Shape and parameter identification by the linear sampling method for a restricted Fourier integral operator

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Abstract

In this paper we provide a new linear sampling method based on the same data but a different definition of the data operator for two inverse problems: the multi-frequency inverse source problem for a fixed observation direction and the Born inverse scattering problems. We show that the associated regularized linear sampling indicator converges to the average of the unknown in a small neighborhood as the regularization parameter approaches to zero. We develop both a shape identification theory and a parameter identification theory which are stimulated, analyzed, and implemented with the help of the prolate spheroidal wave functions and their generalizations. We further propose a prolate-based implementation of the linear sampling method and provide numerical experiments to demonstrate how this linear sampling method is capable of reconstructing both the shape and the parameter.

Original languageEnglish
Article number095007
JournalInverse Problems
Volume40
Issue number9
DOIs
Publication statusPublished - 1 Sept 2024

Keywords

  • inverse source and scattering problems
  • linear sampling method
  • parameter identification
  • prolate spheroidal wave functions.
  • shape identification

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