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Adaptive filtering of random noise in near-surface seismic and ground-penetrating radar data

机译:近地表地震和探地雷达数据中随机噪声的自适应滤波

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Adaptive filtering is an effective method to suppress speckle noise in 2D digital image data. Recently, a variety of adaptive filtering algorithms have been developed and employed to remove random noise from geophysical data. In this paper, two filters are designed by adopting adaptive algorithms, the optimum 2D median filter, (a 2D median filter with an optimum window size), and the 2D adaptive Wiener filter (a real time optimal filter renovated from the conventional Wiener filter technology) to investigate the advantages of using adaptive filters in processing ultra-shallow seismic and ground-penetrating radar data. Synthetic common-shot record with added white Gaussian noise was employed to test the effects of 2D window size on both filtering processes. To demonstrate the practical performance of the filter, we processed a set of prestack ultra-shallow seismic data recorded from a shallow fault zone and a stacked section of ground-penetrating radar data as real examples. Examining the performances of the two filters both in time and frequency domains, we notice that the recovery of the original signal depends on the attribute, intensity, and density of the noise. Inspecting the filtered synthetic records in t-x domain, these two filters not only successfully remove the random noise but also suppress the ground roll. With the prestack seismic field data, the median filter renders better resolution than the Wiener filter, but it also suppresses signals that may have geological implications, making the result less desirable. In addition, both the adaptive filters improve the geologically interesting low frequency components of the stacked ground-penetrating radar data, but the high frequency components are blurred.
机译:自适应滤波是抑制2D数字图像数据中斑点噪声的有效方法。近来,已经开发出多种自适应滤波算法并将其用于从地球物理数据中去除随机噪声。在本文中,通过采用自适应算法设计了两个滤波器,即最佳2D中值滤波器(具有最佳窗口大小的2D中值滤波器)和2D自适应Wiener滤波器(从传统的Wiener滤波器技术改进而来的实时最佳滤波器) ),以研究使用自适应滤波器处理超浅地震和探地雷达数据的优势。合成的普通镜头记录加上白高斯噪声,用于测试2D窗口大小对两个滤波过程的影响。为了演示该滤波器的实际性能,我们处理了一组从浅断层带记录的叠前超浅地震数据和穿透地面的雷达数据的堆叠部分作为真实示例。检查两个滤波器在时域和频域上的性能,我们注意到原始信号的恢复取决于噪声的属性,强度和密度。在t-x域中检查过滤后的合成记录,这两个过滤器不仅成功地消除了随机噪声,而且还抑制了地面滚动。利用叠前地震场数据,中值滤波器比维纳滤波器具有更好的分辨率,但是它也抑制了可能具有地质意义的信号,从而使结果不太理想。此外,两个自适应滤波器都改善了地质穿透的雷达数据的地质意义上的低频成分,但高频成分却模糊了。

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