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Image Style Transfer in Deep Learning Networks

机译:深度学习网络中的图像样式转移

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Since Gatys et al. proved that the convolution neural network (CNN) can be used to generate new images with artistic styles by separating and recombining the styles and contents of images. Neural Style Transfer has attracted wide attention of computer vision researchers. This paper aims to provide an overview of the style transfer application deep learning network development process, and introduces the classical style migration model, on the basis of the research on the migration of style of the deep learning network for collecting and organizing, and put forward related to gathered during the investigation of the problem solution, finally some classical model in the image style to display and compare the results of migration.
机译:由于盖蒂斯等。证明了卷积神经网络(CNN)可以通过分离和重新组合图像的样式和内容来生成具有艺术风格的新图像。神经样式转换已引起计算机视觉研究人员的广泛关注。本文旨在对样式转移应用深度学习网络的发展过程进行概述,并在研究深度学习网络样式迁移以进行收集和组织的基础上,介绍经典的样式迁移模型,并提出在调查过程中收集有关的问题解决方案后,最后以图像样式的一些经典模型来显示和比较迁移结果。

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