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Implicit pairs for boosting unpaired image-to-image translation

机译:隐含成对,用于提升未配对的图像到图像转换

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In image-to-image translation the goal is to learn a mapping from one image domain to another. In the case of supervised approaches the mapping is learned from paired samples. However, collecting large sets of image pairs is often either prohibitively expensive or not possible. As a result, in recent years more attention has been given to techniques that learn the mapping from unpaired sets.In our work, we show that injecting implicit pairs into unpaired sets strengthens the mapping between the two domains, improves the compatibility of their distributions, and leads to performance boosting of unsupervised techniques by up to 12% across several measurements.The competence of the implicit pairs is further displayed with the use of pseudo-pairs, i.e., paired samples which only approximate a real pair. We demonstrate the effect of the approximated implicit samples on image-to-image translation problems, where such pseudo-pairs may be synthesized in one direction, but not in the other. We further show that pseudo-pairs are significantly more effective as implicit pairs in an unpaired setting, than directly using them explicitly in a paired setting.
机译:在图像到图像到图像上的翻译中,目标是从一个图像域到另一个图像域中的映射。在监督方法的情况下,从配对的样本中学习映射。然而,收集大组图像对通常是昂贵的或不可能的。因此,近年来,已经提请更多关注从未配对的套装学习映射的技术。在我们的工作中,我们表明将隐式对注入未配对的组,增强了两个域之间的映射,提高了分布的兼容性,并导致在几次测量中促使无监督技术高达12%。使用伪对,即仅近似真实对的配对样本进一步显示隐式对的能力。我们展示了近似隐式样本对图像到图像转换问题的影响,其中这种伪对可以在一个方向上合成,但是不在另一个方向上。我们进一步表明,伪对在未配对的设置中的隐式对具有明显更有效,而不是直接在配对设置中明确使用它们。

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