A stable method solving the total variation dictionary model with $L^\infty$ constraints
Author(s) -
Liyan Ma,
Lionel Moisan,
Jian Yu,
Tieyong Zeng
Publication year - 2014
Publication title -
inverse problems and imaging
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.755
H-Index - 40
eISSN - 1930-8345
pISSN - 1930-8337
DOI - 10.3934/ipi.2014.8.507
Subject(s) - regularization (linguistics) , image restoration , total variation denoising , fidelity , differentiable function , computer science , dual (grammatical number) , algorithm , image (mathematics) , mathematical optimization , mathematics , image processing , artificial intelligence , art , telecommunications , mathematical analysis , literature
International audienceImage restoration plays an important role in image processing, and numerous approaches have been proposed to tackle this problem. This paper presents a modified model for image restoration, that is based on a combination of Total Variation (TV) and Dictionary approaches. Since the well-known TV regularization is non-differentiable, the proposed method utilizes its dual formulation instead of its approximation in order to exactly preserve its properties. The data-fidelity term combines the one commonly used in image restoration and a wavelet thresholding based term. Then, the resulting optimization problem is solved via a first-order primal-dual algorithm. Numerical experiments demonstrate the good performance of the proposed model. In a last variant, we replace the classical TV by the nonlocal TV regularization, which results in a much higher quality of restoration
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