基于正交张量字典学习的稀疏正则化逆向问题

4区 工程技术 Q1 Mathematics
Diriba Gemechu
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引用次数: 0

摘要

在地震数据处理中,数据恢复(包括重建缺失地震道和去除记录数据中的噪声)是提高信噪比(SNR)的关键步骤。地震数据重建和噪声去除是一个稀疏优化问题,可以通过稀疏正则化来解决。稀疏正则化是解决逆问题的关键工具。稀疏正则化用于引入先验知识,并使近似反问题变得可行。稀疏正则化通过用一个接近真解的好解问题来替代不好解的逆问题,从而解决不好解的问题。在过去 20 年中,人们对线性正则化方法的兴趣已经从线性转向非线性,即使是线性逆问题也不例外。在逆问题中,正则化可以稳定求解条件不佳的逆问题,并给出一个能充分拟合测量结果的解,而不会产生不合理的复杂假象。在本文中,我们针对逆问题(地震数据插值和去噪)提出了一种基于张量字典方法的新型稀疏正则化。这种正则化避免了重建过程中地震数据稀疏表示的矢量化步骤。稀疏化信号的关键步骤是选择促进稀疏化的词典学习。基于学习的方法可以自适应地稀疏化数据集,但计算复杂度高,且不涉及数据集的先验约束模式信息。对于高维地震数据处理而言,许多现有的字典学习方法在计算上是不可行的。由于这些方法处理的是矢量化问题,因此还破坏了基本信息,降低了信号的可辨别性和可表达性。本文提出了正交张量字典学习法,通过利用正交性和分离性从输入数据中学习字典,作为逆问题的稀疏正则化。该方法的性能在地震数据单独插值和去噪以及同时插值和去噪中得到了验证。合成和真实地震数据集的数值示例证明了所提方法的有效性。恢复数据的信噪比证实,与 K-singular 值分解法和正交字典学习法相比,所提出的方法是最有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Regularization Based on Orthogonal Tensor Dictionary Learning for Inverse Problems
In seismic data processing, data recovery including reconstruction of the missing trace and removal of noise from the recorded data are the key steps in improving the signal-to-noise ratio (SNR). The reconstruction of seismic data and removal of noise becomes a sparse optimization problem that can be solved by using sparse regularization. Sparse regularization is a key tool in the solution of inverse problems. They are used to introduce prior knowledge and make the approximation of ill-posed inverses feasible. It deals with ill-posedness by replacing an ill-posed inverse problem with a well-posed problem that has a solution close to the true solution. In the last 2 decades, interest has shifted from linear toward nonlinear regularization methods even for linear inverse problems. In inverse problems, regularizations serve as stabilizing the solution of ill-posed inverse problems and give a solution that adequately fits measurements without producing unjustifiably complex artifacts. In this paper, we present a novel sparse regularization based on a tensor-based dictionary method for inverse problems (seismic data interpolation and denoising). This regularization avoids the vectorization step for sparse representation of seismic data during the reconstruction process. The key step in sparsifying signals is the choice of sparsity-promoting dictionary learning. The learning-based approach can adaptively sparsify datasets but has high computational complexity and involves no prior-constraint pattern information for the dataset. Many existing dictionary learning methods would be computationally infeasible for the high dimensional seismic data processing. These methods also destroy the essential information as well as it reduces the discriminability and expressibility of the signal, since they deal with vectorization. In this paper, the orthogonal tensor dictionary learning that learns a dictionary from the input data by employing orthogonality and separability is proposed as sparse regularization for the inverse problems. The performance of the proposed method was validated in seismic data interpolation and denoising individually as well as simultaneously. Numerical examples of synthetic and real seismic datasets demonstrate the validity of the proposed method. The SNR of the recovered data confirms that the proposed method is the most effective method than K-singular value decomposition and orthogonal dictionary learning methods.
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来源期刊
Mathematical Problems in Engineering
Mathematical Problems in Engineering 工程技术-工程:综合
CiteScore
4.00
自引率
0.00%
发文量
2853
审稿时长
4.2 months
期刊介绍: Mathematical Problems in Engineering is a broad-based journal which publishes articles of interest in all engineering disciplines. Mathematical Problems in Engineering publishes results of rigorous engineering research carried out using mathematical tools. Contributions containing formulations or results related to applications are also encouraged. The primary aim of Mathematical Problems in Engineering is rapid publication and dissemination of important mathematical work which has relevance to engineering. All areas of engineering are within the scope of the journal. In particular, aerospace engineering, bioengineering, chemical engineering, computer engineering, electrical engineering, industrial engineering and manufacturing systems, and mechanical engineering are of interest. Mathematical work of interest includes, but is not limited to, ordinary and partial differential equations, stochastic processes, calculus of variations, and nonlinear analysis.
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