Tan Robby T, Nishino Ko, Ikeuchi Katsushi
Department of Computer Science, The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo, 153-8505, Japan.
J Opt Soc Am A Opt Image Sci Vis. 2004 Mar;21(3):321-34. doi: 10.1364/josaa.21.000321.
Existing color constancy methods cannot handle both uniformly colored surfaces and highly textured surfaces in a single integrated framework. Statistics-based methods require many surface colors and become error prone when there are only a few surface colors. In contrast, dichromatic-based methods can successfully handle uniformly colored surfaces but cannot be applied to highly textured surfaces, since they require precise color segmentation. We present a single integrated method to estimate illumination chromaticity from single-colored and multicolored surfaces. Unlike existing dichromatic-based methods, the proposed method requires only rough highlight regions without segmenting the colors inside them. We show that, by analyzing highlights, a direct correlation between illumination chromaticity and image chromaticity can be obtained. This correlation is clearly described in "inverse-intensity chromaticity space," a novel two-dimensional space that we introduce. In addition, when Hough transform and histogram analysis is utilized in this space, illumination chromaticity can be estimated robustly, even for a highly textured surface.
现有的颜色恒常性方法无法在单一集成框架中同时处理均匀着色表面和高度纹理化表面。基于统计的方法需要许多表面颜色,并且当只有少数表面颜色时容易出错。相比之下,基于双色的方法可以成功处理均匀着色表面,但不能应用于高度纹理化表面,因为它们需要精确的颜色分割。我们提出了一种单一集成方法,用于从单色和多色表面估计照明色度。与现有的基于双色的方法不同,所提出的方法仅需要粗略的高光区域,而无需分割其中的颜色。我们表明,通过分析高光,可以获得照明色度与图像色度之间的直接相关性。这种相关性在我们引入的新颖二维空间“反强度色度空间”中得到了清晰描述。此外,当在该空间中利用霍夫变换和直方图分析时,即使对于高度纹理化表面,也可以稳健地估计照明色度。