Coarse-Refine Network With Upsampling Techniques and Fourier Loss for the Reconstruction of Missing Seismic Data

被引:9
作者
Park, Hanjoon [1 ]
Lee, Jun-Woo [1 ]
Hwang, Jongha [2 ]
Min, Dong-Joo [3 ]
机构
[1] Seoul Natl Univ, Dept Energy Syst Engn, Seoul 08826, South Korea
[2] Korea Inst Ocean Sci & Technol, Marine Act Fault Res Ctr, Busan 49111, South Korea
[3] Seoul Natl Univ, Res Inst Energy & Resources, Dept Energy Syst Engn, Seoul 08826, South Korea
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2022年 / 60卷
基金
新加坡国家研究基金会;
关键词
Interpolation; Image reconstruction; Neural networks; Decoding; Convergence; Convolution; Training; Coarse-refine network; Fourier loss; Fourier transform; seismic data interpolation; UNet; DATA INTERPOLATION;
D O I
10.1109/TGRS.2022.3190292
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Seismic data are often irregularly or insufficiently sampled along the spatial direction due to malfunctioning of receivers and limited survey budgets. Recently, machine learning techniques have begun to be used to effectively reconstruct missing traces and obtain densely sampled seismic gathers. One of the most widely used machine learning techniques for seismic trace interpolation is UNet with the mean-squared error (MSE). However, seismic trace interpolation with the UNet architecture suffers from aliasing, and the MSE used as a loss function causes an oversmoothing problem. To mitigate those problems in seismic trace interpolation, we propose a new strategy of using coarse-refine UNet (CFunet) and the Fourier loss. CFunet consists of two UNets and an upsampling process between them. The upsampling process is done by padding zeroes in the Fourier domain. We design the new loss function by combining the MSE and the Fourier loss. Unlike the MSE, the Fourier loss is not a pixelwise loss but plays a role in capturing relations between pixels. Synthetic and field data experiments show that the proposed method reduces aliased features and precisely reconstructs missing traces while accelerating the convergence of the network. By applying our strategy to realistic cases, we show that our strategy can be applied to obtain more densely sampled data from acquired data.
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页数:15
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