This paper presents a systematic approach to robust preconditioning for gradient-based nonlinear inverse scattering algorithms. In particular, one- and two-dimensional inverse problems are considered where the permittivity and conductivity profiles are unknown and the input data consist of the scattered field over a certain bandwidth. A time-domain least-squares formulation is employed and the inversion algorithm is based on a conjugate gradient or quasi-Newton algorithm together with an FDTD-electromagnetic solver. A Fisher information analysis is used to estimate the Hessian of the error functional. A robust preconditioner is then obtained by incorporating a parameter scaling such that the scaled Fisher information has a unit diagonal. By...
International audienceWe are concerned herein with inverse scattering problems in stratified media a...
Abstract—In this paper, a two-dimensional inverse scattering problem dealing with microwave tomograp...
This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A p...
This paper presents a systematic approach to robust preconditioning for gra-dient based non-linear i...
This paper presents a Fisher information based Bayesian approach to analysis and design of the regul...
We provide a framework for preconditioning nonlinear 3D electromagnetic inverse scattering problems ...
We present a variant of the AINV factorized sparse approximate inverse algorithm which is applicable...
Abstract—A new spatial-domain technique for the reconstruc-tion of the complex permittivity profile ...
The Fisher Information Integral Operator (FIO) and related sensitivity analysis is formulated in a v...
Simulation of electromagnetic waves scattered by a connected three dimensional non-convex obstacle a...
International audienceThe reconstruct of the complex permittivity profile of lossy dielectric object...
International audienceWe propose a new optimization scheme for solving electromagnetic inverse scatt...
In the present work we have presented a reliable and efficient algorithm for the data inversion, whi...
Abstract-We discuss two techniques for solving two-dimensional (2-D) inverse scattering problems by ...
This work studies the problem of reconstructing a signal from measurements obtained by a sensing sys...
International audienceWe are concerned herein with inverse scattering problems in stratified media a...
Abstract—In this paper, a two-dimensional inverse scattering problem dealing with microwave tomograp...
This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A p...
This paper presents a systematic approach to robust preconditioning for gra-dient based non-linear i...
This paper presents a Fisher information based Bayesian approach to analysis and design of the regul...
We provide a framework for preconditioning nonlinear 3D electromagnetic inverse scattering problems ...
We present a variant of the AINV factorized sparse approximate inverse algorithm which is applicable...
Abstract—A new spatial-domain technique for the reconstruc-tion of the complex permittivity profile ...
The Fisher Information Integral Operator (FIO) and related sensitivity analysis is formulated in a v...
Simulation of electromagnetic waves scattered by a connected three dimensional non-convex obstacle a...
International audienceThe reconstruct of the complex permittivity profile of lossy dielectric object...
International audienceWe propose a new optimization scheme for solving electromagnetic inverse scatt...
In the present work we have presented a reliable and efficient algorithm for the data inversion, whi...
Abstract-We discuss two techniques for solving two-dimensional (2-D) inverse scattering problems by ...
This work studies the problem of reconstructing a signal from measurements obtained by a sensing sys...
International audienceWe are concerned herein with inverse scattering problems in stratified media a...
Abstract—In this paper, a two-dimensional inverse scattering problem dealing with microwave tomograp...
This paper is concerned with a new approach to preconditioning for large, sparse linear systems. A p...