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Matrix-Group Algorithm via Improved Whitening Process for Extracting Statistically Independent Sources From Array Signals

机译:通过改进的增白过程的矩阵群算法从阵列信号中提取统计独立的信号源

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摘要

This paper addresses the problem of blind separation of multiple independent sources from observed array output signals. The main contributions in this paper include an improved whitening scheme for estimation of signal subspace, a novel biquadratic contrast function for extraction of independent sources, and an efficient alterative method for joint implementation of a set of approximate diagonalization-structural matrices. Specifically, an improved whitening scheme is first developed by estimating the signal subspace jointly from a set of diagonalization-structural matrices based on the proposed cyclic maximizer of an interesting cost function. Moreover, the globally asymptotical convergence of the proposed cyclic maximizer is analyzed and proved. Next, a novel biquadratic contrast function is proposed for extracting one single independent component from a slice matrix group of any order cumulant of the array signals in the presence of temporally white noise. A fast fixed-point algorithm that is a cyclic minimizer is constructed for searching a minimum point of the proposed contrast function. The globally asymptotical convergence of the proposed fixed-point algorithm is analyzed. Then, multiple independent components are obtained by using repeatedly the proposed fixed-point algorithm for extracting one single independent component, and the orthogonality among them is achieved by the well-known QR factorization. The performance of the proposed algorithms is illustrated by simulation results and is compared with three related blind source separation algorithms
机译:本文解决了将多个独立源与观察到的阵列输出信号盲分离的问题。本文的主要贡献包括改进的用于信号子空间估计的白化方案,用于提取独立信号源的新型双二次对比度函数以及联合实现一组近似对角化结构矩阵的有效替代方法。具体地,首先基于提出的有趣的代价函数的循环最大化器,通过从一组对角化结构矩阵联合估计信号子空间,首先开发出一种改进的白化方案。此外,分析并证明了所提出的循环最大化器的全局渐近收敛性。接下来,提出了一种新颖的双二次对比度函数,用于在时间上存在白噪声的情况下,从阵列信号的任何阶累积量的条带矩阵组中提取一个单个独立分量。一种快速固定点算法,它是循环最小化器,用于搜索所提出的对比度函数的最小点。分析了所提出定点算法的全局渐近收敛性。然后,通过反复使用提出的定点算法提取单个独立分量,得到多个独立分量,并通过众所周知的QR分解实现它们之间的正交性。仿真结果说明了所提算法的性能,并与三种相关的盲源分离算法进行了比较。

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