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Integrating Categorical Semantics into Unsupervised Domain Translation

2020-10-03ICLR 2021Unverified0· sign in to hype

Samuel Lavoie, Faruk Ahmed, Aaron Courville

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Abstract

While unsupervised domain translation (UDT) has seen a lot of success recently, we argue that mediating its translation via categorical semantic features could broaden its applicability. In particular, we demonstrate that categorical semantics improves the translation between perceptually different domains sharing multiple object categories. We propose a method to learn, in an unsupervised manner, categorical semantic features (such as object labels) that are invariant of the source and target domains. We show that conditioning the style encoder of unsupervised domain translation methods on the learned categorical semantics leads to a translation preserving the digits on MNISTSVHN and to a more realistic stylization on SketchesReals.

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