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Blind source separation of EEG data using matched filters

机译:使用匹配过滤器盲目分离脑电数据

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In this paper a new method for blind source separation of electroencephalographic (EEG) signals is proposed. In contrast to most blind source separation algorithms, our method does not employ higher order statistics. It is shown that in case of EEG signals matched filters can successfully be applied to achieve an excellent signal separation. The proposed algorithm is verified on simulated as well as on real EEG data. Due to the strong prior on the sources introduced by the matched filters, at first glance the application of our algorithm appears to be restricted to EEG data. However, by using different matched filters our method is extendible to any kind of non-white signal. Since the computations are based on second order statistics and the matched filters can be arranged in a parallel structure our algorithm is extremely fast and therefore suitable for on-line applications.
机译:本文提出了一种新的脑电图(EEG)信号盲源分离方法。与大多数盲源分离算法相比,我们的方法不使用高阶统计量。结果表明,在EEG信号的情况下,可以成功应用匹配滤波器以实现出色的信号分离。所提出的算法在仿真的和实际的EEG数据上都得到了验证。由于匹配滤波器引入的源具有很强的先验性,乍看之下,我们算法的应用似乎仅限于EEG数据。但是,通过使用不同的匹配滤波器,我们的方法可扩展到任何类型的非白信号。由于计算基于二阶统计量,并且匹配的滤波器可以并行结构排列,因此我们的算法非常快,因此适合在线应用。

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