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Nonlinear Convolutive Blind Source Separation of Non-Stationary Signals

机译:非平稳信号的非线性卷曲盲源分离

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A novel algorithm is proposed in this paper to solve blind source separation of post-nonlinear convolutive mixtures of non-stationary sources. Both convolutive mixing and post-nonlinear distortion are included in the proposed model. Based on the generalized Expectation-Maximization (EM) algorithm, the Maximum Likelihood (ML) approach is developed to estimate the parameters in the model. A set of polynomials is used to estimate the post-nonlinear distortion. In the E-step, the sufficient statistics associated with the source signals are estimated while in the M-step, the parameters are optimized by using these statistics. Generally, the nonlinear distortion renders the statistics intractable and difficult to be formulated in a closed form. However, the use of Extended Kalman Smoother (EKF) around a linearized point facilitates the M-step tractable and can be solved by linear equations.
机译:本文提出了一种新型算法,解决了非平稳源后非线性卷钩混合物的盲源分离。卷曲混合和非线性失真均包括在所提出的模型中。基于广义期望 - 最大化(EM)算法,开发了最大可能性(ML)方法以估计模型中的参数。一组多项式用于估计后非线性失真。在电子步骤中,估计与源信号相关的足够统计数据,而在M步骤中,通过使用这些统计来优化参数。通常,非线性变形使得统计棘手的统计且难以以封闭形式配制。然而,在线化点周围使用扩展的卡尔曼更顺畅(EKF)促进了M-阶段易动并且可以通过线性方程来解决。

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