Implicit Neural Shape Optimization for 3D High-Contrast Electrical Impedance Tomography
Journal:
arXiv
Published Date:
May 22, 2025
Abstract
We present a novel implicit neural shape optimization framework for 3D
high-contrast Electrical Impedance Tomography (EIT), addressing scenarios where
conductivity exhibits sharp discontinuities across material interfaces. These
high-contrast cases, prevalent in metallic implant monitoring and industrial
defect detection, challenge traditional reconstruction methods due to severe
ill-posedness. Our approach synergizes shape optimization with implicit neural
representations, introducing key innovations including a shape derivative-based
optimization scheme that explicitly incorporates high-contrast interface
conditions and an efficient latent space representation that reduces variable
dimensionality. Through rigorous theoretical analysis of algorithm convergence
and extensive numerical experiments, we demonstrate substantial performance
improvements, establishing our framework as promising for practical
applications in medical imaging with metallic implants and industrial
non-destructive testing.