Generative interpolation via diffusion probabilistic model

IF 3 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
Geophysics Pub Date : 2023-10-31 DOI:10.1190/geo2023-0182.1
Qi Liu, Jianwei Ma
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引用次数: 0

Abstract

Seismic data interpolation is essential in a seismic data processing workflow, recovering data from sparse sampling. Traditional and deep learning based methods have been widely used in the seismic data interpolation field and have achieved remarkable results. In this paper, we propose a seismic data interpolation method through the novel application of diffusion probabilistic models (DPM). DPM transform the complex end-to-end mapping problem into a progressive denoising problem, enhancing the ability to reconstruct complex situations of missing data, such as large proportions and large-gap missing data. The inter polation process begins with a standard Gaussian distribution and seismic data with missing traces, then removes noise iteratively with a Unet trained for different noise levels. Our#xD;proposed DPM-based interpolation method allows interpolation for various missing cases, including regularly missing, irregularly missing, consecutively missing, noisy missing, and different ratios of missing cases. The generalization ability to different seismic datasets is also discussed in this article. Numerical results of synthetic and field data show satisfactory interpolation performance of the DPM-based interpolation method in comparison with the f- x prediction filtering method, the curvelet transform method, the low dimensional mani fold method (LDMM) and the coordinate attention (CA)-based Unet method, particularly in cases with large proportions and large-gap missing data. Diffusion is all we need for seismic data interpolation.
基于扩散概率模型的生成插值
地震数据插值是地震数据处理工作流程中必不可少的一部分,它可以从稀疏采样中恢复数据。传统方法和基于深度学习的方法在地震数据插值领域得到了广泛的应用,并取得了显著的效果。本文提出了一种基于扩散概率模型(DPM)的地震数据插值方法。DPM将复杂的端到端映射问题转化为递进去噪问题,增强了对大比例、大间隙缺失数据等缺失数据复杂情况的重构能力。插值过程从标准高斯分布和缺失迹线的地震数据开始,然后使用针对不同噪声水平训练的Unet迭代地去除噪声。我们提出的基于dpm的插值方法可以对各种缺失情况进行插值,包括规律缺失、不规则缺失、连续缺失、噪声缺失以及不同缺失比例的缺失情况。本文还讨论了对不同地震数据集的泛化能力。与f- x预测滤波方法、曲线变换方法、低维马尼褶法(LDMM)和基于坐标注意(CA)的Unet方法相比,综合数据和现场数据的数值结果表明,基于dpm的插值方法具有令人满意的插值性能,特别是在大比例和大间隙缺失数据的情况下。扩散是地震数据插值所需要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Geophysics
Geophysics 地学-地球化学与地球物理
CiteScore
6.90
自引率
18.20%
发文量
354
审稿时长
3 months
期刊介绍: Geophysics, published by the Society of Exploration Geophysicists since 1936, is an archival journal encompassing all aspects of research, exploration, and education in applied geophysics. Geophysics articles, generally more than 275 per year in six issues, cover the entire spectrum of geophysical methods, including seismology, potential fields, electromagnetics, and borehole measurements. Geophysics, a bimonthly, provides theoretical and mathematical tools needed to reproduce depicted work, encouraging further development and research. Geophysics papers, drawn from industry and academia, undergo a rigorous peer-review process to validate the described methods and conclusions and ensure the highest editorial and production quality. Geophysics editors strongly encourage the use of real data, including actual case histories, to highlight current technology and tutorials to stimulate ideas. Some issues feature a section of solicited papers on a particular subject of current interest. Recent special sections focused on seismic anisotropy, subsalt exploration and development, and microseismic monitoring. The PDF format of each Geophysics paper is the official version of record.
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