标准光源
色调
人工智能
色彩平衡
颜色恒定性
计算机视觉
灰色(单位)
颜色模型
分类
数学
国际商会简介
计算机科学
色空间
模式识别(心理学)
色差
颜色直方图
彩色图像
图像处理
图像(数学)
医学
GSM演进的增强数据速率
放射科
作者
Harumi Kawamura,Shunichi Yonemura,Jun Ohya,Norihiko Matsuura
摘要
This paper proposes a gray world assumption based method for estimating an illuminant color from an image by hue categorization. The gray world assumption hypothesizes that the average color of all the objects in a scene is gray. However, it is difficult to estimate an illuminant color correctly if the colors of the objects in a scene are dominated by certain colors. To solve this problem, our method uses the opponent color properties that the average of a pair of opponent colors is gray. Thus our method roughly categorizes the colors derived from the image based on hue and selects them one by one from the hue categories until selected colors satisfy the gray world assumption. In our experiments, we used three kinds of illuminants (i.e., CIE standard illuminants A and D65, and a fluorescent light) and two kinds of data sets. One data set satisfies the gray world assumption, and the other does not. Experiment results show that estimated illuminants are closer to the correct ones than those obtained with the conventional method and the estimation error for both using CIE standard illuminants A and D65 by our method are within the barely noticeable difference in human color perception.
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