In this paper we propose an iterative algorithm to solve large size linear inverse ill posed problems. The regularization problem is formulated as a constrained optimization problem. The dual Lagrangian problem is iteratively solved to compute an approximate solution. Before starting the iterations, the algorithm computes the necessary smoothing parameters and the error tolerances from the data. The numerical experiments performed on test problems show that the algorithm gives good results both in terms of precision and computational efficiency
The need to solve discrete ill-posed problems arises in many areas of science and engineering. Solut...
International audienceWe propose and analyze an accelerated iterative dual diagonal descent algorith...
This paper presents an iterative method for the computation of approximate solutions of large linear...
In this paper we propose an iterative algorithm to solve large size linear inverse ill posed problem...
This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied...
In the context of linear inverse problems, we propose and study a general iterative regularization m...
Parameter identification from noisy data is an ill-posed inverse problem and data noise leads to poo...
none4noMany real-world applications are addressed through a linear least-squares problem formulatio...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
A constrained least squares problem in a Hilbert space H is considered. The standard Tikhonov regula...
Abstract. We propose an iterative method that solves constrained linear least-squares problems by fo...
This paper discusses iterative methods for the solution of very large severely ill-conditioned linea...
AbstractThree new iterative methods for the solution of the linear least squares problem with bound ...
We propose and analyze an accelerated iterative dual diagonal descent algorithm for the solution of ...
A constrained least squares problem in a Hilbert space H is considered. The standard Tikhonov regula...
The need to solve discrete ill-posed problems arises in many areas of science and engineering. Solut...
International audienceWe propose and analyze an accelerated iterative dual diagonal descent algorith...
This paper presents an iterative method for the computation of approximate solutions of large linear...
In this paper we propose an iterative algorithm to solve large size linear inverse ill posed problem...
This paper studies the regularization of constrained Maximum Likelihood iterative algorithms applied...
In the context of linear inverse problems, we propose and study a general iterative regularization m...
Parameter identification from noisy data is an ill-posed inverse problem and data noise leads to poo...
none4noMany real-world applications are addressed through a linear least-squares problem formulatio...
AbstractThe total least squares (TLS) method is a successful approach for linear problems when not o...
A constrained least squares problem in a Hilbert space H is considered. The standard Tikhonov regula...
Abstract. We propose an iterative method that solves constrained linear least-squares problems by fo...
This paper discusses iterative methods for the solution of very large severely ill-conditioned linea...
AbstractThree new iterative methods for the solution of the linear least squares problem with bound ...
We propose and analyze an accelerated iterative dual diagonal descent algorithm for the solution of ...
A constrained least squares problem in a Hilbert space H is considered. The standard Tikhonov regula...
The need to solve discrete ill-posed problems arises in many areas of science and engineering. Solut...
International audienceWe propose and analyze an accelerated iterative dual diagonal descent algorith...
This paper presents an iterative method for the computation of approximate solutions of large linear...