Total Generalized Variation regularization closes the gap between neural-eld and classical methods in seismic travel-time tomography
Isao Kurosawa

TL;DR
This paper introduces MIMIR, a neural-field framework using second-order TGV regularization for seismic travel-time tomography, achieving superior results over classical methods and TV-based neural approaches.
Contribution
It presents a differentiable neural-field tomography method with TGV$^2$ regularization that outperforms classical and TV-based neural methods in seismic velocity recovery.
Findings
MIMIR-TGV$^2$ matches classical methods on Gaussian benchmarks.
It significantly outperforms classical methods on layered and curved-fault benchmarks.
Replacing TGV$^2$ with TV worsens performance, confirming TGV$^2$'s advantages.
Abstract
Travel-time tomography forces a trade-off between mesh resolution and stability in which the regularizer choice dominates what can be recovered. We introduce MIMIR, a differentiable framework that represents the 2D velocity field as a Fourier-feature neural network, replacing the grid-based slowness vector with a continuous, infinitely differentiable function. Prior neural-field tomography has staircased smooth fields under total-variation (TV) priors or oscillated near interfaces under Laplacian smoothing. We adopt second-order total generalized variation (TGV) and parametrize its auxiliary vector field as a second neural network jointly optimized with the velocity field, eliminating the inner Chambolle-Pock primal-dual loop that classically dominates TGV computation. On three synthetic benchmarks (Gaussian, horizontally layered, curved-fault inspired by OpenFWI) using…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
