缩放绘画风格转移

IF 2.7 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Computer Graphics Forum Pub Date : 2024-07-24 DOI:10.1111/cgf.15155
Bruno Galerne, Lara Raad, José Lezama, Jean-Michel Morel
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引用次数: 0

摘要

神经风格转移(NST)是一种深度学习技术,它能从风格图像向内容图像进行前所未有的丰富风格转移。在将风格从绘画转移到图像时,它的效果尤其令人印象深刻。NST 最初是通过解决一个优化问题来实现的,即在保留内容图像局部几何特征的同时,匹配风格图像的全局统计数据。这种原始方法有两个主要缺点,一是计算成本高,二是输出图像的分辨率受限于对 GPU 内存的高要求。为了加速 NST 并生成更大尺寸的图像,人们提出了许多解决方案。然而,我们的调查显示,在绘画风格转移的背景下,这些加速方法都会影响所生成图像的质量。事实上,绘画风格的转换是一项复杂的任务,涉及不同尺度的特征,从调色板和构图风格到精细笔触和画布纹理。本文为解决超高分辨率(UHR)图像的原始全局优化问题提供了一种解决方案,从而在前所未有的图像尺寸下实现多尺度 NST。这是通过对 VGG 网络的每个前向和后向通路的计算进行空间定位来实现的。广泛的定性和定量比较以及感知研究表明,我们的方法能为这种高分辨率绘画风格提供无与伦比的风格转移质量。通过仔细比较,我们发现最先进的快速方法仍然容易产生伪影,这表明快速绘画风格转换仍然是一个有待解决的问题。
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Scaling Painting Style Transfer

Neural style transfer (NST) is a deep learning technique that produces an unprecedentedly rich style transfer from a style image to a content image. It is particularly impressive when it comes to transferring style from a painting to an image. NST was originally achieved by solving an optimization problem to match the global statistics of the style image while preserving the local geometric features of the content image. The two main drawbacks of this original approach is that it is computationally expensive and that the resolution of the output images is limited by high GPU memory requirements. Many solutions have been proposed to both accelerate NST and produce images with larger size. However, our investigation shows that these accelerated methods all compromise the quality of the produced images in the context of painting style transfer. Indeed, transferring the style of a painting is a complex task involving features at different scales, from the color palette and compositional style to the fine brushstrokes and texture of the canvas. This paper provides a solution to solve the original global optimization for ultra-high resolution (UHR) images, enabling multiscale NST at unprecedented image sizes. This is achieved by spatially localizing the computation of each forward and backward passes through the VGG network. Extensive qualitative and quantitative comparisons, as well as a perceptual study, show that our method produces style transfer of unmatched quality for such high-resolution painting styles. By a careful comparison, we show that state-of-the-art fast methods are still prone to artifacts, thus suggesting that fast painting style transfer remains an open problem.

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来源期刊
Computer Graphics Forum
Computer Graphics Forum 工程技术-计算机:软件工程
CiteScore
5.80
自引率
12.00%
发文量
175
审稿时长
3-6 weeks
期刊介绍: Computer Graphics Forum is the official journal of Eurographics, published in cooperation with Wiley-Blackwell, and is a unique, international source of information for computer graphics professionals interested in graphics developments worldwide. It is now one of the leading journals for researchers, developers and users of computer graphics in both commercial and academic environments. The journal reports on the latest developments in the field throughout the world and covers all aspects of the theory, practice and application of computer graphics.
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