Title
Imbalanced Source-free Domain Adaptation
Abstract
ABSTRACTConventional Unsupervised Domain Adaptation (UDA) aims to transfer knowledge from a well-labeled source domain to an unlabeled target domain only when data from both domains is simultaneously accessible, which is challenged by the recent Source-free Domain Adaptation (SFDA). However, we notice that the performance of existing SFDA methods would be dramatically degraded by intra-domain class imbalance and inter-domain label shift. Unfortunately, class-imbalance is a common phenomenon in real-world domain adaptation applications. To address this issue, we present Imbalanced Source-free Domain Adaptation (ISFDA) in this paper. Specifically, we first train a uniformed model from the source domain, and then propose secondary label correction, curriculum sampling, plus intra-class tightening and inter-class separation to overcome the joint presence of covariate shift and label shift. Extensive experiments on three imbalanced benchmarks verify that ISFDA could perform favorably against existing UDA and SFDA methods under various conditions of class-imbalance, and outperform existing SFDA methods by over 15% in terms of per-class average accuracy on a large-scale long-tailed imbalanced dataset.
Year
DOI
Venue
2021
10.1145/3474085.3475487
International Multimedia Conference
DocType
Citations 
PageRank 
Conference
1
0.37
References 
Authors
0
5
Name
Order
Citations
PageRank
Xinhao Li110.37
Jingjing Li259744.26
Lei Zhu385451.69
Guoqing Wang412.06
Zi Huang510.37