This paper deals with Che unsupervised edge-preserving restoration of images. when MRF models with explicit lines are considered. The approach adopted is based on thè maximization of the posterior distribution with respect lo the line fleld and ihe parameters. while the intensity field is assumed clamped to the maximizer of thè posterior itself. given thè current values of the lines and thè parameters. This enables thè application of a mixed-annealing algorithm for the MAP estimation of the image field. and of MCMC techniques, over binary variables only, for the simultaneous ML estimation of the parameters. The whole procedure is nearly as fast as a single supervised MAP restoration.
Joint map image restoration and ML parameter estimation using MRF models with explicit lines
Tonazzini A;Minutoli S
1997
Abstract
This paper deals with Che unsupervised edge-preserving restoration of images. when MRF models with explicit lines are considered. The approach adopted is based on thè maximization of the posterior distribution with respect lo the line fleld and ihe parameters. while the intensity field is assumed clamped to the maximizer of thè posterior itself. given thè current values of the lines and thè parameters. This enables thè application of a mixed-annealing algorithm for the MAP estimation of the image field. and of MCMC techniques, over binary variables only, for the simultaneous ML estimation of the parameters. The whole procedure is nearly as fast as a single supervised MAP restoration.File | Dimensione | Formato | |
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