A Conditional Diffusion Model for Electrical Impedance Tomography Image Reconstruction
Journal:
arXiv
Published Date:
Dec 22, 2024
Abstract
Electrical impedance tomography (EIT) is a non-invasive imaging technique,
capable of reconstructing images of the electrical conductivity of tissues and
materials. It is popular in diverse application areas, from medical imaging to
industrial process monitoring and tactile sensing, due to its low cost,
real-time capabilities and non-ionizing nature. EIT visualizes the conductivity
distribution within a body by measuring the boundary voltages, given a current
injection. However, EIT image reconstruction is ill-posed due to the mismatch
between the under-sampled voltage data and the high-resolution conductivity
image. A variety of approaches, both conventional and deep learning-based, have
been proposed, capitalizing on the use of spatial regularizers, and the
paradigm of image regression. In this research, a novel method based on the
conditional diffusion model for EIT reconstruction is proposed, termed CDEIT.
Specifically, CDEIT consists of the forward diffusion process, which first
gradually adds Gaussian noise to the clean conductivity images, and a reverse
denoising process, which learns to predict the original conductivity image from
its noisy version, conditioned on the boundary voltages. Following model
training, CDEIT applies the conditional reverse process on test voltage data to
generate the desired conductivities. Moreover, we provide the details of a
normalization procedure, which demonstrates how EIT image reconstruction models
trained on simulated datasets can be applied on real datasets with varying
sizes, excitation currents and background conductivities. Experiments conducted
on a synthetic dataset and two real datasets demonstrate that the proposed
model outperforms state-of-the-art methods. The CDEIT software is available as
open-source (https://github.com/shuaikaishi/CDEIT) for reproducibility
purposes.