Self-Flow-Matching assisted Full Waveform Inversion
arXiv cs.LG / 3/17/2026
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Key Points
- SFM-FWI is introduced as a physics-driven framework that eliminates the need for large offline pretraining by using online flow matching to guide full-waveform inversion without Gaussian initialization or a fixed noise schedule.
- The method trains a single flow network online, updating it at each outer FWI iteration by backpropagating the data misfit, enabling self-supervision without external training pairs.
- It builds an interpolated model at each iteration and updates the transport field, addressing limitations of diffusion-regularized FWI such as distribution shift and noise-level alignment.
- Empirical results on synthetic benchmarks show SFM-FWI achieves more accurate reconstructions, better noise robustness, and more stable convergence than standard FWI and pretraining-free regularization methods.
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