欠定混合模型中源分离的局部平均分解

Wei Li, Yunchang Shen, Wenyi Man, Ruixia Sun
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引用次数: 0

摘要

现有的欠定盲源分离(BSS)方法大多假设源信号是严格或部分稀疏的。然而,本文提出了一种基于局部均值分解(LMD)算法的非稀疏信号欠定混合情况下的BSS方法。BSS方法首先将LMD引入到BSS问题中,重建一些额外的混合信号。然后,将这些信号与初始混合物结合起来,使未确定的BSS问题转化为确定的BSS问题,并且克服了混合物不足的困难。对于重建的混合和新形成的确定的BSS问题,提出了两种BSS算法来恢复源。一种算法在新混合物的二阶统计量矩阵上采用奇异值分解实现分离,另一种算法在分离矩阵上采用具有稳定Frobenius范数约束的独立分量分析(ICA)型BSS算法。仿真结果表明,所提出的欠定BSS算法可以处理非稀疏信号,并且比以前的非稀疏BSS算法获得近3dB的均方误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local mean decomposition for source separation in underdetermined mixing model
Most of the existing underdetermined blind source separation (BSS) approaches assume that the source signals are strictly or partially sparse. This paper, however, presents a BSS method in underdetermined mixing situation for non-sparse signals based on the local mean decomposition (LMD) algorithm. The BSS method firstly introduces LMD into the BSS problem to rebuild a few extra mixing signals. Such signals are then combined with the initial mixtures such that the underdetermined BSS problem is transformed into a determined one and the difficulty of the deficiency of the mixtures is overcome. For the rebuilt mixtures and the newly formed determined BSS problem, two BSS algorithms are proposed to recover the sources. One algorithm uses singular value decomposition on the second-order statistics matrix of the new mixtures to realize the separation, and the other employs an independent component analysis (ICA) type BSS algorithm with stable Frobenius norm constraint on the separating matrix. The simulation results have demonstrated that the proposed underdetermined BSS algorithms can process non-sparse signals, and can acquire a nearly 3dB lower mean square error than the previous non-sparse BSS algorithm.
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