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One-Sided Unsupervised Domain Mapping

Sagie Benaim
Lior Wolf
Abstract

In unsupervised domain mapping, the learner is given two unmatched datasets AA and BB. The goal is to learn a mapping GABG_{AB} that translates a sample in AA to the analog sample in BB. Recent approaches have shown that when learning simultaneously both GABG_{AB} and the inverse mapping GBAG_{BA}, convincing mappings are obtained. In this work, we present a method of learning GABG_{AB} without learning GBAG_{BA}. This is done by learning a mapping that maintains the distance between a pair of samples. Moreover, good mappings are obtained, even by maintaining the distance between different parts of the same sample before and after mapping. We present experimental results that the new method not only allows for one sided mapping learning, but also leads to preferable numerical results over the existing circularity-based constraint. Our entire code is made publicly available at https://github.com/sagiebenaim/DistanceGAN .

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