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Image style transfer using convolutional neural networks based on transfer learning

机译:基于转移学习的卷积神经网络图像风格转移

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The purpose of an image style transfer system is to extract the semantic image content from the target image and then using a texture transfer procedure display the semantic content of target image in the style of the source image. The uphill task in this context is to render the semantic content of an image but with the advent of convolutional neural networks, image representations have been made much more explicit. In this work, we explore the method for image style transfer using transfer learning from pre-trained models of convolutional neural networks (CNN). Use of these models gives us the power to produce images of a high perceptual quality that are a union of the content of an arbitrary image and the appearance of renowned artworks. Further, this paper compares pre-trained CNN models for image style transfer task and highlights the potential of CNN to deliver appealing images using modern manipulation techniques.
机译:图像样式传递系统的目的是从目标图像中提取语义图像内容,然后使用纹理传递过程以源图像的样式显示目标图像的语义内容。在这种情况下,艰巨的任务是渲染图像的语义内容,但是随着卷积神经网络的出现,图像表示已变得更加明确。在这项工作中,我们探索了使用来自卷积神经网络(CNN)的预训练模型的转移学习进行图像样式转移的方法。这些模型的使用使我们能够产生高感知质量的图像,这些图像是任意图像的内容和著名艺术品的外观的结合。此外,本文比较了用于图像样式转换任务的预训练CNN模型,并强调了CNN使用现代操纵技术提供引人入胜的图像的潜力。

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