DocumentCode :
3605767
Title :
Efficient and Robust Image Restoration Using Multiple-Feature L2-Relaxed Sparse Analysis Priors
Author :
Portilla, Javier ; Tristan-Vega, Antonio ; Selesnick, Ivan W.
Author_Institution :
Consejo Super. de Investig. Cientificas, Inst. de Opt., Madrid, Spain
Volume :
24
Issue :
12
fYear :
2015
Firstpage :
5046
Lastpage :
5059
Abstract :
We propose a novel formulation for relaxed analysis-based sparsity in multiple dictionaries as a general type of prior for images, and apply it for Bayesian estimation in image restoration problems. Our formulation of a ℓ2 -relaxed ℓ0 pseudo-norm prior allows for an especially simple maximum a posteriori estimation iterative marginal optimization algorithm, whose convergence we prove. We achieve a significant speedup over the direct (static) solution by using dynamically evolving parameters through the estimation loop. As an added heuristic twist, we fix in advance the number of iterations, and then empirically optimize the involved parameters according to two performance benchmarks. The resulting constrained dynamic method is not just fast and effective, it is also highly robust and flexible. First, it is able to provide an outstanding tradeoff between computational load and performance, in visual and objective, mean square error and structural similarity terms, for a large variety of degradation tests, using the same set of parameter values for all tests. Second, the performance benchmark can be easily adapted to specific types of degradation, image classes, and even performance criteria. Third, it allows for using simultaneously several dictionaries with complementary features. This unique combination makes ours a highly practical deconvolution method.
Keywords :
Bayes methods; deconvolution; image restoration; iterative methods; maximum likelihood estimation; mean square error methods; optimisation; Bayesian estimation; L2-relaxed L0 pseudo-norm prior; computational load; constrained dynamic method; deconvolution method; dynamically evolving parameters; estimation loop; image restoration; iterative marginal optimization; maximum a posteriori estimation; mean square error; multiple-feature L2-relaxed sparse analysis priors; structural similarity terms; Convergence; Dictionaries; Estimation; Image restoration; Kernel; Optimization; Redundancy; Image restoration; L2-relaxed L0 pseudo norm; L2-relaxed sparse analysis priors; fast constrained dynamic algorithm; maximum a posteriori estimation; multiple representations; robust tunable parameters;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2015.2478405
Filename :
7265041
Link To Document :
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