Taesung Park, Ming-Yu Liu, Ting-Chun Wang, Jun-Yan Zhu
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引用次数: 96

摘要

我们提出了基于gan的图像合成模型GauGAN,该模型可以在给定输入语义布局的情况下生成逼真的图像。它建立在空间自适应规范化的基础上,这是一种简单但有效的规范化层。以前的方法直接将语义布局作为输入馈送到深度网络,然后通过卷积层、归一化层和非线性层进行处理。我们表明,这是次优的,因为规范化层倾向于“洗掉”语义信息。为了解决这个问题,我们建议使用输入布局通过空间自适应学习转换来调制规范化层中的激活。我们提出的方法大大优于以前的方法。此外,该方法还实现了对合成图像样式的自然扩展控制。给定一个风格指南图像,我们的风格编码器网络将其捕获为一个潜在代码,我们的图像生成器网络通过空间自适应归一化将其与语义布局结合起来,生成一个既尊重指南图像风格又尊重语义布局内容的逼真图像。我们的方法将使没有绘画技能的人有效地表达他们的想象力。GauGAN在推理时间上是一个简单的卷积神经网络。它在大多数现代GPU卡上实时运行。GauGAN是最近在推进gan用于实时图像渲染方面的研究成果之一。我们相信这是SIGGRAPH和实时社区感兴趣的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GauGAN
We propose GauGAN, a GAN-based image synthesis model that can generate photo-realistic images given an input semantic layout. It is built on spatially-adaptive normalization, a simple but effective normalization layer. Previous methods directly feed the semantic layout as input to the deep network, which is then processed through stacks of convolution, normalization, and non-linearity layers. We show that this is sub-optimal as the normalization layers tend to “wash away'' semantic information. To address the issue, we propose using the input layout for modulating the activations in normalization layers through a spatiallyadaptive, learned transformation. Our proposed method outperforms the previous methods by a large margin. Furthermore, the new method enables natural extension to control the style of the synthesized images. Given a style guide image, our style encoder network captures the style into a latent code, which our image generator network combines with the semantic layout via spatially-adaptive normalization to generate a photo-realistic image that respects both the style of the guide image and content of the semantic layout. Our method will enable people without drawing skills to effectively express their imagination. GauGAN in the inference time is a simple convolutional neural network. It runs real-time on most modern GPU cards. GauGAN is one of the recent research efforts in advancing GANs for real-time image rendering. We believe this is of interest to the SIGGRAPH and real-time communities.
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