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The Surprising Effectiveness of Linear Unsupervised Image-to-Image Translation

机译:线性无监督图像到图像转换的令人惊讶的效果

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Unsupervised image-to-image translation is an inherently ill-posed problem. Recent methods based on deep encoder-decoder architectures have shown impressive results, but we show that they only succeed due to a strong locality bias, and they fail to learn very simple nonlocal transformations (e.g. mapping upside down faces to upright faces). When the locality bias is removed, the methods are too powerful and may fail to learn simple local transformations. In this paper we introduce linear encoder-decoder architectures for unsupervised image to image translation. We show that learning is much easier and faster with these architectures and yet the results are surprisingly effective. In particular, we show a number of local problems for which the results of the linear methods are comparable to those of state-of-the-art architectures but with a fraction of the training time, and a number of nonlocal problems for which the state-of-the-art fails while linear methods succeed.
机译:无监督的图像到图像转换是一个本质上不良的问题。 基于深度编码器解码器架构的最近方法表明了令人印象深刻的结果,但我们表明他们才由于强大的地区偏见而成功,并且他们未能学习非常简单的非局部变换(例如,覆盖面向直立面的覆盖面)。 当删除局部偏差时,该方法太强大,可能无法学习简单的本地转换。 在本文中,我们向图像转换引入无监督图像的线性编码器解码器架构。 我们展示了这些架构更容易和更快的学习,但结果令人惊讶地有效。 特别是,我们展示了许多局部问题,其中线性方法的结果与最先进的架构相当,但是培训时间的一小部分,以及州的许多非局部问题 -Of-art失败,而线性方法成功。

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