Signal Separation of Nonlinear Time-Delayed Mixture: Time Domain Approach

W. L. Woo, S. Dlay, John Hudson
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引用次数: 0

Abstract

— In this paper, a novel algorithm is proposed to solve blind signal separation of nonlinear time-delayed mixtures of statistically independent sources. Both mixing and nonlinear distortion are included in the proposed model. Maximum Likelihood (ML) approach is developed to estimate the parameters in the model and this is formulated within the framework of the generalized Expectation-Maximization (EM) algorithm. Adaptive polynomial basis expansion is used to estimate the nonlinearity of the mixing model. 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, in this paper it is proved that with the use of Extended Kalman Smoother (EKS) around a linearized point, the M-step is made tractable and can be solved by linear equations.
非线性时滞混合信号分离:时域方法
本文提出了一种新的算法来解决统计独立的非线性时滞混合信号的盲分离问题。该模型同时考虑了混频和非线性失真。在广义期望最大化(EM)算法的框架内,提出了最大似然(ML)方法来估计模型中的参数。采用自适应多项式基展开估计混合模型的非线性。在e步中,估计与源信号相关的充分统计量,在m步中,利用这些统计量对参数进行优化。通常,非线性失真使得统计数据难以用封闭形式表述。然而,本文证明了在线性化点周围使用扩展卡尔曼平滑(EKS),使得m步变得易于处理,可以用线性方程求解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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