English

Imaging Conductivity from Current Density Magnitude using Neural Networks

Numerical Analysis 2022-06-29 v3 Machine Learning Numerical Analysis Image and Video Processing

Abstract

Conductivity imaging represents one of the most important tasks in medical imaging. In this work we develop a neural network based reconstruction technique for imaging the conductivity from the magnitude of the internal current density. It is achieved by formulating the problem as a relaxed weighted least-gradient problem, and then approximating its minimizer by standard fully connected feedforward neural networks. We derive bounds on two components of the generalization error, i.e., approximation error and statistical error, explicitly in terms of properties of the neural networks (e.g., depth, total number of parameters, and the bound of the network parameters). We illustrate the performance and distinct features of the approach on several numerical experiments. Numerically, it is observed that the approach enjoys remarkable robustness with respect to the presence of data noise.

Keywords

Cite

@article{arxiv.2204.02441,
  title  = {Imaging Conductivity from Current Density Magnitude using Neural Networks},
  author = {Bangti Jin and Xiyao Li and Xiliang Lu},
  journal= {arXiv preprint arXiv:2204.02441},
  year   = {2022}
}

Comments

29 pp, 9 figures (several typos are corrected in the new version), to appear at Inverse Problems

R2 v1 2026-06-24T10:39:01.644Z