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Learning Texture Manifolds with the Periodic Spatial GAN

机译:使用周期性空间GaN学习纹理歧管

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This paper introduces a novel approach to texture synthesis based on generative adversarial networks (GAN) (Goodfellow et al., 2014), and call this technique Periodic Spatial GAN (PSGAN). The PSGAN has several novel abilities which surpass the current state of the art in texture synthesis. First, we can learn multiple textures, periodic or non-periodic, from datasets of one or more complex large images. Second, we show that the image generation with PSGANs has properties of a texture manifold: we can smoothly interpolate between samples in the structured noise space and generate novel samples, which lie perceptually between the textures of the original dataset. We make multiple experiments which show that PSGANs can flexibly handle diverse texture and image data sources, and the method is highly scalable and can generate output images of arbitrary large size.
机译:本文介绍了一种基于生成对冲网络(GAN)的纹理合成方法(Gan)(Goodfellow等,2014),并致电该技术定期空间GaN(PSGAN)。 PSGAN具有几种新颖的能力,其在纹理合成中超过了现有技术的现有状态。首先,我们可以从一个或多个复杂大图像的数据集中学习多个纹理,周期性或非定期性。其次,我们表明,使用Psgans的图像生成具有纹理歧管的属性:我们可以在结构化噪声空间中的样本之间平稳地插入,并生成新颖的样本,在最初数据集的纹理之间感知眉毛。我们制作多个实验,表明PSGANS可以灵活地处理各种纹理和图像数据源,并且该方法是高度可扩展的,并且可以产生任意大尺寸的输出图像。

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