Self-Flow-Matching assisted Full Waveform Inversion
Xinquan Huang, Paris Perdikaris

TL;DR
This paper introduces SFM-FWI, a physics-driven, online learning framework for full-waveform inversion that improves accuracy, robustness, and stability without requiring offline pretraining or fixed noise schedules.
Contribution
SFM-FWI eliminates the need for large-scale offline pretraining by leveraging flow matching and physics-based self-supervision, enabling more accurate and robust seismic imaging.
Findings
Outperforms standard FWI in synthetic benchmarks
Provides greater noise robustness
Achieves more stable convergence
Abstract
Full-waveform inversion (FWI) is a high-resolution seismic imaging method that estimates subsurface velocity by matching simulated and recorded waveforms. However, FWI is highly nonlinear, prone to cycle skipping, and sensitive to noise, particularly when low frequencies are missing or the initial model is poor, leading to failures under imperfect acquisition. Diffusion-regularized FWI introduces generative priors to encourage geologically realistic models, but these priors typically require costly offline pretraining and can deteriorate under distribution shift. Moreover, they assume Gaussian initialization and a fixed noise schedule, in which it is unclear how to map a deterministic FWI iterate and its starting model to a well-defined diffusion time or noise level. To address these limitations, we introduce Self-Flow-Matching assisted Full-Waveform Inversion (SFM-FWI), a…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · earthquake and tectonic studies
