Physics-Informed Deep Contrast Source Inversion: A Unified Framework for Inverse Scattering Problems
By: Haoran Sun , Daoqi Liu , Hongyu Zhou and more
Potential Business Impact:
Makes medical scans faster and more accurate.
Inverse scattering problems are critical in electromagnetic imaging and medical diagnostics but are challenged by their nonlinearity and diverse measurement scenarios. This paper proposes a physics-informed deep contrast source inversion framework (DeepCSI) for fast and accurate medium reconstruction across various measurement conditions. Inspired by contrast source inversion (CSI) and neural operator methods, a residual multilayer perceptron (ResMLP) is employed to model current distributions in the region of interest under different transmitter excitations, effectively linearizing the nonlinear inverse scattering problem and significantly reducing the computational cost of traditional full-waveform inversion. By modeling medium parameters as learnable tensors and utilizing a hybrid loss function that integrates state equation loss, data equation loss, and total variation regularization, DeepCSI establishes a fully differentiable framework for joint optimization of network parameters and medium properties. Compared with conventional methods, DeepCSI offers advantages in terms of simplicity and universal modeling capabilities for diverse measurement scenarios, including phase-less and multi-frequency observation. Simulations and experiments demonstrate that DeepCSI achieves high-precision, robust reconstruction under full-data, phaseless data, and multifrequency conditions, outperforming traditional CSI methods and providing an efficient and universal solution for complex inverse scattering problems.
Similar Papers
A Model-Guided Neural Network Method for the Inverse Scattering Problem
Computational Physics
Makes X-rays see hidden things better and faster.
Transcending Sparse Measurement Limits: Operator-Learning-Driven Data Super-Resolution for Inverse Source Problem
Numerical Analysis
Finds hidden things with very few clues.
Improved Physics-Driven Neural Network to Solve Inverse Scattering Problems
Machine Learning (CS)
Find hidden objects with super-smart computer vision.