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Equi-convergence Algorithm Based on Asymmetric Generalized Gaussian System for Blind Source Separation

机译:基于非对称通用高斯系统的盲源分离的Equi-Grondence算法

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A new equi-convergence learning algorithm for Blind Source Separation (BSS) is proposed in this paper. Taking into account the asymmetry of the distributions, the Asymmetric Generalized Gaussian (AGG) model is employed to model source distributions. To avoid directly estimating the source distributions, we update the activation functions adaptively. And also we use the posterior distributions of source signals to estimate the minor property parameter. The learning rule is compatible with minimization of mutual information for training demixing model. Combining the AGG model with this adaptation approach, we propose our method eICA. Finally the simulation examples are given to demonstrate the reliable performance and validity of the proposed method.
机译:本文提出了一种新的Equi-Grentgence学习算法,用于盲源分离(BSS)。考虑到分布的不对称,非对称通用高斯(AGG)模型用于模型源分布。为避免直接估计源分布,我们自适应更新激活功能。并且我们使用源信号的后部分布来估计次要属性参数。学习规则与最小化培训解析模型的相互信息兼容。将AGG模型与这种适应方法相结合,我们提出了我们的方法EICA。最后,给出了模拟示例来证明所提出的方法的可靠性和有效性。

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