IVCVAug 11, 2025

Learned Regularization for Microwave Tomography

arXiv:2508.08114v1h-index: 5IEEE Trans Antenna Propag
Originality Incremental advance
AI Analysis

This addresses the challenge of reconstructing fine structural details in tissue imaging for medical applications, representing an incremental advance over existing deep learning methods.

The paper tackles the ill-posed inverse problem in Microwave Tomography by proposing a physics-informed hybrid framework that integrates diffusion models as learned regularization, resulting in improved accuracy, stability, and robustness without requiring paired training data.

Microwave Tomography (MWT) aims to reconstruct the dielectric properties of tissues from measured scattered electromagnetic fields. This inverse problem is highly nonlinear and ill-posed, posing significant challenges for conventional optimization-based methods, which, despite being grounded in physical models, often fail to recover fine structural details. Recent deep learning strategies, including end-to-end and post-processing networks, have improved reconstruction quality but typically require large paired training datasets and may struggle to generalize. To overcome these limitations, we propose a physics-informed hybrid framework that integrates diffusion models as learned regularization within a data-consistency-driven variational scheme. Specifically, we introduce Single-Step Diffusion Regularization (SSD-Reg), a novel approach that embeds diffusion priors into the iterative reconstruction process, enabling the recovery of complex anatomical structures without the need for paired data. SSD-Reg maintains fidelity to both the governing physics and learned structural distributions, improving accuracy, stability, and robustness. Extensive experiments demonstrate that SSD-Reg, implemented as a Plug-and-Play (PnP) module, provides a flexible and effective solution for tackling the ill-posedness inherent in functional image reconstruction.

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