Learning optimal spatially-dependent regularization parameters in Total Variation image restoration I

 

Authors
Cao, Van Chung
Format
Article
Status
publishedVersion
Description

We consider a bilevel optimization approach in function space for the choice ofspatially dependent regularization parameters in TV image restoration models. First- andsecond-order optimality conditions for the bilevel problem are studied, when the spatially-dependent parameter belongs to the Sobolev space H1(?). A combined Schwarz domaindecomposition-semismooth Newton method is proposed for the solution of the full op-timality system and local superlinear convergence of the semismooth Newton method isanalyzed. Exhaustive numerical computations are ?nally carried out to show the suitabilityof the approach.
Escuela Polit?cnica Nacional
https://www.researchgate.net/publication/301926366_Learning_optimal_spatially-dependent_regularization_parameters_in_total_variation_image_restoration

Publication Year
2016
Language
eng
Topic
LEARNING OPTIMAL
SPATIALLY-DEPENDENT
IMAGE RESTORATION
Repository
Repositorio SENESCYT
Get full text
http://repositorio.educacionsuperior.gob.ec/handle/28000/3421
Rights
openAccess
License
openAccess