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Underdetermined Independent Component Analysis Based on First- and Second-Order Statistics

机译:基于一阶和二阶统计量的欠定独立分量分析

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摘要

This paper proposes a class of new algorithms based on first- and second-order statistics for independent source extraction of circular signals in underdetermined complex-valued mixture. The complex-valued mixing matrix is estimated by two extremely cost-effective novel methods based on the conditional mean of the mixtures which require some prior knowledge of the positive support of the real and/or imaginary parts of the sources. And the sources are recovered by combining the conventional minimum mean-squared error-based beamforming approach with the acquired prior knowledge. Based on how much prior knowledge is got, we propose several new algorithms. The complexity analysis about the proposed algorithms suggests that the algorithms which employ more prior knowledge have higher complexity, but their computational cost is significantly low. Two examples are provided for showing the possible applications of these proposed algorithms. Simulation results validate the effectiveness and reliability of all presented methods.
机译:提出了基于一阶和二阶统计量的一类新算法,用于在不确定复数值混合环境中独立提取圆形信号。基于混合物的条件均值,通过两种极具成本效益的新方法,可以估算复数值混合矩阵,这需要先验知识对源实部和/或虚部的积极支持。通过将常规的基于最小均方误差的波束形成方法与所获得的先验知识相结合,可以恢复光源。基于获得的先验知识,我们提出了几种新算法。对所提出算法的复杂度分析表明,采用更多先验知识的算法具有较高的复杂度,但是其计算成本却很低。提供了两个示例来显示这些建议算法的可能应用。仿真结果验证了所提出的所有方法的有效性和可靠性。

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