BibTeX
@article{2504.15289v1,
Author = {Yunlin Zeng and Huseyin Tuna Erdinc and Rafael Orozco and Felix Herrmann},
Title = {Full-waveform variational inference with full common-image gathers and diffusion network},
Eprint = {2504.15289v1},
ArchivePrefix = {arXiv},
PrimaryClass = {physics.geo-ph},
Abstract = {Accurate seismic imaging and velocity estimation are essential for subsurface characterization. Conventional inversion techniques, such as full-waveform inversion, remain computationally expensive and sensitive to initial velocity models. To address these challenges, we propose a simulation-based inference framework with conditional elucidated diffusion models for posterior velocity-model sampling. Our approach incorporates both horizontal and vertical subsurface offset common-image gathers to capture a broader range of reflector geometries, including gently dipping structures and steep dipping layers. Additionally, we introduce the background-velocity model as an input condition to enhance generalization across varying geological settings. We evaluate our method on the SEAM dataset, which features complex salt geometries, using a patch-based training approach. Experimental results demonstrate that adding the background-velocity model as an additional conditioning variable significantly enhances performance, improving SSIM from $0.717$ to $0.733$ and reducing RMSE from $0.381\,$km/s to $0.274\,$km/s. Furthermore, uncertainty quantification analysis shows that our proposed approach yields better-calibrated uncertainty estimates, reducing uncertainty calibration error from $6.68\,$km/s to $3.91\,$km/s. These results show robust amortized seismic inversion with uncertainty quantification.},
Year = {2025},
Month = {Apr},
Url = {http://arxiv.org/abs/2504.15289v1},
File = {2504.15289v1.pdf}
}