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Estimation of the mixing matrix for underdetermined blind source separation using spectral estimation techniques

机译:使用频谱估计技术估计欠定盲源分离的混合矩阵

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Blind source separation is concerned with estimating n source signals from m measurements that are generated through an unknown mixing process. In the underdetermined linear case, where the number of measurements is smaller than the number of sources, the solution can be obtained in three stages: represent the signals in a sparse domain, estimate the mixing matrix, and evaluate the sources using the available previous knowledge. This paper deals with the second stage, that can be formulated as to find the peaks location of a probability density function (PDF). It is shown that when the premise of sparse signals is satisfied, the densities resemble the power spectral density (PSD) of sinusoids in noise. The analogy between a PDF and a PSD allows us to apply spectral estimation techniques to determine the mixing matrix. According to the shape of the PDF's, parametric methods for line spectra have been applied.
机译:盲源分离涉及从通过未知混合过程生成的m个测量值中估计n个源信号。在不确定的线性情况下(测量次数小于信号源的数目),可以在三个阶段中获得解决方案:在稀疏域中表示信号,估计混合矩阵以及使用现有的现有知识评估信号源。本文涉及第二阶段,该阶段可以表述为找到概率密度函数(PDF)的峰值位置。结果表明,当满足稀疏信号的前提时,密度类似于噪声中正弦曲线的功率谱密度(PSD)。 PDF和PSD之间的类比使我们能够应用频谱估计技术来确定混合矩阵。根据PDF的形状,已经应用了线谱的参数化方法。

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