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Wavelet Denoising Techniques With Applications To Experimental Geophysical Data

机译:小波去噪技术及其在实验地球物理数据中的应用

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摘要

In this paper, we compare Fourier-based and wavelet-based denoising techniques applied to both synthetic and real experimental geophysical data. The Fourier-based technique used for comparison is the classical Wiener estimator, and the wavelet-based techniques tested include soft and hard wavelet thresholding and the empirical Bayes (EB) method. Both real and synthetic data sets were used to compare the Wiener estimator in the Fourier domain, soft thresholding, hard thresholding, and the EB wavelet-based estimators. Four synthetic data sets, originally designed by Donoho and Johnstone to isolate and mimic various features found in real signals, were corrupted with correlated Caussian noise to test the various denoising methods. Quantitative comparison of the error between the true and estimated signal revealed that the wavelet-based methods outperformed the Wiener estimator in most cases. Also, the EB method outperformed the soft and hard thresholding methods in general because the wavelet representation is not sparse at the coarsest levels, which leads to poor estimation of the noise variance by the thresholding methods. Microseismic and streaming potential data from laboratory tests were used for comparison and showed similar trends as in the synthetic data analysis.
机译:在本文中,我们比较了基于傅立叶和基于小波的去噪技术,将其应用于合成和实际实验地球物理数据。用于比较的基于傅立叶的技术是经典的Wiener估计器,所测试的基于小波的技术包括软小波阈值和硬小波阈值以及经验贝叶斯(EB)方法。真实数据集和合成数据集均用于比较傅立叶域中的Wiener估计器,软阈值,硬阈值和基于EB小波的估计器。最初由Donoho和Johnstone设计以隔离和模拟真实信号中发现的各种特征的四个合成数据集被相关的高斯噪声破坏,以测试各种降噪方法。真实信号和估计信号之间的误差的定量比较表明,在大多数情况下,基于小波的方法优于Wiener估计器。同样,EB方法通常比软阈值方法和硬阈值方法要好,因为小波表示在最粗糙的级别上并不稀疏,这导致阈值方法对噪声方差的估计较差。来自实验室测试的微震和流潜在数据用于比较,并显示出与合成数据分析类似的趋势。

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