Learning Nonlinear Electrical Impedance Tomography

被引:0
作者
Francesco Colibazzi
Damiana Lazzaro
Serena Morigi
Andrea Samoré
机构
[1] University of Bologna,Department of Mathematics
来源
Journal of Scientific Computing | 2022年 / 90卷
关键词
Nonlinear inverse problems; Electrical impedance tomography; Sparsity-inducing regularization; Unrolled optimization; Anisotropic total variation;
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摘要
Electrical impedance tomography (EIT) is the problem of determining the electrical conductivity distribution of an unknown medium by making voltage and current measurements at the boundary of the object. The image reconstruction inverse problem of EIT is a nonlinear and severely ill-posed problem. The non-linear approach to this challenging problem commonly relies on the iterative regularized Gauss-Newton method, which, however, has several drawbacks: the critical choice of the regularization matrix and parameter and the difficulty in reconstructing solution step changes, as smooth solutions are favored. We address these problems by learning a data-adaptive neural network as the regularization functional and integrating a local anisotropic total variation layer as an attention-like function into an unrolled Gauss-Newton network. We finally show that the proposed learned non-linear EIT approach strengthen the Gauss-Newton approach providing robust and qualitatively superior reconstructions.
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  • [1] Borsic A(2010)In vivo impedance imaging with total variation regularization IEEE Trans. Med. Imaging 29 44-54
  • [2] Graham BM(1999)A nonlinear primal-dual method for total variation-based image restoration SIAM J. Sci. Comput. 20 1964-1977
  • [3] Adler A(2021)Deep autoencoder imaging method for electrical impedance tomography IEEE Trans. Instrum. Meas. 70 1-15
  • [4] Lionheart WRB(2021)Hybrid learning-based cell aggregate imaging with miniature electrical impedance tomography IEEE Trans. Instrum. Meas. 70 1-10
  • [5] Chan TF(1990)Noser: an algorithm for solving the inverse conductivity problem Int. J. Imag. Syst. Technol. 2 65-75
  • [6] Golub GH(1989)Electrode models for electric current computed tomography IEEE Trans. Biomed. Eng. 36 918-924
  • [7] Mulet P(2021)Development of an electrical impedance tomography set-up for the quantification of mineralization in biopolymer scaffolds Physiol. Meas. 42 064001-2377
  • [8] Chen X(2020)Low-dose ct with deep learning regularization via proximal forward–backward splitting Phys. Med. Biol. 65 125009-753
  • [9] Wang Z(2018)Deep d-bar: real-time electrical impedance tomography imaging with deep neural networks IEEE Trans. Med. Imaging 37 2367-308
  • [10] Zhang X(2012)A direct D-bar reconstruction algorithm for recovering a complex conductivity in 2D Inverse Problems 28 095005-19