The least-squares approach to image deblurring leads to an ill-posed problem. The addition of the nonnegativity constraint, when appropriate, does not provide regularization, even if, as far as we know, a thorough investigation of the ill-posedness of the resulting constrained least-squares problem has still to be done. Iterative methods, converging to nonnegative least-squares solutions, have been proposed. Some of them have the "semi-convergence'' property, i.e. early stopping of the iteration provides "regularized'' solutions. In this paper we consider two of these methods: the projected Landweber (PL) method and the iterative image space reconstruction algorithm (ISRA).Even if they work well in many instances, they are not frequently us...
In this paper we propose a special gradient projection method for the image deblurring problem, in t...
In this paper we propose a special gradient projection method for the image deblurring problem, in ...
AbstractThis work addresses the problem of regularized linear least squares (RLS) with non-quadratic...
The least-squares approach to image deblurring leads to an ill-posed problem. The addition of the no...
Received.............; accepted................ Aims. It is well known from practice that incorporat...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
A class of scaled gradient projection methods for optimization problems with simple constraints is ...
open1noFirst Online: 26 June 2014In recent years, ℓ1-regularized least squares have become a popular...
Gradient type methods are widely used approaches for nonlinear programming in image processing, due ...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
Gradient type methods are widely used approaches for nonlinearprogramming in image processing, due t...
We consider the simultaneous deblurring of a set of noisy images whose point spread functions are di...
The Landweber method is a simple and flexible iterative regularization algorithm, whose projected va...
none4noMany real-world applications are addressed through a linear least-squares problem formulatio...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
In this paper we propose a special gradient projection method for the image deblurring problem, in t...
In this paper we propose a special gradient projection method for the image deblurring problem, in ...
AbstractThis work addresses the problem of regularized linear least squares (RLS) with non-quadratic...
The least-squares approach to image deblurring leads to an ill-posed problem. The addition of the no...
Received.............; accepted................ Aims. It is well known from practice that incorporat...
A class of scaled gradient projection methods for optimization problems with simple constraints is c...
A class of scaled gradient projection methods for optimization problems with simple constraints is ...
open1noFirst Online: 26 June 2014In recent years, ℓ1-regularized least squares have become a popular...
Gradient type methods are widely used approaches for nonlinear programming in image processing, due ...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
Gradient type methods are widely used approaches for nonlinearprogramming in image processing, due t...
We consider the simultaneous deblurring of a set of noisy images whose point spread functions are di...
The Landweber method is a simple and flexible iterative regularization algorithm, whose projected va...
none4noMany real-world applications are addressed through a linear least-squares problem formulatio...
Gradient methods are frequently used in large scale image deblurring problems since they avoid the o...
In this paper we propose a special gradient projection method for the image deblurring problem, in t...
In this paper we propose a special gradient projection method for the image deblurring problem, in ...
AbstractThis work addresses the problem of regularized linear least squares (RLS) with non-quadratic...