DocumentCode :
105723
Title :
Exemplar-Based Color Constancy and Multiple Illumination
Author :
Joze, Hamid Reza Vaezi ; Drew, Mark S.
Author_Institution :
Sch. of Comput. Sci., Simon Fraser Univ., Burnaby, BC, Canada
Volume :
36
Issue :
5
fYear :
2014
fDate :
May-14
Firstpage :
860
Lastpage :
873
Abstract :
Exemplar-based learning or, equally, nearest neighbor methods have recently gained interest from researchers in a variety of computer science domains because of the prevalence of large amounts of accessible data and storage capacity. In computer vision, these types of technique have been successful in several problems such as scene recognition, shape matching, image parsing, character recognition, and object detection. Applying the concept of exemplar-based learning to the problem of color constancy seems odd at first glance since, in the first place, similar nearest neighbor images are not usually affected by precisely similar illuminants and, in the second place, gathering a dataset consisting of all possible real-world images, including indoor and outdoor scenes and for all possible illuminant colors and intensities, is indeed impossible. In this paper, we instead focus on surfaces in the image and address the color constancy problem by unsupervised learning of an appropriate model for each training surface in training images. We find nearest neighbor models for each surface in a test image and estimate its illumination based on comparing the statistics of pixels belonging to nearest neighbor surfaces and the target surface. The final illumination estimation results from combining these estimated illuminants over surfaces to generate a unique estimate. We show that it performs very well, for standard datasets, compared to current color constancy algorithms, including when learning based on one image dataset is applied to tests from a different dataset. The proposed method has the advantage of overcoming multi-illuminant situations, which is not possible for most current methods since they assume the color of the illuminant is constant all over the image. We show a technique to overcome the multiple illuminant situation using the proposed method and test our technique on images with two distinct sources of illumination using a multiple-illuminant color constancy - ataset. The concept proposed here is a completely new approach to the color constancy problem and provides a simple learning-based framework.
Keywords :
computer science; computer vision; image colour analysis; pattern classification; unsupervised learning; accessible data; computer science; computer vision; exemplar-based color constancy; exemplar-based learning; image dataset; multiple illumination; nearest neighbor methods; real-world images; storage capacity; unsupervised learning; Estimation; Feature extraction; Image color analysis; Light sources; Lighting; Surface treatment; Training; Color Constancy; Color constancy; Exemplar Based Learning; Multiple Illuminants; exemplar based learning; multiple illuminants;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2013.169
Filename :
6588227
Link To Document :
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