LsmGANs: Image-Domain Least-Squares Migration Using a New Framework of Generative Adversarial Networks

被引:4
|
作者
Sun, Jiaxing [1 ]
Yang, Jidong [1 ]
Huang, Jianping [1 ]
Yu, Youcai [1 ]
Li, Zhenchun [1 ]
Zhao, Chong [1 ]
机构
[1] China Univ Petr, Sch Geosci, Natl Key Lab Deep Oil & Gas, Qingdao 266580, Shandong, Peoples R China
基金
中国国家自然科学基金;
关键词
Generative adversarial networks; Reflectivity; Convolutional neural networks; Imaging; Reflection; Image resolution; Generators; Computational seismology; generative adversarial networks (GANs); Hessian approximation; image-domain least-squares migration (LSM); REVERSE-TIME MIGRATION; WAVE-EQUATION MIGRATION; LINEARIZED INVERSION; REFLECTION; AMPLITUDE; EXTRAPOLATION; OPTIMIZATION; SEPARATION;
D O I
10.1109/TGRS.2023.3304726
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
Compared with the traditional adjoint migration, the least-squares migration (LSM) can effectively mitigate the unbalanced illumination and limited resolution associated with finite acquisition apertures, complex overburden structures, and band-limited records. Data-domain LSM needs many times of Born modeling and adjoint migration to converge to a good solution, which is still challenging for large-scale 3-D models under the current computational capacity. To reduce computational cost and produce high-quality images, we directly approximate the Hessian inverse in the image-domain LSM using a new framework of generative adversarial networks (GANs). The migrated images, source illumination, and migration velocity model are used as input data for the GANs, and the ground-truth reflectivity is utilized as the label data to train the network. Directly applying a conventional GAN framework to implement the image-domain LSM leads to dislocated reflection events and incorrect images. To overcome this issue, we develop a new GAN framework that is more suitable for the Hessian approximation of image-domain LSM, which is named as LsmGANs. In the new framework, we use max-pooling instead of convolution to downsample the feature maps to capture horizontal and vertical variations of reflectors. This enables us to map reflection events to the correct location in downsampling. To address the lateral discontinuity of events in the predicted image from conventional GANs, we further apply multiple transform layers to strengthen feature transformation to guide Hessian approximation. Finally, we add the skip connection in the transform layer to enhance the information exchange of the feature channels and avoid the gradient vanishing problem to improve image resolution. Assembling predicted patches to construct a whole reflectivity image is a key step in the neural network-based LSM. We investigate four strategies using different overlapping ratios and window functions to assemble the LSM patches and observe that less overlapping produces more patch-edge artifacts and the partition of unit with a Gaussian window has the best performance. Numerical experiments for synthetic and field data show that the proposed LsmGAN method can produce high-quality images with balanced amplitudes, reduced artifacts, and improved resolution.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Gated recurrent unit least-squares generative adversarial network for battery cycle life prediction
    Ardeshiri, Reza Rouhi
    Razavi-Far, Roozbeh
    Li, Tao
    Wang, Xu
    Ma, Chengbin
    Liu, Ming
    MEASUREMENT, 2022, 196
  • [32] Least-squares image resizing using finite differences
    Muñoz, A
    Blu, T
    Unser, M
    IEEE TRANSACTIONS ON IMAGE PROCESSING, 2001, 10 (09) : 1365 - 1378
  • [33] MultiTempGAN: Multitemporal multispectral image compression framework using generative adversarial networks
    Karaca, Ali Can
    Kara, Ozan
    Gullu, Mehmet Kemal
    JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2021, 81
  • [34] Least-squares reverse time migration in frequency domain using the adjoint-state method
    Ren, Haoran
    Wang, Huazhong
    Chen, Shengchang
    JOURNAL OF GEOPHYSICS AND ENGINEERING, 2013, 10 (03)
  • [35] Image Inpainting Using Generative Adversarial Networks
    Luo H.-L.
    Ao Y.
    Yuan P.
    Tien Tzu Hsueh Pao/Acta Electronica Sinica, 2020, 48 (10): : 1891 - 1898
  • [36] Imaging with multiples using least-squares reverse time migration
    Wong, Mandy
    Biondi, Biondo
    Ronen, Shuki
    Leading Edge, 2014, 33 (09): : 970 - 976
  • [37] Sparse least-squares reverse time migration using seislets
    Dutta, Gaurav
    JOURNAL OF APPLIED GEOPHYSICS, 2017, 136 : 142 - 155
  • [38] 2-D and 3-D Image-Domain Least-Squares Reverse Time Migration Through Point Spread Functions and Excitation-Amplitude Imaging Condition
    Zhang, Wei
    Gao, Jinghuai
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [39] Sketch simplification based on conditional random field and least squares generative adversarial networks
    Lu, Qianwen
    Tao, Qingchuan
    Zhao, Yalin
    Liu, Manxiao
    NEUROCOMPUTING, 2018, 316 : 178 - 189
  • [40] Time domain design of fractional differintegrators using least-squares
    Barbosa, Ramiro S.
    Tenreiro Machado, J. A.
    Silva, Manuel F.
    SIGNAL PROCESSING, 2006, 86 (10) : 2567 - 2581