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Image Artistic Style Migration Based on Convolutional Neural Network

机译:基于卷积神经网络的图像艺术风格迁移

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In recent years, the wave of artificial intelligence technology, which is guided by deep learning, is becoming more and more widely applied to all fields of society. Among them, the cross collision between artificial intelligence and art has attracted great attention in related research fields. The migration of image artistic style based on deep learning has become one of the active research topics. In this paper, a simple and effective method is presented for image artistic style migration. That is, firstly, we specify an input image as an original image (it is also called a content image); at the same time, another or more images are designated as the desired image style. And then, by constructing the network model based on convolutional neural network (CNN), the image style can be transformed while the content information of the content image is guaranteed, so that the final output image shows the perfect combination of the content of the input image and the style of the style image. The core of the proposed artistic style migration strategy is the construction of an unified CNN framework. Here, a generation network is set up based on a deep residual network and the VGG-19 network model is applied to built a loss network. The experimental results on an application system show that our proposed method achieves a good synthesis effect for image artistic style migration.
机译:近年来,以深度学习为指导的人工智能技术浪潮正越来越广泛地应用于社会的各个领域。其中,人工智能与艺术的交叉碰撞在相关研究领域引起了极大的关注。基于深度学习的图像艺术风格的迁移已成为活跃的研究主题之一。本文提出了一种简单有效的图像艺术风格迁移方法。也就是说,首先,我们将输入图像指定为原始图像(也称为内容图像);同时,将另一个或多个图像指定为所需的图像样式。然后,通过构建基于卷积神经网络(CNN)的网络模型,可以在保证内容图像内容信息的同时变换图像样式,从而使最终输出图像显示输入内容的完美组合图像和样式图像的样式。拟议的艺术风格迁移策略的核心是构建统一的CNN框架。在此,基于深度残差网络建立了发电网络,并使用VGG-19网络模型构建了损耗网络。在应用系统上的实验结果表明,本文提出的方法对图像艺术风格的迁移具有良好的综合效果。

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