In-Context Learning for Seismic Data Processing
Fabian Fuchs, Mario Ruben Fernandez, Norman Ettrich, Janis Keuper

TL;DR
This paper introduces ContextSeisNet, a novel in-context learning model for seismic demultiple processing that improves spatial consistency, user control, and data efficiency without retraining.
Contribution
The paper presents ContextSeisNet, the first in-context learning approach for seismic processing, enabling flexible, spatially consistent predictions conditioned on user-defined examples without retraining.
Findings
Outperforms U-Net baseline in synthetic data
Achieves superior lateral consistency on field data
Requires 90% less training data for comparable performance
Abstract
Seismic processing transforms raw data into subsurface images essential for geophysical applications. Traditional methods face challenges, such as noisy data, and manual parameter tuning, among others. Recently deep learning approaches have proposed alternative solutions to some of these problems. However, important challenges of existing deep learning approaches are spatially inconsistent results across neighboring seismic gathers and lack of user-control. We address these limitations by introducing ContextSeisNet, an in-context learning model, to seismic demultiple processing. Our approach conditions predictions on a support set of spatially related example pairs: neighboring common-depth point gathers from the same seismic line and their corresponding labels. This allows the model to learn task-specific processing behavior at inference time by observing how similar gathers should be…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismic Waves and Analysis · Seismology and Earthquake Studies
