论文成果
Structurally-Constrained Unsupervised Deep Learning for Seismic High-Resolution Reconstruction
摘要:Seismic high-resolution reconstruction is a key step in retrieving high-resolution components to characterize subsurface geological structures. Recently, deep learning (DL) has emerged as an effective technique in seismic resolution improvement; however, most DL methods with deep networks are based on supervised learning, which is purely data-driven and requires a large amount of high-quality labels generated from well-data. Generally, the well-data are expensive to collect through field surveys. In this article, we propose an automatic reflectivity inversion framework for improving the resolution of the seismic data on the basis of an unsupervised DL approach. We leverage a network to adaptively learn features from poststack seismic data by integrating the physical constraint provided by the Robinson convolution model and the prior knowledge encoded in sparse reflectivity model, and then use these learned features to reconstruct the high-resolution data. Moreover, we incorporate a lateral structural constraint as a specific prior into the training process of the neural network to enhance its ability to recover more structural details and improve the stability of the results. Experimental results on both synthetic and field datasets validate the performance of our proposed method. Compared with the conventional method, the proposed method can yield more accurate and laterally more consistent high-resolution results. ? 1980-2012 IEEE.
ISSN号:0196-2892
卷、期、页:卷62:1-15
发表日期:2023-12-19
期刊分区(SCI为中科院分区):一区
收录情况:SCI(科学引文索引印刷版),EI(工程索引),SCIE(科学引文索引网络版)
发表期刊名称:IEEE Transactions on Geoscience and Remote Sensing
参与作者:王永骁,张浩
通讯作者:许静怡,高洋
第一作者:赵振聪
论文类型:期刊论文
论文概要:王永骁,许静怡,赵振聪,高洋,张浩,Structurally-Constrained Unsupervised Deep Learning for Seismic High-Resolution Reconstruction,IEEE Transactions on Geoscience and Remote Sensing,2023,卷62:1-15
论文题目:Structurally-Constrained Unsupervised Deep Learning for Seismic High-Resolution Reconstruction
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