Color Constancy Via Convex Kernel Optimization

Published: 2007, Last Modified: 11 Jan 2025ACCV (1) 2007EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: This paper introduces a novel convex kernel based method for color constancy computation with explicit illuminant parameter estimation. A simple linear render model is adopted and the illuminants in a new scene that contains some of the color surfaces seen in the training image are sequentially estimated in a global optimization framework. The proposed method is fully data-driven and initialization invariant. Nonlinear color constancy can also be approximately solved in this kernel optimization framework with piecewise linear assumption. Extensive experiments on real-scene images validate the practical performance of our method.
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