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面向基于感知的图像处理的统一色彩空间。

Toward a unified color space for perception-based image processing.

机构信息

Institute of Printing Science and Technology, Technische Universität Darmstadt, Darmstadt, Germany.

出版信息

IEEE Trans Image Process. 2012 Mar;21(3):1153-68. doi: 10.1109/TIP.2011.2163522. Epub 2011 Aug 4.

DOI:10.1109/TIP.2011.2163522
PMID:21824846
Abstract

Image processing methods that utilize characteristics of the human visual system require color spaces with certain properties to operate effectively. After analyzing different types of perception-based image processing problems, we present a list of properties that a unified color space should have. Due to contradictory perceptual phenomena and geometric issues, a color space cannot incorporate all these properties. We therefore identify the most important properties and focus on creating opponent color spaces without cross contamination between color attributes (i.e., lightness, chroma, and hue) and with maximum perceptual uniformity induced by color-difference formulas. Color lookup tables define simple transformations from an initial color space to the new spaces. We calculate such tables using multigrid optimization considering the Hung and Berns data of constant perceived hue and the CMC, CIE94, and CIEDE2000 color-difference formulas. The resulting color spaces exhibit low cross contamination between color attributes and are only slightly less perceptually uniform than spaces optimized exclusively for perceptual uniformity. We compare the CIEDE2000-based space with commonly used color spaces in two examples of perception-based image processing. In both cases, standard methods show improved results if the new space is used. All color-space transformations and examples are provided as MATLAB codes on our website.

摘要

利用人类视觉系统特性的图像处理方法需要具有某些特性的颜色空间才能有效地运行。在分析了不同类型的基于感知的图像处理问题之后,我们提出了一个统一颜色空间应具有的属性列表。由于感知现象和几何问题的矛盾,颜色空间不能包含所有这些属性。因此,我们确定了最重要的属性,并专注于创建没有颜色属性(即亮度、色度和色调)之间交叉污染的对色空间,并且使用色差公式诱导最大的感知均匀性。颜色查找表定义了从初始颜色空间到新空间的简单转换。我们使用多网格优化来计算这些表,同时考虑恒觉色调的 Hung 和 Berns 数据以及 CMC、CIE94 和 CIEDE2000 色差公式。所得颜色空间在颜色属性之间具有低交叉污染,并且仅略低于专门针对感知均匀性优化的空间。我们在基于 CIEDE2000 的空间和两个基于感知的图像处理示例中常用的颜色空间进行了比较。在两种情况下,如果使用新空间,标准方法都会显示出改进的结果。所有颜色空间变换和示例都作为 MATLAB 代码在我们的网站上提供。

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