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Robust Nonparametric Distribution Transfer with Exposure Correction for Image Neural Style Transfer

机译:具有曝光修正的强大的非参数分布转移用于图像神经风格转移

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摘要

Image neural style transfer is a process of utilizing convolutional neural networks to render a content image based on a style image. The algorithm can compute a stylized image with original content from the given content image but a new style from the given style image. Style transfer has become a hot topic both in academic literature and industrial applications. The stylized results of current existing models are not ideal because of the color difference between two input images and the inconspicuous details of content image. To solve the problems, we propose two style transfer models based on robust nonparametric distribution transfer. The first model converts the color probability density function of the content image into that of the style image before style transfer. When the color dynamic range of the content image is smaller than that of style image, this model renders more reasonable spatial structure than the existing models. Then, an adaptive detail-enhanced exposure correction algorithm is proposed for underexposed images. Based this, the second model is proposed for the style transfer of underexposed content images. It can further improve the stylized results of underexposed images. Compared with popular methods, the proposed methods achieve the satisfactory qualitative and quantitative results.
机译:图像神经样式传输是利用卷积神经网络来渲染基于样式图像的内容图像的过程。该算法可以从给定的内容图像计算具有原始内容的程式化图像,而是来自给定样式图像的新样式。风格转移已成为学术文献和工业应用中的热门话题。由于两个输入图像和内容图像的不起眼细节,所当前现有型号的程式化结果并不理想。为解决问题,我们提出了一种基于强大的非参数分布转移的样式传输模型。第一种模型将内容图像的颜色概率密度函数转换为样式传输之前的样式图像的颜色概率密度函数。当内容图像的颜色动态范围小于样式图像时,该模型比现有模型更合理的空间结构。然后,提出了一种用于曝光图像的自适应细节增强的曝光校正算法。基于这一点,提出了第二种模型,用于揭开内容图像的风格转移。它可以进一步提高曝光图像的程式化结果。与流行方法相比,所提出的方法实现了令人满意的定性和定量结果。

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