The recent work of Gatys et al. demonstrated the power of Convolutional Neural Networks (CNN) in creating artistic fantastic imagery by separating and recombing the image content and style. This process of using CNN to migrate the semantic content of one image to different styles is referred to as Neural Style Transfer. Since then, Neural Style Transfer has become a trending topic both in academic literature and industrial applications. It is receiving increasing attention from computer vision researchers and several methods are proposed to either improve or extend the original neural algorithm proposed by Gatys et al. However, there is no comprehensive survey presenting and summarizing recent Neural Style Transfer literature. This review aims to provide an overview of the current progress towards Neural Style Transfer, as well as discussing its various applications and open problems for future research.
翻译:Gatys等人最近的工作表明,革命神经网络(CNN)通过分离和重现图像内容和风格,在创造艺术奇观图像方面的力量是巨大的。使用CNN将一个图像的语义内容迁移到不同风格的过程被称为神经风格传输。此后,神经风格传输成为学术文献和工业应用中的一个趋势性议题。计算机视觉研究人员日益关注,并提出了若干方法来改进或扩展Gatys等人提议的原始神经算法。然而,没有进行全面调查,介绍和概述最新的神经风格传输文献。这次审查的目的是概述当前向神经风格传输的进展,并讨论其各种应用和今后研究的公开问题。