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An adaptive noise canceller based on QLMS algorithm for removing EOG artifacts in EEG recordings

机译:基于QLMS算法的自适应噪声消除器,用于消除EEG录音中的EOG伪影

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摘要

In this paper, a novel adaptive noise canceller (ANC) based on the quaternion valued least mean square algorithm (QLMS) is designed in order to remove electrooculography (EOG) artifacts from electroencephalography (EEG) recordings. The measurement real-valued EOG and EEG signals (FP1, FP2, AF3 and AF4) are first modeled as four-dimensional processes in the quaternion domain. The EOG artifacts are then removed from the EEG signals in the quaternion domain by using the ANC based on QLMS algorithm. The quaternion representation of these signals allows us to remove EOG artifacts from all channels at the same time instead of removing the EOG artifacts in each EEG recordings separately. The simulation results support the proposed approach.
机译:本文设计了一种基于四元数值最小均方算法(QLMS)的新型自适应噪声消除器(ANC),以从脑电图(EEG)记录中删除眼电图(EOG)伪像。首先将测量实值EOG和EEG信号(FP1,FP2,AF3和AF4)建模为四元数域中的四维过程。然后使用基于QLMS算法的ANC从四元数域的EEG信号中去除EOG伪影。这些信号的四元数表示使我们可以同时从所有通道中删除EOG伪像,而不是分别删除每个EEG记录中的EOG伪像。仿真结果支持了该方法。

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