We propose a maximum a posteriori blind deconvolution approach using a Huber-Markov random-field model. Compared with the conventional maximum-likelihood method, our algorithm not only suppresses noise effectively but also significantly alleviates the artifacts produced by the deconvolution process. The performance of this method is demonstrated by computer simulations. © 2009 Optical Society of America.link_to_subscribed_fulltex
Abstract—In this work, we propose a novel method for the regularization of blind deconvolution algor...
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International audienceThis paper proposes an optimization-based blind image deconvolution method. Th...
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High quality digital images have become pervasive in modern scientific and everyday life — in areas ...
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Abstract—In this work, we propose a novel method for the regularization of blind deconvolution algor...
Abstract—This paper deals with blind separation of images from noisy linear mixtures with unknown co...
The aim of this work is to present a new and efficient optimization method for the solution of blind...
International audienceThis paper proposes a Bayesian approach for unsupervised image deconvolution w...
International audienceThis paper proposes an optimization-based blind image deconvolution method. Th...
In this paper the blind deconvolution problem is formulated using the variational framework. With it...
Image deblurring has long been modeled as a deconvolution problem. In the literature, the point-spre...
Image restoration and denoising is an essential preprocessing step for almost every subsequent task ...
The purpose of single image blind deconvolution is to estimate the unknown blur kernel from a single...
This paper tackles the problem of image deconvolution with joint estimation of PSF parameters and hy...
A new algorithm for Maximum likelihood blind image restoration is presented in this paper. It is obt...
Abstract. We present a general method for blind image deconvolution using Bayesian inference with su...
High quality digital images have become pervasive in modern scientific and everyday life — in areas ...
The presence of noise in digital images degrades the visual quality by corrupting the information as...
AbstractThe need for image restoration arises in many applications of various scientific disciplines...
Abstract—In this work, we propose a novel method for the regularization of blind deconvolution algor...
Abstract—This paper deals with blind separation of images from noisy linear mixtures with unknown co...
The aim of this work is to present a new and efficient optimization method for the solution of blind...