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HEAR to remove pops and drifts: the high-variance electrode artifact removal (HEAR) algorithm

机译:听取删除弹出和漂移:高方差电极伪影删除(听到)算法

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A high fraction of artifact-free signals is highly desirable in functional neuroimaging and brain-computer interfacing (BCI). We present the high-variance electrode artifact removal (HEAR) algorithm to remove transient electrode pop and drift (PD) artifacts from electroencephalographic (EEG) signals. Transient PD artifacts reflect impedance variations at the electrode scalp interface that are caused by ion concentration changes. HEAR and its online version (oHEAR) are open-source and publicly available. Both outperformed state of the art offline and online transient, high-variance artifact correction algorithms for simulated EEG signals. (o)HEAR attenuated PD artifacts by approx. 25 dB, and at the same time maintained a high SNR during PD artifact-free periods. For real-world EEG data, (o)HEAR reduced the fraction of outlier trials by half and maintained the waveform of a movement related cortical potential during a center-out reaching task. In the case of BCI training, using oHEAR can improve the reliability of the feedback a user receives through reducing a potential negative impact of PD artifacts.
机译:在功能性神经影像和脑 - 计算机接口(BCI)中非常需要高分的无伪影信号。我们介绍了从脑电图(EEG)信号中移除瞬态电极POP和漂移(PD)伪像的高方差电极伪影移除(听到)算法。瞬态PD伪像反映由离子浓度变化引起的电极头皮接口处的阻抗变化。听到及其在线版(Ohhear)是开源和公开的。既优于现有技术的直线和在线瞬态,高方差伪像校正算法,用于模拟EEG信号。 (o)听到衰减的PD伪像约。 25 dB,同时在PD伪影期间保持高SNR。对于真实世界的EEG数据,(O)听到将异常试验的一半减少一半,并在中央达到任务期间维持运动相关皮质电位的波形。在BCI训练的情况下,使用OHEAR可以通过降低PD伪像的潜在负面影响来提高用户接收的反馈的可靠性。

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