曲线域非线性阈值法抑制地震信号噪声

Henglei Zhang, Tianyou Liu
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引用次数: 3

摘要

传统上,通过使用傅立叶分析滤波器以及在较小程度上使用非线性统计滤波器来抑制或消除地震数据集中的噪声。虽然这些方法在特定条件下是非常有用的,但是对于中到大幅度和空间范围的特征去噪,特别是对于低信噪比的数据,会产生不良的效果。本文提出了一种新的曲线域非线性阈值去噪方法:在曲线域多尺度分解的基础上,利用非线性阈值对曲线域地震数据进行去噪。通过对地震资料的计算,发现该方法可以有效地抑制随机噪声,同时保持有效波,结果的信噪比高于传统方法。同时,克服了传统滤波方法在抑制噪声时影响有效波的缺点。
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Noise Attenuation for Seismic Signal by Non-Linear Thresholding in Curvelet Domain
Noise has traditionally been suppressed or eliminated in seismic data sets by the use of Fourier analysis filters and, to a lesser degree, nonlinear statistical filters. Although these methods are quite useful under specific conditions, they produce undesirable effects when denoising features of moderate to large amplitude and spatial extent, especially for the low S/N data. In this paper, a new method of de-noise in curvelet domain with non-linear thresholding is proposed: on the basis of curvelet multi-scale decomposition in good approximation of the curve variation characteristics, the author used non-linear threshold to address seismic data in curvelet domain. Through calculation of seismic data, we find out the method can suppress the random noise effectively while the effective wave can be maintained, the signal to noise ratio of the result is higher than the traditional method's. At the same time, it overcomes the drawback that the conventional filtering approach may affect the effective wave when suppressing noise.
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