FUDLInter: Frequency-Space-Dependent Unsupervised Deep Learning Framework for 3-D and 5-D Seismic Data Interpolation

被引:1
作者
Chen, Gui [1 ]
Liu, Yang [1 ]
机构
[1] China Univ Petr, Natl Key Lab Petr Resources & Engn, Beijing 102249, Peoples R China
来源
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING | 2024年 / 62卷
基金
中国国家自然科学基金;
关键词
Interpolation; Three-dimensional displays; Neural networks; Convolution; Tensors; Seismology; Deep learning; 3-D and 5-D seismic data; complex-valued neural network; frequency-space domain; high-dimensional interpolation; unsupervised deep learning (DL); CONVOLUTIONAL NEURAL-NETWORK; DATA RECONSTRUCTION; TRACE INTERPOLATION; SEISLET TRANSFORM; 3D INTERPOLATION; RANK;
D O I
10.1109/TGRS.2024.3435047
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
Deep learning (DL) has emerged as a focal point in addressing various challenges within the field of exploration seismology, prominently featuring applications in seismic data interpolation. Existing neural networks utilized in exploration seismology predominantly employ real-valued nonlinear transforms on time-space seismic data. Nevertheless, the seismic signal contains significant information in its phase, whereas the real-valued transforms meet with challenges to take into account the entire phase information of nonstationary seismic data. To surmount this challenge, we propose a novel framework termed frequency-space-dependent unsupervised DL interpolation (FUDLInter). The primary objective of FUDLInter is to interpolate high-dimensional seismic data within the frequency-space domain, thereby optimizing the exploitation of intricate information derived from the fast Fourier transform representation of seismic signals. In this framework, we meticulously explore and harness the capability of a complex-valued deep convolutional neural network employing the U-Net architecture, designated as CVU-Net. This network is designed to autonomously recover each frequency component of both 3-D and 5-D seismic data. We leverage the Bernoulli sampling technique and the nonmissing elements in the subsampled data to construct a data misfit model. The efficacy of the proposed method is evaluated using both high-dimensional synthetic data and field data examples. The interpolation results from the proposed FUDLInter method outperform those achieved by alternative methods, i.e., the projection onto convex sets with an adaptive threshold schedule (APOCS), damped rank-reduction (DRR), and DenseNet methods.
引用
收藏
页数:18
相关论文
共 40 条
  • [31] Improved 3-D Joint Inversion of Gravity and Magnetic Data Based on Deep Learning With a Multitask Learning Strategy
    Fang, Yuan
    Wang, Jun
    Zhou, Zhiwen
    Li, Fang
    Meng, Xiaohong
    Zheng, Shijing
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2025, 63
  • [32] Deep learning framework for history matching CO2 storage with 4D seismic and monitoring well data
    Wang, Nanzhe
    Durlofsky, Louis J.
    GEOENERGY SCIENCE AND ENGINEERING, 2025, 248
  • [33] DSPU: An Efficient Deep Learning-Based Dense RGB-D Data Acquisition With Sensor Fusion and 3-D Perception SoC
    Im, Dongseok
    Park, Gwangtae
    Ryu, Junha
    Li, Zhiyong
    Kang, Sanghoon
    Han, Donghyeon
    Lee, Jinsu
    Park, Wonhoon
    Kwon, Hankyul
    Yoo, Hoi-Jun
    IEEE JOURNAL OF SOLID-STATE CIRCUITS, 2022, 58 (01) : 177 - 188
  • [34] A Deep Learning Approach for Segmentation, Classification, and Visualization of 3-D High-Frequency Ultrasound Images of Mouse Embryos
    Qiu, Ziming
    Xu, Tongda
    Langerman, Jack
    Das, William
    Wang, Chuiyu
    Nair, Nitin
    Aristizabal, Orlando
    Mamou, Jonathan
    Turnbull, Daniel H.
    Ketterling, Jeffrey A.
    Wang, Yao
    IEEE TRANSACTIONS ON ULTRASONICS FERROELECTRICS AND FREQUENCY CONTROL, 2021, 68 (07) : 2460 - 2471
  • [35] Head Posture Estimation by Deep Learning Using 3-D Point Cloud Data From a Depth Sensor
    Sasaki, Seiji
    Premachandra, Chinthaka
    IEEE SENSORS LETTERS, 2021, 5 (07)
  • [36] Generalizable deep learning framework for 3D medical image segmentation using limited training data
    Ekman, Tobias
    Barakat, Arthur
    Heiberg, Einar
    3D PRINTING IN MEDICINE, 2025, 11 (01)
  • [37] Ground Truth-Free 3-D Seismic Random Noise Attenuation via Deep Tensor Convolutional Neural Networks in the Time-Frequency Domain
    Qian, Feng
    Liu, Zhangbo
    Wang, Yan
    Zhou, Yingjie
    Hu, Guangmin
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [38] Comparison of utility of deep learning reconstruction on 3D MRCPs obtained with three different k-space data acquisitions in patients with IPMN
    Takahiro Matsuyama
    Yoshiharu Ohno
    Kaori Yamamoto
    Masato Ikedo
    Masao Yui
    Minami Furuta
    Reina Fujisawa
    Satomu Hanamatsu
    Hiroyuki Nagata
    Takahiro Ueda
    Hirotaka Ikeda
    Saki Takeda
    Akiyoshi Iwase
    Takashi Fukuba
    Hokuto Akamatsu
    Ryota Hanaoka
    Ryoichi Kato
    Kazuhiro Murayama
    Hiroshi Toyama
    European Radiology, 2022, 32 : 6658 - 6667
  • [39] Comparison of utility of deep learning reconstruction on 3D MRCPs obtained with three different k-space data acquisitions in patients with IPMN
    Matsuyama, Takahiro
    Ohno, Yoshiharu
    Yamamoto, Kaori
    Ikedo, Masato
    Yui, Masao
    Furuta, Minami
    Fujisawa, Reina
    Hanamatsu, Satomu
    Nagata, Hiroyuki
    Ueda, Takahiro
    Ikeda, Hirotaka
    Takeda, Saki
    Iwase, Akiyoshi
    Fukuba, Takashi
    Akamatsu, Hokuto
    Hanaoka, Ryota
    Kato, Ryoichi
    Murayama, Kazuhiro
    Toyama, Hiroshi
    EUROPEAN RADIOLOGY, 2022, 32 (10) : 6658 - 6667
  • [40] Advancing Carbon Fiber Composite Inspection: Deep Learning-Enabled Defect Localization and Sizing via 3-D U-Net Segmentation of Ultrasonic Data
    McKnight, Shaun
    Tunukovic, Vedran
    Pierce, S. Gareth
    Mohseni, Ehsan
    Pyle, Richard
    MacLeod, Charles N.
    O'Hare, Tom
    IEEE TRANSACTIONS ON ULTRASONICS FERROELECTRICS AND FREQUENCY CONTROL, 2024, 71 (09) : 1106 - 1119