Title :
Natural scene-illuminant estimation using the sensor correlation
Author :
Tominaga, Shoji ; Wandell, Brian A.
Author_Institution :
Dept. of Eng. Informatics, Osaka Electro-Commun. Univ., Japan
fDate :
1/1/2002 12:00:00 AM
Abstract :
This paper describes practical algorithms and experimental results concerning illuminant classification. Specifically, we review the sensor correlation algorithm for illuminant classification and we discuss four changes that improve the algorithm\´s estimation accuracy and broaden its applicability. First, we space the classification illuminants evenly along the reciprocal scale of color temperature, called "mired," rather than the original color-temperature scale. This improves the perceptual uniformity of the illuminant classification set. Second, we calculate correlation values between the image color gamut and the reference illuminant gamut, rather than between the image pixels and the illuminant gamuts. This change makes the algorithm more reliable. Third, we introduce a new image scaling operation to adjust for overall intensity differences between images. Fourth, we develop the three-dimensional classification algorithms using all three-color channels and compare this with the original two algorithms from the viewpoint of accuracy and computational efficiency. The image processing algorithms incorporating these changes are evaluated using a real image database with calibrated scene illuminants
Keywords :
colour graphics; correlation theory; image classification; image colour analysis; lighting; natural scenes; rendering (computer graphics); blackbody radiators; chromaticity difference; color balancing; color constancy; color rendering; color temperature; computer vision; estimation accuracy; illuminant classification; image color gamut; image scaling operation; natural scene-illuminant estimation; normalization operation; perceptual uniformity; real image database; reciprocal scale; reference illuminant gamut; sensor correlation algorithm; three-color channels; three-dimensional classification algorithms; Classification algorithms; Image databases; Image processing; Layout; Lighting; Object recognition; Pixel; Reflectivity; Sensor phenomena and characterization; Temperature sensors;
Journal_Title :
Proceedings of the IEEE