This paper addresses the study of a class of variational models for the image restoration inverse problem. The main assumption is that the additive noise model and the image gradient magnitudes follow a generalized normal (GN) distribution, whose very flexible probability density function (pdf) is characterized by two parameters—typically unknown in real world applications—determining its shape and scale. The unknown image and parameters, which are both modeled as random variables in light of the hierarchical Bayesian perspective adopted here, are jointly automatically estimated within a Maximum A Posteriori (MAP) framework. The hypermodels resulting from the selected prior, likelihood and hyperprior pdfs are minimized by means of an altern...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
A total variation model for image restoration is introduced. The model utilizes a spatially dependen...
We propose a novel variational framework for image restoration based on the assumption that noise is...
This paper addresses the study of a class of variational models for the image restoration inverse pr...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In this paper we propose novel algorithms for total variation (TV) based image restoration and param...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We propose a new space-variant regularisation term for variational image restoration based on the as...
Multi-scale total variation models for image restoration are introduced. The models utilize a spatia...
International audienceIn this paper, we focus on a globally variational method to restore noisy imag...
In this paper, we focus on a globally variational method to restore noisy images corrupted by multip...
none4noWe propose two new variational models aimed to outperform the popular total variation (TV) mo...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
Abstract. A multi-scale total variation model for image restoration is introduced. The model utilize...
none3siImage restoration is an inverse problem that has been widely studied in recent years. The tot...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
A total variation model for image restoration is introduced. The model utilizes a spatially dependen...
We propose a novel variational framework for image restoration based on the assumption that noise is...
This paper addresses the study of a class of variational models for the image restoration inverse pr...
In image formation, the observed images are usually blurred by optical instruments and/or transfer ...
In this paper we propose novel algorithms for total variation (TV) based image restoration and param...
We present a denoising method aimed at restoring images corrupted by additive noise based on the as...
We propose a new space-variant regularisation term for variational image restoration based on the as...
Multi-scale total variation models for image restoration are introduced. The models utilize a spatia...
International audienceIn this paper, we focus on a globally variational method to restore noisy imag...
In this paper, we focus on a globally variational method to restore noisy images corrupted by multip...
none4noWe propose two new variational models aimed to outperform the popular total variation (TV) mo...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
Abstract. A multi-scale total variation model for image restoration is introduced. The model utilize...
none3siImage restoration is an inverse problem that has been widely studied in recent years. The tot...
Selecting the regularization parameter in the image restoration variational framework is of crucial ...
A total variation model for image restoration is introduced. The model utilizes a spatially dependen...
We propose a novel variational framework for image restoration based on the assumption that noise is...