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A systematic approach to robust preconditioning for gradient-based inverse scattering algorithms

Sven Nordebo1, Andreas Fhager2, Mats Gustafsson3 and Mikael Persson2

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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 improving the conditioning of the Hessian, the convergence rate of the conjugate gradient or quasi-Newton methods are improved. The preconditioner is robust in the sense that the scaling, i.e. the diagonal Fisher information, is virtually invariant to the numerical resolution and the discretization model that is employed. Numerical examples of image reconstruction are included to illustrate the efficiency of the proposed technique.


PACS

07.05.Pj Image processing

02.30.Zz Inverse problems

02.60.-x Numerical approximation and analysis

07.57.-c Infrared, submillimeter wave, microwave and radiowave instruments and equipment

MSC

65M32 Inverse problems

90C53 Methods of quasi-Newton type

78A46 Inverse scattering problems

94A08 Image processing (compression, reconstruction, etc.) (See also 68U10)

Subjects

Mathematical physics

Computational physics

Instrumentation and measurement

Dates

Issue 2 (April 2008)

Received 4 October 2007, in final form 21 February 2008

Published 17 March 2008



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