Title :
Color Constancy with Spatio-Spectral Statistics
Author :
Chakrabarti, Ayan ; Hirakawa, Keigo ; Zickler, Todd
Author_Institution :
Sch. of Eng. & Appl. Sci., Harvard Univ., Cambridge, MA, USA
Abstract :
We introduce an efficient maximum likelihood approach for one part of the color constancy problem: removing from an image the color cast caused by the spectral distribution of the dominating scene illuminant. We do this by developing a statistical model for the spatial distribution of colors in white balanced images (i.e., those that have no color cast), and then using this model to infer illumination parameters as those being most likely under our model. The key observation is that by applying spatial band-pass filters to color images one unveils color distributions that are unimodal, symmetric, and well represented by a simple parametric form. Once these distributions are fit to training data, they enable efficient maximum likelihood estimation of the dominant illuminant in a new image, and they can be combined with statistical prior information about the illuminant in a very natural manner. Experimental evaluation on standard data sets suggests that the approach performs well.
Keywords :
band-pass filters; image colour analysis; maximum likelihood estimation; color constancy problem; color images; dominating scene illuminant; maximum likelihood approach; maximum likelihood estimation; spatial band-pass filters; spatio-spectral statistics; spectral distribution; statistical prior information; white balanced images; Color; Covariance matrix; Image color analysis; Lighting; Maximum likelihood estimation; Training; Color constancy; illumination statistics.; maximum likelihood; spatial correlations; statistical modeling;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2011.252