Unsupervised Domain Generalization by Learning a Bridge Across Domains (2112.02300v2)
Abstract: The ability to generalize learned representations across significantly different visual domains, such as between real photos, clipart, paintings, and sketches, is a fundamental capacity of the human visual system. In this paper, different from most cross-domain works that utilize some (or full) source domain supervision, we approach a relatively new and very practical Unsupervised Domain Generalization (UDG) setup of having no training supervision in neither source nor target domains. Our approach is based on self-supervised learning of a Bridge Across Domains (BrAD) - an auxiliary bridge domain accompanied by a set of semantics preserving visual (image-to-image) mappings to BrAD from each of the training domains. The BrAD and mappings to it are learned jointly (end-to-end) with a contrastive self-supervised representation model that semantically aligns each of the domains to its BrAD-projection, and hence implicitly drives all the domains (seen or unseen) to semantically align to each other. In this work, we show how using an edge-regularized BrAD our approach achieves significant gains across multiple benchmarks and a range of tasks, including UDG, Few-shot UDA, and unsupervised generalization across multi-domain datasets (including generalization to unseen domains and classes).
- Sivan Harary (11 papers)
- Eli Schwartz (24 papers)
- Assaf Arbelle (26 papers)
- Peter Staar (24 papers)
- Shady Abu-Hussein (7 papers)
- Elad Amrani (7 papers)
- Roei Herzig (34 papers)
- Amit Alfassy (9 papers)
- Raja Giryes (156 papers)
- Hilde Kuehne (69 papers)
- Dina Katabi (37 papers)
- Kate Saenko (178 papers)
- Rogerio Feris (105 papers)
- Leonid Karlinsky (79 papers)