In this work we address regularization parameter estimation for ill-posed linear inverse problems with an penalty. Regularization parameter selection is of utmost importance for all of inverse problems and estimating it generally relies on the experience of the practitioner. For regularization with an penalty there exist a lot of parameter selection methods that exploit the fact that the solution and the residual can be written in explicit form. Parameter selection methods are functionals that depend on the regularization parameter where the minimizer is the desired regularization parameter that should lead to a good solution. Evaluation of these parameter selection methods still requires solving the inverse problem multiple times. Efficien...
There are many regularization parameter selection methods that can be used when solving inverse prob...
This thesis is a contribution to the field of ill-posed inverse problems . During the last ten year...
University of Minnesota Ph.D. dissertation. March 2011. Advisor:Prof. Fadil Santosa. Major: Mathemat...
In this work we address regularization parameter estimation for ill-posed linear inverse problems wi...
Inverse problems arise in many applications in science and engineering. They are characterized by th...
In this work, we develop efficient solvers for linear inverse problems based on randomized singular ...
We shall investigate randomized algorithms for solving large-scale linear inverse problems with gene...
Abstract:- All regularization methods for computing stable solutions to inverse problems, involve a ...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
Most linear inverse problems require regularization to ensure that robust and meaningful solutions c...
Recently, the regularized functional matching pursuit (RFMP) was introduced as a greedy algorithm fo...
We consider linear inverse problems with a two norm regularization, called Tikhonov regularization. ...
In this article we tackle the problem of inverse non linear ill-posed problems from a statistical po...
Published in at http://dx.doi.org/10.1214/07-EJS115 the Electronic Journal of Statistics (http://www...
This thesis is concerned with the development and analysis of adaptiveregularization methods for sol...
There are many regularization parameter selection methods that can be used when solving inverse prob...
This thesis is a contribution to the field of ill-posed inverse problems . During the last ten year...
University of Minnesota Ph.D. dissertation. March 2011. Advisor:Prof. Fadil Santosa. Major: Mathemat...
In this work we address regularization parameter estimation for ill-posed linear inverse problems wi...
Inverse problems arise in many applications in science and engineering. They are characterized by th...
In this work, we develop efficient solvers for linear inverse problems based on randomized singular ...
We shall investigate randomized algorithms for solving large-scale linear inverse problems with gene...
Abstract:- All regularization methods for computing stable solutions to inverse problems, involve a ...
The straightforward solution of discrete ill-posed linear systems of equations or least-squares prob...
Most linear inverse problems require regularization to ensure that robust and meaningful solutions c...
Recently, the regularized functional matching pursuit (RFMP) was introduced as a greedy algorithm fo...
We consider linear inverse problems with a two norm regularization, called Tikhonov regularization. ...
In this article we tackle the problem of inverse non linear ill-posed problems from a statistical po...
Published in at http://dx.doi.org/10.1214/07-EJS115 the Electronic Journal of Statistics (http://www...
This thesis is concerned with the development and analysis of adaptiveregularization methods for sol...
There are many regularization parameter selection methods that can be used when solving inverse prob...
This thesis is a contribution to the field of ill-posed inverse problems . During the last ten year...
University of Minnesota Ph.D. dissertation. March 2011. Advisor:Prof. Fadil Santosa. Major: Mathemat...