Prasanna Reddy Pulakurthi, Majid Rabbani, Jamison Heard, Sohail Dianat, Celso M. de Melo, Raghuveer Rao
This work investigates Source-Free Domain Adaptation (SFDA), where a model adapts to a target domain without access to source data. A new augmentation technique, Shuffle PatchMix (SPM), and a novel reweighting strategy are introduced to enhance performance. SPM shuffles and blends image patches to generate diverse and challenging augmentations, while the reweighting strategy prioritizes reliable pseudo-labels to mitigate label noise. These techniques are particularly effective on smaller datasets like PACS, where overfitting and pseudo-label noise pose greater risks. State-of-the-art results are achieved on three major benchmarks: PACS, VisDA-C, and DomainNet-126. Notably, on PACS, improvements of 7.3% (79.4% to 86.7%) and 7.2% are observed in single-target and multi-target settings, respectively, while gains of 2.8% and 0.7% are attained on DomainNet-126 and VisDA-C. This combination of advanced augmentation and robust pseudo-label reweighting establishes a new benchmark for SFDA. The code is available at: https://github.com/PrasannaPulakurthi/SPM
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Domain Adaptation | DomainNet | Accuracy | 71.1 | SPM |
| Domain Adaptation | PACS | Average Accuracy | 86.7 | SPM |
| Domain Adaptation | VisDA-2017 | Accuracy | 89.4 | SPM |
| Source-Free Domain Adaptation | PACS | Average Accuracy | 86.7 | SPM |
| Source-Free Domain Adaptation | VisDA-2017 | Accuracy | 89.4 | SPM |