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Blind source separation of noisy mixtures using a semi-parametric approach with application to heavy-tailed signals

机译:使用半参数方法对嘈杂混合物进行盲源分离,并应用于重尾信号

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In this paper, we propose a new semi-parametric approach for blind source separation (BSS) of noisy mixtures with application to heavy-tailed signals. The semi-parametric statistical principle is used to formulate the BSS problem as a maximum likelihood (ML) estimation. More precisely, this approach consists of combining the logspline model for sources density approximation with a stochastic version of the EM algorithm for mixing matrix estimation. The proposed method is truly blind to the particular underlying distribution of the mixed signals and performs simultaneously the estimation of the unknown probability density functions (pdf) of the source signals and the estimation of the mixing matrix. The application of logspline density approximation also enables the algorithm to be robust to modelization errors of the sources. In addition, it is robust against outliers and impulsive effect. Computer simulations are provided to illustrate the effectiveness of the proposed separation method comparatively with classical ones.
机译:在本文中,我们提出了一种新的半参数方法,用于嘈杂混合物的盲源分离(BSS),并将其应用于重尾信号。半参数统计原理用于将BSS问题公式化为最大似然(ML)估计。更准确地说,此方法包括将用于源密度近似的对数线模型与用于混合矩阵估计的EM算法的随机版本相结合。所提出的方法确实对混合信号的特定基础分布视而不见,并且同时执行源信号的未知概率密度函数(pdf)的估计和混合矩阵的估计。对数线密度逼近的应用还使该算法对于源的建模误差具有鲁棒性。另外,它对于异常值和脉冲效应也很鲁棒。提供了计算机仿真,以相对于传统方法来说明所提出的分离方法的有效性。

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