Physics-Driven Neural Compensation For Electrical Impedance Tomography
Journal:
arXiv
Published Date:
Apr 25, 2025
Abstract
Electrical Impedance Tomography (EIT) provides a non-invasive, portable
imaging modality with significant potential in medical and industrial
applications. Despite its advantages, EIT encounters two primary challenges:
the ill-posed nature of its inverse problem and the spatially variable,
location-dependent sensitivity distribution. Traditional model-based methods
mitigate ill-posedness through regularization but overlook sensitivity
variability, while supervised deep learning approaches require extensive
training data and lack generalization. Recent developments in neural fields
have introduced implicit regularization techniques for image reconstruction,
but these methods typically neglect the physical principles underlying EIT,
thus limiting their effectiveness. In this study, we propose PhyNC
(Physics-driven Neural Compensation), an unsupervised deep learning framework
that incorporates the physical principles of EIT. PhyNC addresses both the
ill-posed inverse problem and the sensitivity distribution by dynamically
allocating neural representational capacity to regions with lower sensitivity,
ensuring accurate and balanced conductivity reconstructions. Extensive
evaluations on both simulated and experimental data demonstrate that PhyNC
outperforms existing methods in terms of detail preservation and artifact
resistance, particularly in low-sensitivity regions. Our approach enhances the
robustness of EIT reconstructions and provides a flexible framework that can be
adapted to other imaging modalities with similar challenges.