Gradient methods are frequently used in large scale image deblurring problems since they avoid the onerous computation of the Hessian matrix of the objective function. Second order information is typically sought by a clever choice of the steplength parameter defining the descent direction, as in the case of the well-known Barzilai and Borwein rules. In a recent paper, a strategy for the steplength selection approximating the inverse of some eigenvalues of the Hessian matrix has been proposed for gradient methods applied to unconstrained minimization problems. In the quadratic case, this approach is based on a Lanczos process applied every m iterations to the matrix of the gradients computed in the previous m iterations, but the idea can be...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
The aim of this paper is to deepen the convergence analysis of the scaled gradient projection (SGP) ...
A crucial aspect in designing a learning algorithm is the selection of the hyperparameters (paramete...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Gradient type methods are widely used approaches for nonlinear programming in image processing, due ...
A class of scaled gradient projection methods for optimization problems with simple constraints is ...
Gradient type methods are widely used approaches for nonlinearprogramming in image processing, due t...
The seminal paper by Barzilai and Borwein (1988) has given rise to an extensive investigation, leadi...
We have recently introduced a class of non-quadratic Hessian-based regularizers as a higher-order ex...
The least-squares approach to image deblurring leads to an ill-posed problem. The addition of the no...
Image deblurring is formulated as an unconstrained minimization problem, and its penalty function is...
A crucial aspect in designing a learning algorithm is the selection of the hyperparameters (paramete...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
This paper proposes a new method, bound alternative direction method (BADM), to address the ℓp (p∈0...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
The aim of this paper is to deepen the convergence analysis of the scaled gradient projection (SGP) ...
A crucial aspect in designing a learning algorithm is the selection of the hyperparameters (paramete...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
Gradient type methods are widely used approaches for nonlinear programming in image processing, due ...
A class of scaled gradient projection methods for optimization problems with simple constraints is ...
Gradient type methods are widely used approaches for nonlinearprogramming in image processing, due t...
The seminal paper by Barzilai and Borwein (1988) has given rise to an extensive investigation, leadi...
We have recently introduced a class of non-quadratic Hessian-based regularizers as a higher-order ex...
The least-squares approach to image deblurring leads to an ill-posed problem. The addition of the no...
Image deblurring is formulated as an unconstrained minimization problem, and its penalty function is...
A crucial aspect in designing a learning algorithm is the selection of the hyperparameters (paramete...
Gradient projection methods have given rise to effective tools for image deconvolution in several re...
This paper proposes a new method, bound alternative direction method (BADM), to address the ℓp (p∈0...
In this paper, we propose some improvements on a new gradient-type method for solving large-scale un...
The aim of this paper is to deepen the convergence analysis of the scaled gradient projection (SGP) ...
A crucial aspect in designing a learning algorithm is the selection of the hyperparameters (paramete...