This paper is concerned with the ubiquitous inverse problem of recovering an unknown function u from finitely many measurements possibly affected by noise. In recent years, inversion methods based on linear approximation spaces were introduced in [7, 27] with certified recovery bounds. It is however known that linear spaces become ineffective for approximating simple and relevant families of functions, such as piecewise smooth functions that typically occur in hyperbolic PDEs (shocks) or images (edges). For such families, nonlinear spaces [18] are known to significantly improve the approximation performance. The first contribution of this paper is to provide with certified recovery bounds for inversion procedures based on nonlinear approxim...
AbstractThis paper introduces and analyzes new approximation procedures for bivariate functions. The...
This thesis deals with the numerical solutions of linear and nonlinear inverse problems. The goal o...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
This paper is concerned with the ubiquitous inverse problem of recovering an unknown function u from...
Regularization methods are a key tool in the solution of inverse problems. They are used to introduc...
In order to apply nonlinear inversion methods to realistic data sets, effective regularization meth...
Abstract. The aim of this article is to characterize the saturation spaces that appear in inverse pr...
This chapter is concerned with two important topics in the context of sparse recovery in inverse and...
Inverse problems arise whenever one tries to calculate a required quantity from given measurements o...
This paper examines the estimation of an indirect signal embedded in white noise for the spherical c...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
AbstractThis paper examines the estimation of an indirect signal embedded in white noise for the sph...
This work studies the problem of reconstructing a signal from measurements obtained by a sensing sys...
Abstmct. The inverse problem where one wants to estimate a continuous model with infinitely many deg...
In many applications, the recorded data will almost certainly be a degraded version of the original ...
AbstractThis paper introduces and analyzes new approximation procedures for bivariate functions. The...
This thesis deals with the numerical solutions of linear and nonlinear inverse problems. The goal o...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
This paper is concerned with the ubiquitous inverse problem of recovering an unknown function u from...
Regularization methods are a key tool in the solution of inverse problems. They are used to introduc...
In order to apply nonlinear inversion methods to realistic data sets, effective regularization meth...
Abstract. The aim of this article is to characterize the saturation spaces that appear in inverse pr...
This chapter is concerned with two important topics in the context of sparse recovery in inverse and...
Inverse problems arise whenever one tries to calculate a required quantity from given measurements o...
This paper examines the estimation of an indirect signal embedded in white noise for the spherical c...
Many branches of science and engineering are concerned with the problem of recording signals from ph...
AbstractThis paper examines the estimation of an indirect signal embedded in white noise for the sph...
This work studies the problem of reconstructing a signal from measurements obtained by a sensing sys...
Abstmct. The inverse problem where one wants to estimate a continuous model with infinitely many deg...
In many applications, the recorded data will almost certainly be a degraded version of the original ...
AbstractThis paper introduces and analyzes new approximation procedures for bivariate functions. The...
This thesis deals with the numerical solutions of linear and nonlinear inverse problems. The goal o...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...