2013
DOI: 10.1109/tmi.2013.2255883
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A Dictionary Learning Approach for Poisson Image Deblurring

Abstract: The restoration of images corrupted by blur and Poisson noise is a key issue in medical and biological image processing. While most existing methods are based on variational models, generally derived from a Maximum A Posteriori (MAP) formulation, recently sparse representations of images have shown to be efficient approaches for image recovery. Following this idea, we propose in this paper a model containing three terms: a patch-based sparse representation prior over a learned dictionary, the pixel-based total… Show more

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Cited by 87 publications
(10 citation statements)
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“…The K-SVD is the iterative process in which two consecutive steps take place sparse coding of the examples using the current dictionary and updating the dictionary atoms for optimum data fitting. Some other works as in [33], [34] follow the same workflow like that of K-SVD with variation in dictionary and optimization problem. The clustering-based sparse representation involves a cost function (double header 1 optimization problem) in which both structural structuring and dictionary learning is used as the regularizer.…”
Section: ) Sparsity-based Dictionary Learning Modelsmentioning
confidence: 99%
“…The K-SVD is the iterative process in which two consecutive steps take place sparse coding of the examples using the current dictionary and updating the dictionary atoms for optimum data fitting. Some other works as in [33], [34] follow the same workflow like that of K-SVD with variation in dictionary and optimization problem. The clustering-based sparse representation involves a cost function (double header 1 optimization problem) in which both structural structuring and dictionary learning is used as the regularizer.…”
Section: ) Sparsity-based Dictionary Learning Modelsmentioning
confidence: 99%
“…Sparse representation 1 5 is an important technique for pattern classification. The sparse representation-based methods 6 12 use a small number of atoms from a redundant dictionary to reconstruct a given signal. It is a critical issue that adaptively learns a dictionary with powerful representation and discrimination capabilities from training samples.…”
Section: Introductionmentioning
confidence: 99%
“…Zhang et al [33] combined the fractional-order TV with non-local TV to alleviate the staircase artifacts for the cartoon component as well as to preserve the details for the texture component. Ma et al [34] proposed a hybrid regularizer containing a patch-based sparsity promoting prior over a learned dictionary and a pixel-based total variation prior, but it requires additional strategies to reduce the high computational cost.…”
Section: Introductionmentioning
confidence: 99%