Image Priors for Image Deblurring with Uncertain Blur
Author(s) -
Daniele Perrone,
Avinash Ravichandran,
René Vidal,
Paolo Favaro
Publication year - 2012
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.26.114
Subject(s) - deblurring , image restoration , prior probability , image (mathematics) , artificial intelligence , computer science , computer vision , image processing , pattern recognition (psychology) , bayesian probability
We consider the problem of non-blind deconvolution of images corrupted by a blur that is not accurately known. We propose a method that exploits dictionary-based image priors and non Gaussian noise models to improve deblurring accuracy in the presence of an inexact blur. The proposed image priors express each image patch as a linear combination of atoms from a dictionary learned from patches extracted from the same image or from an image database. When applied to blurred images, this model imposes that patches that are similar in the blurred image retain the same similarity when deblurred. We perform image deblurring by imposing this prior model in an energy minimization scheme that also deals with outliers. Experimental results on publicly available databases show that our approach is able to remove artifacts such as oscillations, which are often introduced during the deblurring process when the correct blur is not known.
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