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Unveiling the Mechanism of Continuous Representation Full-Waveform Inversion: A Wave Based Neural Tangent Kernel Framework

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Full-waveform inversion (FWI) estimates physical parameters in the wave equation from limited measurements and has been widely applied in geophysical exploration, medical imaging, and non-destructive testing. Conventional FWI methods are limited by their notorious sensitivity to the accuracy of the initial models. Recent progress in continuous representation FWI (CR-FWI) demonstrates that representing parameter models with a coordinate-based neural network, such as implicit neural representation (INR), can mitigate the dependence on initial models. However, its underlying mechanism remains unclear, and INR-based FWI shows slower high-frequency convergence. In this work, we investigate the general CR-FWI framework and develop a unified theoretical understanding by extending the neural tangent kernel (NTK) for FWI to establish a wave-based NTK framework. Unlike standard NTK, our analysis reveals that wave-based NTK is not constant, both at initialization and during training, due to the inherent nonlinearity of FWI. We further show that the eigenvalue decay behavior of the wave-based NTK can explain why CR-FWI alleviates the dependency on initial models and shows slower high-frequency convergence. Building on these insights, we propose several CR-FWI methods with tailored eigenvalue decay properties for FWI, including a novel hybrid representation combining INR and multi-resolution grid (termed IG-FWI) that achieves a more balanced trade-off between robustness and high-frequency convergence rate. Applications in geophysical exploration on Marmousi, 2D SEG/EAGE Salt and Overthrust, 2004 BP model, and the more realistic 2014 Chevron models show the superior performance of our proposed methods compared to conventional FWI and existing INR-based FWI methods.

Ruihua Chen, Yisi Luo, Bangyu Wu, Deyu Meng• 2026

Related benchmarks

TaskDatasetResultRank
Full Waveform InversionBP model 2004
MSE0.0481
36
Full Waveform InversionOverthrust model
MSE0.0548
36
Full Waveform InversionSalt model
SSIM0.591
27
Full Waveform InversionMarmousi Model S-Shots
MSE0.1602
18
Full Waveform InversionMarmousi Model Smooth
MSE0.1423
9
Full Waveform InversionMarmousi Model Constant
MSE0.2893
9
Full Waveform InversionMarmousi Model G-Noise
MSE0.2151
9
Full Waveform InversionMarmousi Model F-Cutoff
MSE0.1846
9
Full Waveform InversionOverthrust Model Smooth
MSE0.0548
9
Full Waveform InversionSalt Model Smooth
MSE0.1181
9
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