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ImaGAN: Unsupervised Training of Conditional Joint CycleGAN for Transferring Style with Core Structures in Content Preserved

机译:ImaGAN:有条件的联合CycleGAN的无监督训练,用于在内容保留中转移具有核心结构的样式

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摘要

This paper considers conditional image generation that merges the structure of one object with the style of another. In short, the style of an image has been substituted or replaced by the style of another image. An architecture for extracting the structure of one image and another architecture for merging the extracted structure and the style of another image is considered. The proposed ImaGAN architecture consists of two networks: (1) style removal network R that removes style information and leaves only the edge information and (2) the generation network G that fills the extracted structure with the style of another image. This architecture allows various pairing of style and structure which would not have been possible with image-to-image translation method. This architecture incurs minimal classification error compared prior style transfer and domain transfer algorithms. Experimental result using edges2handbags and edges2shoes dataset reveal that ImaGAN can transfer the style of one image to another without distorting the target structure.
机译:本文认为有条件的图像生成,将一个对象的结构与另一个对象的结构合并。简而言之,图像的风格已经被另一个图像的样式替换或替换。考虑用于提取一个图像结构的架构和用于合并提取的结构的另一架构和另一图像的样式。所提出的Imagan架构由两个网络组成:(1)样式删除网络R,其删除样式信息并仅离开边缘信息和(2)与另一图像的样式填充提取的结构的生成网络G。这种架构允许使用图像到图像翻译方法不可能进行各种样式和结构。该体系结构突出了最小的分类错误,而是比较了现有式传输和域传输算法。使用Edges2handBags和Edge2shoes数据集的实验结果显示,Imagan可以在不扭曲目标结构的情况下将一个图像的样式传输到另一个图像。

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