Self-Reinforced Deep Priors for Reparameterized Full Waveform Inversion
Guangyuan Zou, Junlun Li, Feng Liu, Xuejing Zheng, Jianjian Xie, Guoyi Chen

TL;DR
This paper introduces a self-reinforced deep prior method for full waveform inversion that adaptively updates network inputs and parameters, improving subsurface imaging accuracy and robustness without manual tuning.
Contribution
It proposes a novel SRDIP-FWI framework that enhances regularization and mitigates ill-posedness by adaptively updating network inputs during inversion.
Findings
Achieves superior resolution and accuracy in synthetic and field data tests.
Eliminates manual frequency-band selection and time-window picking.
Provides a robust, adaptive framework for subsurface velocity model reconstruction.
Abstract
Full waveform inversion (FWI) has become a widely adopted technique for high-resolution subsurface imaging. However, its inherent strong nonlinearity often results in convergence toward local minima. Recently, deep image prior-based reparameterized FWI (DIP-FWI) has been proposed to alleviate the dependence on massive training data. By exploiting the spectral bias and implicit regularization in the neural network architecture, DIP-FWI can effectively avoid local minima and reconstruct more geologically plausible velocity models. Nevertheless, existing DIP-FWI typically use a fixed random input throughout the inversion process, which fails to utilize the mapping and correlation between the input and output of the network. Moreover, under complex geological conditions, the lack of informative prior in the input can exacerbate the ill-posedness of the inverse problem, leading to artifacts…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · Geophysical and Geoelectrical Methods
