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Estimation of Seismic Wavelets Based on the Multivariate Scale Mixture of Gaussians Model

机译:基于高斯模型多元尺度混合的地震子波估计

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This paper proposes a new method for estimating seismic wavelets. Suppose a seismic wavelet can be modeled by a formula with three free parameters (scale, frequency and phase). We can transform the estimation of the wavelet into determining these three parameters. The phase of the wavelet is estimated by constant-phase rotation to the seismic signal, while the other two parameters are obtained by the Higher-order Statistics (HOS) (fourth-order cumulant) matching method. In order to derive the estimator of the Higher-order Statistics (HOS), the multivariate scale mixture of Gaussians (MSMG) model is applied to formulating the multivariate joint probability density function (PDF) of the seismic signal. By this way, we can represent HOS as a polynomial function of second-order statistics to improve the anti-noise performance and accuracy. In addition, the proposed method can work well for short time series.
机译:本文提出了一种估计地震子波的新方法。假设地震子波可以由具有三个自由参数(比例,频率和相位)的公式建模。我们可以将小波的估计转换为确定这三个参数。小波的相位是通过对地震信号进行恒定相位旋转来估计的,而其他两个参数是通过高阶统计(HOS)(四阶累积量)匹配方法获得的。为了推导高阶统计量(HOS)的估计量,将高斯模型(MSMG)的多元尺度混合应用于公式化地震信号的多元联合概率密度函数(PDF)。通过这种方式,我们可以将HOS表示为二阶统计量的多项式函数,以提高抗噪性能和准确性。另外,所提出的方法可以在短时间序列上很好地工作。

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