Minimisation and Parameter Estimation in Image Restoration Variational Models with ℓ1-Constraints

Authors

  • M. Tao

DOI:

https://doi.org/10.4208/eajam.210117.060817a

Keywords:

Parameter selection, $ℓ_1$-Constraints, alternating direction method of multipliers, impulsive noise, image processing.

Abstract

Minimisation of the total variation regularisation for linear operators under $ℓ_1$-constraints applied to image restoration is considered, and relationships between the Lagrange multiplier for a constrained model and the regularisation parameter in an unconstrained model are established. A constrained $ℓ_1$-problem reformulated as a separable convex problem is solved by the alternating direction method of multipliers that includes two sequences, converging to a restored image and the “optimal" regularisation parameter. This allows blurry images to be recovered, with a simultaneous estimation of the regularisation parameter. The noise level parameter is estimated, and numerical experiments illustrate the efficiency of the new approach.

Published

2018-09-17

Issue

Section

Articles