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首页> 外文期刊>IEEE Transactions on Signal Processing >A Comparative Study of Approximate Joint Diagonalization Algorithms for Blind Source Separation in Presence of Additive Noise
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A Comparative Study of Approximate Joint Diagonalization Algorithms for Blind Source Separation in Presence of Additive Noise

机译:存在加性噪声的盲源分离近似联合对角化算法的比较研究

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摘要

A comparative study of approximate joint diagonalization algorithms of a set of matrices is presented. Using a weighted least-squares criterion, without the orthogonality constraint, an algorithm is compared with an analogous one for blind source separation (BSS). The criterion of the present algorithm is on the separating matrix while the other is on the mixing matrix. The convergence of the algorithm is proved under some mild assumptions. The performances of the two algorithms are compared with usual standard algorithms using BSS simulations results. We show that the improvement in estimating the separating matrix, resulting from the relaxation of the orthogonality restriction, can be achieved in presence of additive noise when the length of observed sequences is sufficiently large and when the mixing matrix is not close to an orthogonal matrix
机译:提出了一组矩阵的近似联合对角化算法的比较研究。在没有正交性约束的情况下,使用加权最小二乘准则,将算法与类似算法进行盲源分离(BSS)进行比较。本算法的标准是在分离矩阵上,而另一个是在混合矩阵上。在某些温和的假设下证明了该算法的收敛性。使用BSS仿真结果,将这两种算法的性能与常规标准算法进行比较。我们表明,当观察到的序列的长度足够大且混合矩阵不接近正交矩阵时,可以在存在加性噪声的情况下,实现由正交约束松弛所导致的估计分离矩阵的改进。

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