Removal of Glass Reflection Using TV-Retinex Model

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The Retinex model is mainly used to removal of unfavorable illumination effects from images. In this paper, the Retinex model combined with the total variation regularization (TV-Retinex) is presented to removal of glass reflection that can be solved by a fast computational approach based on the split Bregman iteration. Experiments demonstrated that the proposed method can effectively reduce this kind of artifact as well as preserve the edge and detailed information.

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475-480

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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