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arxiv: 1908.00274 · v1 · pith:FKUQ2HQCnew · submitted 2019-08-01 · 💻 cs.CV · cs.LG· eess.IV

Content and Colour Distillation for Learning Image Translations with the Spatial Profile Loss

classification 💻 cs.CV cs.LGeess.IV
keywords networksimageadditionalcolourcontentdistillationdriveimage-to-image
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Generative adversarial networks has emerged as a defacto standard for image translation problems. To successfully drive such models, one has to rely on additional networks e.g., discriminators and/or perceptual networks. Training these networks with pixel based losses alone are generally not sufficient to learn the target distribution. In this paper, we propose a novel method of computing the loss directly between the source and target images that enable proper distillation of shape/content and colour/style. We show that this is useful in typical image-to-image translations allowing us to successfully drive the generator without relying on additional networks. We demonstrate this on many difficult image translation problems such as image-to-image domain mapping, single image super-resolution and photo realistic makeup transfer. Our extensive evaluation shows the effectiveness of the proposed formulation and its ability to synthesize realistic images. [Code release: https://github.com/ssarfraz/SPL]

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