Orthogonal dictionary learning based on l 4-Norm maximisation for seismic data interpolation

IF 0.6 4区 地球科学 Q4 GEOCHEMISTRY & GEOPHYSICS Exploration Geophysics Pub Date : 2023-05-18 DOI:10.1080/08123985.2023.2205582
Jingnan Yue, Lihua Fu, Xiao Niu, Wenqian Fang
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引用次数: 0

Abstract

Due to geological conditions, acquisition environment, and economic restrictions, acquired seismic data are often incomplete and irregularly distributed, and this affects subsequent migration imaging and inversion. Sparse constraint-based methods are widely used for seismic data interpolation, including fixed-base transform and dictionary learning. Fixed-base transform methods are fast and simple to implement, but the basis function needs to be pre-selected. The dictionary learning method is more adaptive, and provides a means of learning the sparse representation from corrupted data. K-singular value decomposition (K-SVD) is a classical dictionary learning method that combines sparse coding and dictionary updating iteratively. However, the dictionary atoms are updated column-by-column, leading to high computational complexity due to long SVD calculation times. In this study, we evaluated the dictionary learning method via l 4-norm maximisation using an orthogonal dictionary, which is different from the traditional l 0-norm or l 1-norm minimisation, and interpolated the missing traces in the projection onto convex sets (POCS) framework. The optimal objection function is convex, but can be solved using a simple and efficient Matching, Stretching and Projection (MSP) algorithm, which greatly reduces the dictionary learning time. Numerical experiments using synthetic and field data demonstrate the effectiveness of the proposed method.
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基于l4-范数最大化的地震数据插值正交字典学习
由于地质条件、采集环境和经济限制,采集的地震数据往往不完整、分布不规则,影响了后续的偏移成像和反演。基于稀疏约束的方法广泛用于地震数据插值,包括固定基变换和字典学习。固定基变换方法实现起来既快速又简单,但需要预先选择基函数。字典学习方法更具自适应性,并提供了一种从损坏的数据中学习稀疏表示的方法。K-奇异值分解(K-SVD)是一种将稀疏编码和字典更新迭代结合起来的经典字典学习方法。然而,字典原子是逐列更新的,由于SVD计算时间长,导致计算复杂度高。在本研究中,我们使用正交字典评估了通过L4-范数最大化的字典学习方法,该方法不同于传统的L0-范数或I1-范数最小化,并对投影到凸集(POCS)框架中的缺失轨迹进行了插值。最优目标函数是凸的,但可以使用简单高效的匹配、拉伸和投影(MSP)算法来求解,这大大减少了字典学习时间。利用合成数据和现场数据进行的数值实验证明了该方法的有效性。
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来源期刊
Exploration Geophysics
Exploration Geophysics 地学-地球化学与地球物理
CiteScore
2.30
自引率
0.00%
发文量
33
审稿时长
>12 weeks
期刊介绍: Exploration Geophysics is published on behalf of the Australian Society of Exploration Geophysicists (ASEG), Society of Exploration Geophysics of Japan (SEGJ), and Korean Society of Earth and Exploration Geophysicists (KSEG). The journal presents significant case histories, advances in data interpretation, and theoretical developments resulting from original research in exploration and applied geophysics. Papers that may have implications for field practice in Australia, even if they report work from other continents, will be welcome. ´Exploration and applied geophysics´ will be interpreted broadly by the editors, so that geotechnical and environmental studies are by no means precluded. Papers are expected to be of a high standard. Exploration Geophysics uses an international pool of reviewers drawn from industry and academic authorities as selected by the editorial panel. The journal provides a common meeting ground for geophysicists active in either field studies or basic research.
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