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Region-Semantics Preserving Image Synthesis

机译:保留区域语义的图像合成

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We study the problem of region-semantics preserving (RSP) image synthesis. Given a reference image and a region specification R, our goal is to train a model that is able to generate realistic and diverse images, each preserving the same semantics as that of the reference image within the region R. This problem is challenging because the model needs to (1) understand and preserve the marginal semantics of the reference region; i.e., the semantics excluding that of any subregion; and (2) maintain the compatibility of any synthesized region with the marginal semantics of the reference region. In this paper, we propose a novel model, called the fast region-semantics preserver (Fast-RSPer), for the RSP image synthesis problem. The Fast-RSPer uses a pre-trained GAN generator and a pre-trained deep feature extractor to generate images without undergoing a dedicated training phase. This makes it particularly useful for the interactive applications. We conduct extensive experiments using the real-world datasets and the results show that Fast-PSPer can synthesize realistic, diverse RSP images efficiently.
机译:我们研究了区域语义保留(RSP)图像合成问题。给定参考图像和区域规范R,我们的目标是训练一个能够生成逼真的图像的模型,每个图像都保留与区域R内的参考图像相同的语义。此问题具有挑战性,因为该模型需要(1)理解和保留参考区域的边际语义;即,不包括任何子区域的语义; (2)保持任何合成区域与参考区域边缘语义的兼容性。在本文中,我们针对RSP图像合成问题提出了一种称为快速区域语义保存器(Fast-RSPer)的新颖模型。 Fast-RSPer使用预先训练的GAN生成器和预先训练的深度特征提取器来生成图像,而无需经过专门的训练阶段。这使得它对于交互式应用程序特别有用。我们使用现实世界的数据集进行了广泛的实验,结果表明Fast-PSPer可以有效地合成逼真的,多样化的RSP图像。

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