CVMay 19, 2016

A Geometric Approach to Color Image Regularization

arXiv:1605.05977v1
Originality Incremental advance
AI Analysis

This addresses color consistency issues in image processing for applications like restoration, though it is an incremental improvement over existing vectorial total variation methods.

The paper tackles color artifacts in image filtering by introducing a vectorial total variation method with a novel coupling between color channels, achieving state-of-the-art restoration quality in denoising, deblurring, and inpainting.

We present a new vectorial total variation method that addresses the problem of color consistent image filtering. Our approach is inspired from the double-opponent cell representation in the human visual cortex. Existing methods of vectorial total variation regularizers have insufficient (or no) coupling between the color channels and thus may introduce color artifacts. We address this problem by introducing a novel coupling between the color channels related to a pullback-metric from the opponent space to the data (RGB color) space. Our energy is a non-convex, non-smooth higher-order vectorial total variation approach and promotes color consistent image filtering via a coupling term. For a convex variant, we show well-posedness and existence of a solution in the space of vectorial bounded variation. For the higher-order scheme we employ a half-quadratic strategy, which model the non-convex energy terms as the infimum of a sequence of quadratic functions. In experiments, we elaborate on traditional image restoration applications of inpainting, deblurring and denoising. Regarding the latter, we demonstrate state of the art restoration quality with respect to structure coherence and color consistency.

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