基于随机演算的脑电信号盲反卷积

A. Abutaleb, A. Fawzy, K. Sayed
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引用次数: 0

摘要

提出了一种新的盲反褶积估计方法,用于估计源信号和未知信道动态。该方法的框架是基于一种多通道盲反褶积技术,该技术已被重新制定为使用随机微积分。卷积过程建模为具有未知系数的有限脉冲响应(FIR)滤波器。假设其中一个FIR滤波器系数是时变的,即使滤波器阶数未知,我们也能够得到源信号的准确估计结果。假设时变滤波系数是一个随机过程。建立了一个带有一些未知参数的随机微分方程(SDE)来描述其随时间的演变。用随机微积分的方法估计了SDE参数。将该方法应用于两个人聊天问题和脑电污染问题。还报告了与现有方法的比较。
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Blind deconvolution of EEG signals using the stochastic calculus
A new tool, in the blind deconvolution, for the estimation of both the source signals and the unknown channel dynamics has been developed. The framework for this methodology is based on a multi-channel blind deconvolution technique that has been reformulated to use Stochastic Calculus. The convolution processes is modeled as Finite Impulse Response (FIR) filters with unknown coefficients. Assuming that one of the FIR filter coefficients is time-varying, we have been able to get accurate estimation results for the source signals, even though the filter order is unknown. The time-varying filter coefficient was assumed to be a stochastic process. A stochastic differential equation (SDE), with some unknown parameters, was developed that described its evolution over time. The SDE parameters have been estimated using methods in stochastic calculus. The method was applied to the problem of two chatting persons and the problem of EEG contaminated by EOG. Comparisons to existing methods are also reported.
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