4.3 Article

IMAGE DENOISING: LEARNING THE NOISE MODEL VIA NONSMOOTH PDE-CONSTRAINED OPTIMIZATION

Journal

INVERSE PROBLEMS AND IMAGING
Volume 7, Issue 4, Pages 1183-1214

Publisher

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/ipi.2013.7.1183

Keywords

Image denoising; noise distribution; PDE-constrained optimization; Huber regularization

Funding

  1. Alexander von Humboldt Foundation
  2. Cambridge Centre for Analysis (CCA)
  3. Royal Society International Exchanges Award [IE110314]
  4. EPSRC [EP/J009539/1]
  5. EPSRC / Isaac Newton Trust
  6. King Abdullah University of Science and Technology (KAUST) [KUK-I1-007-43]
  7. Engineering and Physical Sciences Research Council [EP/J009539/1] Funding Source: researchfish

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We propose a nonsmooth PDE-constrained optimization approach for the determination of the correct noise model in total variation (TV) image denoising. An optimization problem for the determination of the weights corresponding to different types of noise distributions is stated and existence of an optimal solution is proved. A tailored regularization approach for the approximation of the optimal parameter values is proposed thereafter and its consistency studied. Additionally, the differentiability of the solution operator is proved and an optimality system characterizing the optimal solutions of each regularized problem is derived. The optimal parameter values are numerically computed by using a quasi-Newton method, together with semismooth Newton type algorithms for the solution of the TV-subproblems.

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