In this thesis, we investigate nonstandard methods for the stable solution of the inverse medium problem. Particularly, we consider the linearization of the model of the scattering process given by the Born approximation and investigate regularization methods that are designed for sparse reconstruction. In numerical experiments we demonstrate that sparsity constraints contribute to meaningful reconstructions from synthetic and even measurement data. In our investigations, we consider both iterative and variational methods for the solution of the inverse problem. Starting from the Landweber iteration, we discuss existing variants of this approach and develop a novel sparsity-enforcing method which is based on the Bregman projection. Furtherm...
Das Gebiet der inversen Probleme, wobei die Unbekannte neben ihrer örtlichen Dimension mindestens no...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
This chapter is concerned with two important topics in the context of sparse recovery in inverse and...
In this thesis, we investigate nonstandard methods for the stable solution of the inverse medium pro...
Sparsity regularization method has been analyzed for linear and nonlinear inverse problems over the ...
This cumulative dissertation investigates and designs methods for the reconstruction of unknown sign...
Sparsity regularization method has been analyzed for linear and nonlinear inverse problems over the ...
International audienceSparsity constraints are now very popular to regularize inverse problems. We r...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
This thesis challenges with the development of a computational framework facilitating the solution f...
In many scientific and industrial applications, the quantity of interest is not what is directly obs...
So-called quantitative electromagnetic imaging focused onto here is the problem of determining mater...
This work handles inverse scattering problems for both acoustic and electromagnetic waves. That is t...
This thesis is concerned with the development and analysis of adaptiveregularization methods for sol...
Inverse problems are problems where we want to estimate the values of certain parameters of a system...
Das Gebiet der inversen Probleme, wobei die Unbekannte neben ihrer örtlichen Dimension mindestens no...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
This chapter is concerned with two important topics in the context of sparse recovery in inverse and...
In this thesis, we investigate nonstandard methods for the stable solution of the inverse medium pro...
Sparsity regularization method has been analyzed for linear and nonlinear inverse problems over the ...
This cumulative dissertation investigates and designs methods for the reconstruction of unknown sign...
Sparsity regularization method has been analyzed for linear and nonlinear inverse problems over the ...
International audienceSparsity constraints are now very popular to regularize inverse problems. We r...
The goal of the sparse approximation problem is to approximate a target signal using a linear combin...
This thesis challenges with the development of a computational framework facilitating the solution f...
In many scientific and industrial applications, the quantity of interest is not what is directly obs...
So-called quantitative electromagnetic imaging focused onto here is the problem of determining mater...
This work handles inverse scattering problems for both acoustic and electromagnetic waves. That is t...
This thesis is concerned with the development and analysis of adaptiveregularization methods for sol...
Inverse problems are problems where we want to estimate the values of certain parameters of a system...
Das Gebiet der inversen Probleme, wobei die Unbekannte neben ihrer örtlichen Dimension mindestens no...
International audienceSparse data models are powerful tools for solving ill-posed inverse problems. ...
This chapter is concerned with two important topics in the context of sparse recovery in inverse and...