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Autores principales: Goyes-Peñafiel, Paul, Kamilov, Ulugbek, Arguello, Henry
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2407.17402
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author Goyes-Peñafiel, Paul
Kamilov, Ulugbek
Arguello, Henry
author_facet Goyes-Peñafiel, Paul
Kamilov, Ulugbek
Arguello, Henry
contents Seismic data frequently exhibits missing traces, substantially affecting subsequent seismic processing and interpretation. Deep learning-based approaches have demonstrated significant advancements in reconstructing irregularly missing seismic data through supervised and unsupervised methods. Nonetheless, substantial challenges remain, such as generalization capacity and computation time cost during the inference. Our work introduces a reconstruction method that uses a pre-trained generative diffusion model for image synthesis and incorporates Deep Image Prior to enforce data consistency when reconstructing missing traces in seismic data. The proposed method has demonstrated strong robustness and high reconstruction capability of post-stack and pre-stack data with different levels of structural complexity, even in field and synthetic scenarios where test data were outside the training domain. This indicates that our method can handle the high geological variability of different exploration targets. Additionally, compared to other state-of-the-art seismic reconstruction methods using diffusion models. During inference, our approach reduces the number of sampling timesteps by up to 4x.
format Preprint
id arxiv_https___arxiv_org_abs_2407_17402
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CDDIP: Constrained Diffusion-Driven Deep Image Prior for Seismic Image Reconstruction
Goyes-Peñafiel, Paul
Kamilov, Ulugbek
Arguello, Henry
Geophysics
Seismic data frequently exhibits missing traces, substantially affecting subsequent seismic processing and interpretation. Deep learning-based approaches have demonstrated significant advancements in reconstructing irregularly missing seismic data through supervised and unsupervised methods. Nonetheless, substantial challenges remain, such as generalization capacity and computation time cost during the inference. Our work introduces a reconstruction method that uses a pre-trained generative diffusion model for image synthesis and incorporates Deep Image Prior to enforce data consistency when reconstructing missing traces in seismic data. The proposed method has demonstrated strong robustness and high reconstruction capability of post-stack and pre-stack data with different levels of structural complexity, even in field and synthetic scenarios where test data were outside the training domain. This indicates that our method can handle the high geological variability of different exploration targets. Additionally, compared to other state-of-the-art seismic reconstruction methods using diffusion models. During inference, our approach reduces the number of sampling timesteps by up to 4x.
title CDDIP: Constrained Diffusion-Driven Deep Image Prior for Seismic Image Reconstruction
topic Geophysics
url https://arxiv.org/abs/2407.17402