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Cross-Domain Learning with Normalizing Flow

Chi Wang (Queen's University Belfast); Jian Gao (Queen's University Belfast); Yang Hua (Queen's University Belfast); Hui Wang (Queen's University Belfast)

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06 Jun 2023

Cross-domain learning aims to transfer knowledge learned from one or more datasets to other datasets in different domains, so that less data will be required for learning in new tasks and datasets. One big challenge in cross-domain learning is to effectively synergize the knowledge learning between domains. In this paper, we propose a new solution to address this challenge using Normalizing Flow, named as DomainFlow, which works as a learned mapping to establish knowledge sharing between source and target domains. The learned flow encourages the posterior distributions in multi-domain learning to be better aligned, leading to better performance in the target domain tasks. We conduct extensive experiments on three representative cross-domain learning tasks: unsupervised domain adaptation, domain generalization and zero-shot sketch-based image retrieval, which demonstrates that with DomainFlow, the overall performance on these diverse tasks can all be improved.

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