DocumentCode :
981435
Title :
A segmentation-based regularization term for image deconvolution
Author :
Mignotte, Max
Author_Institution :
Dept. d´´Informatique et de Recherche Oper.nelle, Univ. de Montreal, Canada
Volume :
15
Issue :
7
fYear :
2006
fDate :
7/1/2006 12:00:00 AM
Firstpage :
1973
Lastpage :
1984
Abstract :
This paper proposes a new and original inhomogeneous restoration (deconvolution) model under the Bayesian framework for observed images degraded by space-invariant blur and additive Gaussian noise. In this model, regularization is achieved during the iterative restoration process with a segmentation-based a priori term. This adaptive edge-preserving regularization term applies a local smoothness constraint to pre-estimated constant-valued regions of the target image. These constant-valued regions (the segmentation map) of the target image are obtained from a preliminary Wiener deconvolution estimate. In order to estimate reliable segmentation maps, we have also adopted a Bayesian Markovian framework in which the regularized segmentations are estimated in the maximum a posteriori (MAP) sense with the joint use of local Potts prior and appropriate Gaussian conditional luminance distributions. In order to make these segmentations unsupervised, these likelihood distributions are estimated in the maximum likelihood sense. To compute the MAP estimate associated to the restoration, we use a simple steepest descent procedure resulting in an efficient iterative process converging to a globally optimal restoration. The experiments reported in this paper demonstrate that the discussed method performs competitively and sometimes better than the best existing state-of-the-art methods in benchmark tests.
Keywords :
Bayes methods; Gaussian distribution; Gaussian noise; Markov processes; deconvolution; image denoising; image restoration; image segmentation; iterative methods; maximum likelihood estimation; Bayesian Markovian framework; Gaussian conditional luminance distributions; adaptive edge-preserving regularization term; additive Gaussian noise; globally optimal restoration; image deconvolution; inhomogeneous restoration model; iterative restoration process; local Potts; local smoothness constraint; maximum a posteriori; maximum likelihood distributions; observed images; pre-estimated constant-valued regions; preliminary Wiener deconvolution estimation; segmentation map; segmentation-based a priori term; segmentation-based regularization term; space-invariant blur; steepest descent procedure; Additive noise; Bayesian methods; Benchmark testing; Deconvolution; Degradation; Gaussian noise; Image restoration; Image segmentation; Maximum likelihood estimation; Performance evaluation; Adaptive prior model; Bayesian estimation; Markovian model; Tikhonov regularization; image deconvolution or restoration; image segmentation; Algorithms; Artificial Intelligence; Bayes Theorem; Computer Simulation; Image Enhancement; Image Interpretation, Computer-Assisted; Information Storage and Retrieval; Markov Chains; Models, Statistical; Pattern Recognition, Automated; Regression Analysis; Reproducibility of Results; Sensitivity and Specificity;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2006.873446
Filename :
1643704
Link To Document :
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