Automatic white balancing is an important function for digital cameras. It adjusts the color of an image and makes the
image look as if it is taken under canonical light. White balance is usually achieved by estimating the chromaticity of the
illuminant and then using the resulting estimate to compensate the image. The grey world method is the base of most
automatic white balance algorithms. It generally works well but fails when the image contains a large object or
background with a uniform color. The algorithm proposed in this paper solves the problem by considering only pixels
along edges and by imposing an illuminant constraint that confines the possible colors of the light source to a small
range during the estimation of the illuminant. By considering only edge points, we reduce the impact of the dominant
color on the illuminant estimation and obtain a better estimate. By imposing the illuminant constraint, we further
minimize the estimation error. The effectiveness of the proposed algorithm is tested thoroughly. Both objective and
subjective evaluations show that the algorithm is superior to other methods.
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