Objective selection of hyperparameter for EIT
- 18 April 2006
- journal article
- research article
- Published by IOP Publishing in Physiological Measurement
- Vol. 27 (5) , S65-S79
- https://doi.org/10.1088/0967-3334/27/5/s06
Abstract
An algorithm for objectively calculating the hyperparameter for linearized one-step electrical impedance tomography (EIT) image reconstruction algorithms is proposed and compared to existing strategies. EIT is an ill-conditioned problem in which regularization is used to calculate a stable and accurate solution by incorporating some form of prior knowledge into the solution. A hyperparameter is used to control the trade-off between conformance to data and conformance to the prior. A remaining challenge is to develop and validate methods of objectively selecting the hyperparameter. In this paper, we evaluate and compare five different strategies for hyperparameter selection. We propose a calibration-based method of objective hyperparameter selection, called BestRes, that leads to repeatable and stable image reconstructions that are indistinguishable from heuristic selections. Results indicate: (1) heuristic selections of hyperparameter are inconsistent among experts, (2) generalized cross-validation approaches produce under-regularized solutions, (3) L-curve approaches are unreliable for EIT and (4) BestRes produces good solutions comparable to expert selections. Additionally, we show that it is possible to reliably detect an inverse crime based on analysis of these parameters.Keywords
This publication has 12 references indexed in Scilit:
- Uses and abuses of EIDORS: an extensible software base for EITPhysiological Measurement, 2006
- Automatic detection of detached and erroneous electrodes in electrical impedance tomographyPhysiological Measurement, 2005
- EIT reconstruction algorithms: pitfalls, challenges and recent developmentsPhysiological Measurement, 2004
- Statistical Regularization of Inverse ProblemsSIAM Review, 2001
- Regularized reconstruction in electrical impedance tomography using a variance uniformization constraintIEEE Transactions on Medical Imaging, 1997
- Electrical impedance tomography: regularized imaging and contrast detectionIEEE Transactions on Medical Imaging, 1996
- Three-dimensional electrical impedance tomographyNature, 1996
- Analysis of Discrete Ill-Posed Problems by Means of the L-CurveSIAM Review, 1992
- NOSER: An algorithm for solving the inverse conductivity problemInternational Journal of Imaging Systems and Technology, 1990
- Errors in reconstruction of resistivity images using a linear reconstruction techniqueClinical Physics and Physiological Measurement, 1988