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首页> 外文期刊>IEEE Transactions on Signal Processing >Penalty Function-Based Joint Diagonalization Approach for Convolutive Blind Separation of Nonstationary Sources
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Penalty Function-Based Joint Diagonalization Approach for Convolutive Blind Separation of Nonstationary Sources

机译:基于惩罚函数的联合对角化方法用于非平稳源的卷积盲分离

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摘要

A new approach for convolutive blind source separation (BSS) by explicitly exploiting the second-order nonstationarity of signals and operating in the frequency domain is proposed. The algorithm accommodates a penalty function within the cross-power spectrum-based cost function and thereby converts the separation problem into a joint diagonalization problem with unconstrained optimization. This leads to a new member of the family of joint diagonalization criteria and a modification of the search direction of the gradient-based descent algorithm. Using this approach, not only can the degenerate solution induced by a null unmixing matrix and the effect of large errors within the elements of covariance matrices at low-frequency bins be automatically removed, but in addition, a unifying view to joint diagonalization with unitary or nonunitary constraint is provided. Numerical experiments are presented to verify the performance of the new method, which show that a suitable penalty function may lead the algorithm to a faster convergence and a better performance for the separation of convolved speech signals, in particular, in terms of shape preservation and amplitude ambiguity reduction, as compared with the conventional second-order based algorithms for convolutive mixtures that exploit signal nonstationarity.
机译:通过显式地利用信号的二阶非平稳性并在频域中进行操作,提出了一种用于卷积盲源分离(BSS)的新方法。该算法在基于交叉功率谱的成本函数中包含惩罚函数,从而将分离问题转换为无约束优化的联合对角化问题。这导致了联合对角化标准家族的新成员,并且改变了基于梯度的下降算法的搜索方向。使用这种方法,不仅可以自动消除由零解混矩阵引起的退化解以及低频点处协方差矩阵的元素内的大误差的影响,而且还可以统一查看联合对角化与unit或提供了非单一约束。通过数值实验验证了该方法的性能,结果表明,合适的罚函数可以使算法更快地收敛,并且可以更好地分离卷积语音信号,特别是在形状保持和幅度方面。与传统的基于二阶算法的利用信号非平稳性的卷积混合算法相比,模糊度降低了。

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