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Blind Identification of Underdetermined Mixtures Based on the Characteristic Function: The Complex Case

机译:基于特征函数的欠定混合物盲识别

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Blind identification of underdetermined mixtures can be addressed efficiently by using the second ChAracteristic Function (CAF) of the observations. Our contribution is twofold. First, we propose the use of a Levenberg-Marquardt algorithm, herein called LEMACAF, as an alternative to an Alternating Least Squares algorithm known as ALESCAF, which has been used recently in the case of real mixtures of real sources. Second, we extend the CAF approach to the case of complex sources for which the previous algorithms are not suitable. We show that the complex case involves an appropriate tensor stowage, which is linked to a particular tensor decomposition. An extension of the LEMACAF algorithm, called ${rm LEMACAF}BBC$ then proposed to blindly estimate the mixing matrix by exploiting this tensor decomposition. In our simulation results, we first provide performance comparisons between third- and fourth-order versions of ALESCAF and LEMACAF in various situations involving BPSK sources. Then, a performance study of ${rm LEMACAF}BBC$ is carried out considering 4-QAM sources. These results show that the proposed algorithm provides satisfying estimations especially in the case of a large underdeterminacy level.
机译:通过使用观测值的第二ChAracteristic函数(CAF),可以有效解决对不确定混合物的盲目识别。我们的贡献是双重的。首先,我们建议使用Levenberg-Marquardt算法(在本文中称为LEMACAF)替代称为ALESCAF的交替最小二乘算法,该算法最近已在真实源的真实混合物中使用。其次,我们将CAF方法扩展到复杂算法的情况下,而以前的算法不适合这种情况。我们表明,复杂的情况涉及适当的张量积载,这与特定的张量分解有关。然后提出了LEMACAF算法的扩展,称为$ {rm LEMACAF} BBC $,通过利用该张量分解来盲目估计混合矩阵。在我们的仿真结果中,我们首先提供了在涉及BPSK源的各种情况下,ALESCAF和LEMACAF的三阶和四阶版本之间的性能比较。然后,考虑了4-QAM来源,对$ {rm LEMACAF} BBC $进行了性能研究。这些结果表明,所提出的算法提供了令人满意的估计,尤其是在不确定性水平较高的情况下。

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