窄带源分离在宽带环境下阵列信号处理中的应用

J. Galy, C. Adnet, É. Chaumette
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引用次数: 3

摘要

盲源分离现在是一个众所周知的问题。各种方法已经提出了瞬时和卷积混合的来源。传统的天线阵列处理技术基于二阶统计量的使用,但依赖于限制性假设。因此,当先验的传播信息或阵列的几何信息不可用时,该模型可以推广为盲源分离模型。它假定源的统计独立性和它们的非高斯性。本文主要研究了宽带干扰机中嵌入的窄带信源分离问题。我们证明了用于瞬时混合的JADE算法在只有感兴趣的信号是窄带的宽带环境中仍然有效。我们还证明了宽带信号往往会占据协方差矩阵的所有自由度,并改变信号的子空间维数。
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Narrow band source separation in wide band context applications to array signal processing
Blind source separation is now a well known problem. Various methods have been proposed for instantaneous and convolutive mixtures of sources. Conventional antenna array processing techniques are based on the use of second order statistics but rest on restrictive assumptions. Thus, when a priori informations about the propagation or the geometry of the array are not available, the model can be generalized to a blind sources separation model. It supposes the statistical independence of the sources and their non-gaussianity. In this paper, we focus on the narrow band source separation problem embedded in wide band jammers. We show that the JADE algorithm made for instantaneous mixture is still valid in a wide band context where only the signals of interest are narrow-band. We also prove that a wide band signal tends to occupy all the degrees of freedom of the covariance matrix and modifies the signal subspace dimension.
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