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Style Transfer Via Texture Synthesis

机译:通过纹理合成进行样式转移

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摘要

Style transfer is a process of migrating a style from a given image to the content of another, synthesizing a new image, which is an artistic mixture of the two. Recent work on this problem adopting convolutional neural-networks (CNN) ignited a renewed interest in this field, due to the very impressive results obtained. There exists an alternative path toward handling the style transfer task, via the generalization of texture synthesis algorithms. This approach has been proposed over the years, but its results are typically less impressive compared with the CNN ones. In this paper, we propose a novel style transfer algorithm that extends the texture synthesis work of Kwatra et al. (2005), while aiming to get stylized images that are closer in quality to the CNN ones. We modify Kwatra’s algorithm in several key ways in order to achieve the desired transfer, with emphasis on a consistent way for keeping the content intact in selected regions, while producing hallucinated and rich style in others. The results obtained are visually pleasing and diverse, shown to be competitive with the recent CNN style transfer algorithms. The proposed algorithm is fast and flexible, being able to process any pair of content + style images.
机译:样式转移是将样式从给定图像迁移到另一个图像的内容,合成一个新图像的过程,这是两者的艺术混合。由于获得了非常令人印象深刻的结果,采用卷积神经网络(CNN)对该问题的最新研究激发了对该领域的新兴趣。通过纹理合成算法的泛化,存在一条处理样式转换任务的替代方法。多年来已经提出了这种方法,但是与CNN相比,其结果通常不那么令人印象深刻。在本文中,我们提出了一种新颖的样式转移算法,该算法扩展了Kwatra等人的纹理合成工作。 (2005年),同时旨在获得风格更接近CNN图像的风格化图像。为了达到理想的传输效果,我们以几种关键方式修改了Kwatra的算法,着重强调了一种一致的方式来使内容在选定区域中保持完整,同时在其他地方产生幻觉和丰富的风格。获得的结果在视觉上令人愉悦且多样化,显示出与最新的CNN样式转换算法相比具有竞争力。提出的算法快速灵活,能够处理任何一对内容+样式图像。

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