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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Noise subspace techniques in non-gaussian noise using cumulants
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Noise subspace techniques in non-gaussian noise using cumulants

机译:使用累积量的非高斯噪声中的噪声子空间技术

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We consider noise subspace methods for narrowband direction-of-arrival or harmonic retrieval in colored linear non-gaussian noise of unknown covariance and unknown distribution. The non-gaussian noise covariance is estimated via higher order cumulants and combined with correlation information to solve a generalized eigenvalue problem. The estimated eigenvectors are used in a variety of noise subspace methods such as multiple signal classification (MUSIC), MVDR and eigenvector. The noise covariance estimates are obtained in the presence of the harmonic signals, obviating the need for noise-only training records. The covariance estimates may be obtained nonparametrically via cumulant projections, or parametrically using autoregressive moving average (ARMA) models. An information theoretic criterion using higher order cumulants is presented which may be used to simultaneously estimate the ARMA model order and parameters. Third- and fourth-order cumulants are employed for asymmetric and symmetric probability density function (pdf) cases, respectively. Simulation results show considerable improvement over conventional methods with no prewhitening. The effects of prewhitening are particularly evident in the dominant eigenvalues, as revealed by singular value decomposition (SVD) analysis.
机译:对于未知协方差和未知分布的有色线性非高斯噪声,我们考虑使用噪声子空间方法进行窄带到达或谐波检索。通过高阶累积量估计非高斯噪声协方差,并与相关信息结合以解决广义特征值问题。估计的特征向量可用于多种噪声子空间方法中,例如多信号分类(MUSIC),MVDR和特征向量。噪声协方差估计是在存在谐波信号的情况下获得的,从而无需仅噪声的训练记录。可以通过累积量投影非参数地获得协方差估计值,或者使用自回归移动平均(ARMA)模型以参数方式获得协方差估计值。提出了使用高阶累积量的信息理论标准,该信息理论标准可用于同时估计ARMA模型的顺序和参数。三阶和四阶累积量分别用于非对称和对称概率密度函数(pdf)情况。仿真结果表明,与没有预增白的常规方法相比,已有很大的改进。正如奇异值分解(SVD)分析所揭示的那样,预增白的效果在主要特征值中特别明显。

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