APNANADec 19, 2018

The regularized monotonicity method: detecting irregular indefinite inclusions

arXiv:1705.0737237 citationsh-index: 11
Originality Incremental advance
AI Analysis

This work provides a theoretical and algorithmic foundation for detecting indefinite inclusions without regularity assumptions, benefiting non-destructive testing and medical imaging applications.

The paper extends the monotonicity method to detect irregular indefinite inclusions in electrical impedance tomography, proving that the outer support of positive and negative parts can be reconstructed independently, and introduces a regularization scheme robust to modeling error and noise. Numerical examples are provided for the first time.

In inclusion detection in electrical impedance tomography, the support of perturbations (inclusion) from a known background conductivity is typically reconstructed from idealized continuum data modelled by a Neumann-to-Dirichlet map. Only few reconstruction methods apply when detecting indefinite inclusions, where the conductivity distribution has both more and less conductive parts relative to the background conductivity; one such method is the monotonicity method of Harrach, Seo, and Ullrich. We formulate the method for irregular indefinite inclusions, meaning that we make no regularity assumptions on the conductivity perturbations nor on the inclusion boundaries. We show, provided that the perturbations are bounded away from zero, that the outer support of the positive and negative parts of the inclusions can be reconstructed independently. Moreover, we formulate a regularization scheme that applies to a class of approximative measurement models, including the Complete Electrode Model, hence making the method robust against modelling error and noise. In particular, we demonstrate that for a convergent family of approximative models there exists a sequence of regularization parameters such that the outer shape of the inclusions is asymptotically exactly characterized. Finally, a peeling-type reconstruction algorithm is presented and, for the first time in literature, numerical examples of monotonicity reconstructions for indefinite inclusions are presented.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes