Beyond Data-Physics Consistency: A Cross-Correlated Physics-Informed Neural Network for Robust Inverse Scattering
Shilong Sun

TL;DR
This paper introduces a cross-correlated physics-informed neural network (CC-PINN) that improves the robustness and efficiency of electromagnetic inverse scattering solutions, especially for high-contrast targets, by coupling dielectric parameters with observed fields.
Contribution
It proposes a novel CC-PINN architecture with cross-correlated residuals and FFT acceleration, enhancing convergence and robustness over traditional PINNs in inverse scattering problems.
Findings
CC-PINN accurately reconstructs high-contrast dielectric targets.
It outperforms classical PINNs in convergence robustness.
The method is effective with multi-frequency and frequency-hopping strategies.
Abstract
The electromagnetic inverse scattering problem (ISP), due to its inherent strong nonlinearity and severe ill-posedness, has long been a core challenge in microwave imaging. In recent years, physics-informed neural networks (PINNs) have provided a novel paradigm for solving ISPs by embedding Maxwell's equations into the deep learning optimization process. However, conventional PINN methods rely solely on independent data-equation and state-equation residuals to construct the consistency loss, which easily causes them to fall into local minima and suffer from low computational efficiency when facing high-contrast targets or multi-frequency observation data. To transcend the traditional data-physics consistency framework, this paper proposes a novel cross-correlated physics-informed neural network (CC-PINN). The core innovations of this work include: (1) constructing a Fourier feature MLP…
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