In this paper we establish the convergence of a general primal-dual method for nonsmooth convex optimization problems whose structure is typical in the imaging framework, as, for example, in the Total Variation image restoration problems. When the steplength parameters are a priori selected sequences, the convergence of the scheme is proved by showing that it can be considered as an epsilon-subgradient method on the primal formulation of the variational problem. Our scheme includes as special case the method recently proposed by Zhu and Chan for Total Variation image restoration from data degraded by Gaussian noise. Furthermore, the convergence hypotheses enable us to apply the same scheme also to other restoration problems, as the denoisin...
A convergent iterative regularization procedure based on the square of a dual norm is introduced for...
© 2014 Society for Industrial and Applied Mathematics. The primal-dual hybrid gradient algorithm (P...
Variational models are a valid tool for edge–preserving image restoration from data affected by Pois...
In this paper we establish the convergence of a general primal-dual method for nonsmooth convex opti...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
We propose a simple yet efficient algorithm for total variation (TV) minimizations with applications...
. We present a new method for solving total variation (TV) minimization problems in image restoratio...
Abstract We consider the problem of restoring images corrupted by Poisson noise. Under the framework...
In this paper, a primal-dual algorithm for total bounded variation (TV)type image restoration is ana...
We consider an inexact version of the popular Fast Iterative Soft-Thresholding Algorithm (FISTA) sui...
Variational models are a valid tool for edge-preserving image restoration from data affected by Pois...
Total Variation denoising, proposed by Rudin, Osher and Fatemi in [22], is an image processing varia...
In this paper, we consider the problem of image denoising by total variation regularization. We comb...
We study here a classical image denoising technique introduced by L. Rudin and S. Osher a few years ...
A convergent iterative regularization procedure based on the square of a dual norm is introduced for...
© 2014 Society for Industrial and Applied Mathematics. The primal-dual hybrid gradient algorithm (P...
Variational models are a valid tool for edge–preserving image restoration from data affected by Pois...
In this paper we establish the convergence of a general primal-dual method for nonsmooth convex opti...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
We propose a simple yet efficient algorithm for total variation (TV) minimizations with applications...
. We present a new method for solving total variation (TV) minimization problems in image restoratio...
Abstract We consider the problem of restoring images corrupted by Poisson noise. Under the framework...
In this paper, a primal-dual algorithm for total bounded variation (TV)type image restoration is ana...
We consider an inexact version of the popular Fast Iterative Soft-Thresholding Algorithm (FISTA) sui...
Variational models are a valid tool for edge-preserving image restoration from data affected by Pois...
Total Variation denoising, proposed by Rudin, Osher and Fatemi in [22], is an image processing varia...
In this paper, we consider the problem of image denoising by total variation regularization. We comb...
We study here a classical image denoising technique introduced by L. Rudin and S. Osher a few years ...
A convergent iterative regularization procedure based on the square of a dual norm is introduced for...
© 2014 Society for Industrial and Applied Mathematics. The primal-dual hybrid gradient algorithm (P...
Variational models are a valid tool for edge–preserving image restoration from data affected by Pois...