The objective of this paper is to develop methods for solving image recovery problems subject to constraints on the solution. More precisely, we will be interested in problems which can be formulated as the minimization over a closed convex constraint set of the sum of two convex functions f and g, where f may be non-smooth and g is differentiable with a Lipschitz-continuous gradient. To reach this goal, we derive two types of algorithms that combine forward-backward and Douglas-Rachford iterations. The weak convergence of the proposed algorithms is proved. In the case when the Lipschitz-continuity property of the gradient of g is not satisfied, we also show that, under some assumptions, it remains possible to apply these methods to the con...
International audienceA wide array of image recovery problems can be abstracted into theproblem of m...
Image restoration is a computationally intensive problem as a large number of pixel values have to b...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
(34 pp.) arXiv:0806.3920International audienceThe objective of this paper is to develop methods for ...
(34 pp.) arXiv:0806.3920International audienceThe objective of this paper is to develop methods for ...
In the solution of inverse problems, the objective is often to minimize the sum of two convex functi...
In the solution of inverse problems, the objective is often to minimize the sum of two convex functi...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
Iterative optimization algorithms such as the forward-back-ward and Douglas-Rachford algorithms have...
We consider a variational formulation of blind image recov-ery problems. A novel iterative proximal ...
International audienceThe Poisson-Gaussian model can accurately describe the noise present in a num...
In this paper, we consider the blind image restoration as a convex constrained problem and we propos...
International audienceWe consider a variational formulation of blind image recovery problems. A nove...
Abstract. We consider linear inverse problems where the solution is assumed to fulfill some general ...
International audienceA wide array of image recovery problems can be abstracted into theproblem of m...
International audienceA wide array of image recovery problems can be abstracted into theproblem of m...
Image restoration is a computationally intensive problem as a large number of pixel values have to b...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
(34 pp.) arXiv:0806.3920International audienceThe objective of this paper is to develop methods for ...
(34 pp.) arXiv:0806.3920International audienceThe objective of this paper is to develop methods for ...
In the solution of inverse problems, the objective is often to minimize the sum of two convex functi...
In the solution of inverse problems, the objective is often to minimize the sum of two convex functi...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...
Iterative optimization algorithms such as the forward-back-ward and Douglas-Rachford algorithms have...
We consider a variational formulation of blind image recov-ery problems. A novel iterative proximal ...
International audienceThe Poisson-Gaussian model can accurately describe the noise present in a num...
In this paper, we consider the blind image restoration as a convex constrained problem and we propos...
International audienceWe consider a variational formulation of blind image recovery problems. A nove...
Abstract. We consider linear inverse problems where the solution is assumed to fulfill some general ...
International audienceA wide array of image recovery problems can be abstracted into theproblem of m...
International audienceA wide array of image recovery problems can be abstracted into theproblem of m...
Image restoration is a computationally intensive problem as a large number of pixel values have to b...
Natural image statistics indicate that we should use non-convex norms for most regularization tasks ...