首页> 外文会议>European Signal Processing Conference(EUSIPCO 2004) vol.2; 20040906-10; Vienna(AT) >THE MULTIVARIATE NORMAL INVERSE GAUSSIAN DISTRIBUTION: EM-ESTIMATION AND ANALYSIS OF SYNTHETIC APERTURE SONAR DATA
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THE MULTIVARIATE NORMAL INVERSE GAUSSIAN DISTRIBUTION: EM-ESTIMATION AND ANALYSIS OF SYNTHETIC APERTURE SONAR DATA

机译:多元正态逆高斯分布:合成孔径声纳数据的EM估计和分析

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摘要

The heavy-tailed Multivariate Normal Inverse Gaussian (MNIG) distribution is a recent variance-mean mixture of a multivariate Gaussian with a univariate inverse Gaussian distribution. Due to the complexity of the likelihood function, parameter estimation by direct maximization is exceedingly difficult. To overcome this problem, we propose a fast and accurate multivariate Expectation-Maximization (EM) algorithm for maximum likelihood estimation of the scalar, vector, and matrix parameters of the MNIG distribution. Important fundamental and attractive properties of the MNIG as a modeling tool for multivariate heavy-tailed processes are discussed. The modeling strength of the MNIG, and the feasibility of the proposed EM parameter estimation algorithm, are demonstrated by fitting the MNIG to real world wideband synthetic aperture sonar data.
机译:重尾多元正态逆高斯(MNIG)分布是多元高斯与单变量逆高斯分布的最新方差均值混合。由于似然函数的复杂性,通过直接最大化进行参数估计非常困难。为解决此问题,我们提出了一种快速准确的多元期望最大化(EM)算法,用于对MNIG分布的标量,矢量和矩阵参数进行最大似然估计。讨论了MNIG作为多元重尾过程建模工具的重要基本和有吸引力的特性。通过将MNIG拟合到现实世界中的宽带合成孔径声纳数据,证明了MNIG的建模强度以及所提出的EM参数估计算法的可行性。

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