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System and method for hybrid minimum mean squared error matrix-pencil separation weights for blind source separation

机译:用于盲源分离的混合最小均方误差矩阵-铅笔分离权重的系统和方法

摘要

A technique for blind source separation (“BSS”) of statistically independent signals with low signal-to-noise plus interference ratios under a narrowband assumption utilizing cumulants in conjunction with spectral estimation of the signal subspace to perform the blind separation is disclosed. The BSS technique utilizes a higher-order statistical method, specifically fourth-order cumulants, with the generalized eigen analysis of a matrix-pencil to blindly separate a linear mixture of unknown, statistically independent, stationary narrowband signals at a low signal-to-noise plus interference ratio having the capability to separate signals in spatially and/or temporally correlated Gaussian noise. The disclosed BSS technique separates low-SNR co-channel sources for observations using an arbitrary un-calibrated sensor array. The disclosed BSS technique forms a separation matrix with hybrid matrix-pencil adaptive array weights that minimize the mean squared errors due to both interference emitters and Gaussian noise. The hybrid weights maximize the signal-to interference-plus noise ratio.
机译:公开了一种在窄带假设下利用累积量结合信号子空间的频谱估计来执行具有低信噪比和干扰比的统计独立信号的盲源分离(BSS)的技术。 BSS技术利用一种高阶统计方法,特别是四阶累积量,通过对矩阵-铅笔的广义本征分析,以低信噪比盲目的分离出未知的,统计上独立的固定窄带信号的线性混合物。加上能够在空间和/或时间相关的高斯噪声中分离信号的干扰比。所公开的BSS技术使用任意未校准的传感器阵列来分离低SNR共信道源用于观察。所公开的BSS技术形成具有混合矩阵-铅笔自适应阵列权重的分离矩阵,该矩阵最小化了由于干扰发射器和高斯噪声引起的均方误差。混合权重使信噪比加噪声比最大。

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