基于非下采样Shearlet变换的地震数据一致性近端分类去噪

Yu Sang, Jinguang Sun, Xiangfu Meng, Haibo Jin, Yanfei Peng, Xinjun Zhang
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引用次数: 2

摘要

基于稀疏变换的地震去噪是地震数据处理中最有效、应用最广泛的方法之一。本文提出了一种基于非下采样shearlet变换(NSST)和近端一致性分类器(PCC)的地震数据去噪方法。NSST是一种新兴的、优秀的多尺度、多方向、最优稀疏度分析方法,可以对分解后的地震有效信号进行近似最优逼近。与传统的基于稀疏变换的方法通常使用阈值算子和相应的逆变换对地震数据进行降噪不同,本文提出的方法在阈值算子之前使用性能优越的PCC对地震数据的NSST系数进行分类。增加的步骤可以有效地将反射信号的NSST系数划分为信息相关系数和噪声相关系数,可以保留反射信号的边缘,尽可能地保持事件信息的完整。此外,为了更好地实现地震数据去噪,我们还引入了自适应阈值计算方法和软阈值法。通过一个典型的综合算例,证明了该方法优于两种已知的基于稀疏变换的去噪方法。此外,我们还将该方法应用于实际地震资料,取得了令人满意的去噪效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Subsampled Shearlet Transform Based Seismic Data Denoising via Proximal Classifier with Consistency
The sparse transform based seismic denoising is one of the most effective and widely used approaches in seismic data processing. In this paper, we present a novel and unconventional seismic data denoising method based on the non-subsampled shearlet transform (NSST) and proximal classifier with consistency (PCC). NSST is an emerging and excellent multi-scale, multi-direction and optimal sparsity analysis method, which can provide nearly optimal approximation of the decomposed seismic effective signals. Unlike traditional sparse transform based methods that often use a thresholding operator and corresponding inverse transform to denoise seismic data, our proposed method employs a superior performance PCC to classify the NSST coefficients of seismic data before thresholding operator. The added step can effectively divide the NSST coefficients into reflected signal information-related coefficients and noise-related coefficients, which can preserve the edge of reflected signals and keep the information of events intact as much as possible. In addition, we also introduce an adaptive threshold computing method and a soft-thresholding method to achieve seismic data denoising better. A typical synthetic example is used to demonstrate the superior performance of the proposed method over two well-known sparse transform based denoising methods. Besides, we also apply the proposed method to real seismic data, achieving the satisfactory denoising results.
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