不同光照下基于调色板的自然图像重着色

Xinhua Liu, Lu Zhu, Shuchang Xu, Shunpeng Du
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引用次数: 0

摘要

基于调色板的图像重着色是颜色处理领域的一种流行方法,它将图像的主色直观地转换为用户可以直接操作的调色板。然而,传统的基于调色板的图像重着色方法对于不同光照下的自然图像,受光照的影响,提取的调色板上的颜色可能过于接近,重着色后会造成颜色溢出和严重失真。提出了一种基于内禀分解的调色板重着色算法。利用一种基于不同光照图像的无监督深度学习内在分解系统,将自然图像分解为反射图像和阴影图像。仅对反射图像进行重新着色,再与底纹图像相结合,得到自然的重新着色图像。同时,为了平衡精度和操作方便性,我们使用间隙统计算法来获得调色板尺寸。自然图像的重着色结果显示了该方法在色彩传递质量和用户体验方面的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Palette-Based Recoloring of Natural Images Under Different Illumination
Palette-based image recoloring is a popular method in the field of color processing by Intuitively converting the main color of the image into a palette that the user can directly manipulate. However, the traditional palette-based image recoloring method for natural images under different illuminations is affected by the light, colors on the extracted palette may be too close, which will cause color overflow and serious distortion after recoloring. This paper proposes a palette-based recoloring algorithm based on intrinsic decomposition. By using an intrinsic decomposition system based on different illumination images for unsupervised deep learning, natural image is decomposed into reflectance image and shading image. Only the reflectance image is recolored, and then combined with the shading image to obtain a natural recolored image. At the same time, in order to balance accuracy and ease of operation, we use the gap statistic algorithm to get the palette size. The recoloring results of natural images show the superiority of this method in terms of color transfer quality and user experience.
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