Based on the Fenchel duality we build a primal-dual framework for minimizing a general functional consisting of a combined L1 and L2 data-fidelity term and a scalar or vectorial total variation regularisation term. The minimization is performed over the space of functions of bounded variations and appropriate discrete subspaces. We analyze the existence and uniqueness of solutions of the respective minimization problems. For computing a numerical solution we derive a semi-smooth Newton method on finite element spaces and highlight applications in denoising, inpainting and optical flow estimation
The primal-dual gap is a natural upper bound for the energy error and, for uniformly convex minimiza...
This work introduces and analyzes new primal and dual-mixed finite element methods for deformable im...
The first order optimality system of a total variation regularization based variational model with L...
© 2016 IOP Publishing Ltd. Linear inverse problems with total variation regularization can be refor...
. We present a new method for solving total variation (TV) minimization problems in image restoratio...
We consider a gradient ow of the total variation in a negative Sobolev space H s (0 s 1) under ...
In this paper, we investigate the usefulness of adding a box-constraint to the minimization of funct...
Total Variation denoising, proposed by Rudin, Osher and Fatemi in [22], is an image processing varia...
This work presents some problems of image processing whose formulations are variational. To illustr...
In this paper, we consider the problem of image denoising by total variation regularization. We comb...
We propose a simple yet efficient algorithm for total variation (TV) minimizations with applications...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
This paper studies image deblurring problems using a total variation-based model, with a non-negativ...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
We introduce a novel primal-dual flow for affine constrained convex optimization problems. As a modi...
The primal-dual gap is a natural upper bound for the energy error and, for uniformly convex minimiza...
This work introduces and analyzes new primal and dual-mixed finite element methods for deformable im...
The first order optimality system of a total variation regularization based variational model with L...
© 2016 IOP Publishing Ltd. Linear inverse problems with total variation regularization can be refor...
. We present a new method for solving total variation (TV) minimization problems in image restoratio...
We consider a gradient ow of the total variation in a negative Sobolev space H s (0 s 1) under ...
In this paper, we investigate the usefulness of adding a box-constraint to the minimization of funct...
Total Variation denoising, proposed by Rudin, Osher and Fatemi in [22], is an image processing varia...
This work presents some problems of image processing whose formulations are variational. To illustr...
In this paper, we consider the problem of image denoising by total variation regularization. We comb...
We propose a simple yet efficient algorithm for total variation (TV) minimizations with applications...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
This paper studies image deblurring problems using a total variation-based model, with a non-negativ...
Image restoration often requires the minimization of a convex, possibly nonsmooth functional, given ...
We introduce a novel primal-dual flow for affine constrained convex optimization problems. As a modi...
The primal-dual gap is a natural upper bound for the energy error and, for uniformly convex minimiza...
This work introduces and analyzes new primal and dual-mixed finite element methods for deformable im...
The first order optimality system of a total variation regularization based variational model with L...