara, Taiki Miyagawa, Akinori F. Ebihara, Isamu Teranishi, Hisashi Kashima
Bridge then Begin Anew: Generating Target-relevant Intermediate Model for Source-free Visual Emotion Adaptation
Jiankun Zhu, Sicheng Zhao, Jing Jiang, Wenbo Tang, Zhaopan Xu, Tingting Han, Pengfei Xu, Hongxun Yao