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Comparison of Two Types of Color Transfer Algorithms in YUV and Lab Color Spaces

机译:YUV和Lab颜色空间中两种色彩传输算法的比较

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For the purpose of coloring the night-vision images captured by low-light image intensifiers or infrared thermal imagers, color transfer algorithms were used to transfer natural colors to these gray images. Most of the color transfer algorithms can be divided into two classes: global color transfer and point color transfer. In global color transfer algorithms, the means and variances of the initial false color image were adjusted according to those of the reference color image. In point color transfer algorithms, the matching points were determined between the grayscale image and the the reference color image. These two kinds of algorithms are always carried out in two common color spaces: YUV color space and Lab color space. The color space influences the performance of the color transfer algorithms. In this paper, several typical color transfer algorithms, including basic ones and multi-resolution ones, were carried out in different color spaces. The results show that global color transfer algorithms perform better in the YUV color space and the Lab space is more suitable for point color transfer algorithms. The biggest difference between these two color spaces is that the correlation between the channels of Lab space is much lower than that of YUV space. The global color transfer algorithms adjust the color components of the initial false color image with a uniform conversion, linear or non-linear ways. This process can benefit form the correlation between the channels, which is much higher in YUV space. However, the coloring process of the point color transfer algorithms is independent from the points matching process based on grayscale. This is the reason why the point color transfer algorithms should be implemented in the Lab space.
机译:出于着色由低光图像强化器或红外热成像仪捕获的夜视图像,使用颜色传输算法将自然颜色传递到这些灰色图像。大多数颜色传输算法可以分为两类:全局色彩传输和点颜色传输。在全局颜色传输算法中,根据参考彩色图像的那些调整初始伪彩色图像的装置和差异。在点颜色传输算法中,在灰度图像和参考颜色图像之间确定匹配点。这两种算法始终在两个常见的颜色空间中进行:YUV颜色空间和实验室颜色空间。颜色空间会影响颜色传输算法的性能。在本文中,在不同的颜色空间中进行了几种典型的颜色传输算法,包括基本和多分辨率。结果表明,全局色彩传输算法在YUV颜色空间中表现更好,实验室空间更适合点颜色传输算法。这两个颜色空间之间的最大区别是实验室空间通道之间的相关性远低于YUV空间的相应。全局色彩传输算法用均匀的转换,线性或非线性方式调整初始错误彩色图像的颜色分量。该过程可以益处在频道之间的相关性,在YUV空间中要高得多。然而,点颜色传输算法的着色过程独立于基于灰度的点匹配过程。这就是为什么要在实验室空间中实现点颜色传输算法的原因。

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