CPFI-EIT: A CNN-PINN Framework for Full-Inverse Electrical Impedance Tomography on Non-Smooth Conductivity Distributions
Journal:
arXiv
Published Date:
Dec 10, 2024
Abstract
This paper introduces a hybrid learning framework that combines convolutional
neural networks (CNNs) and physics-informed neural networks (PINNs) to address
the challenging problem of full-inverse electrical impedance tomography (EIT).
EIT is a noninvasive imaging technique that reconstructs the spatial
distribution of internal conductivity based on boundary voltage measurements
from injected currents. This method has applications across medical imaging,
multiphase flow detection, and tactile sensing. However, solving EIT involves a
nonlinear partial differential equation (PDE) derived from Maxwell's equations,
posing significant computational challenges as an ill-posed inverse problem.
Existing PINN approaches primarily address semi-inverse EIT, assuming full
access to internal potential data, which limits practical applications in
realistic, full-inverse scenarios. Our framework employs a forward CNN-based
supervised network to map differential boundary voltage measurements to a
discrete potential distribution under fixed Neumann boundary conditions, while
an inverse PINN-based unsupervised network enforces PDE constraints for
conductivity reconstruction. Instead of traditional automatic differentiation,
we introduce discrete numerical differentiation to bridge the forward and
inverse networks, effectively decoupling them, enhancing modularity, and
reducing computational demands. We validate our framework under realistic
conditions, using a 16-electrode setup and rigorous testing on complex
conductivity distributions with sharp boundaries, without Gaussian smoothing.
This approach demonstrates robust flexibility and improved applicability in
full-inverse EIT, establishing a practical solution for real-world imaging
challenges.