Hearables: Artefact removal in Ear-EEG for continuous 24/7 monitoring

Edoardo Occhipinti, H. Davies, Ghena Hammour, Danilo P. Mandic
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引用次数: 5

Abstract

Ear-worn devices offer the opportunity to measure vital signals in a 24/7 fashion, without the need of a clinician. These devices are however prone to motion artefacts, so that entire epochs of artefact-corrupt recordings are routinely discarded. This work aims at reducing the impact of artefacts introduced by a series of common real life daily activities such as talking, chewing, and walking while recording Electroencephalogram (EEG) from the ear canal. The approach used employs multiple external sensors, such as microphones and an accelerometer as means to capture the artefact. The proposed algorithm is a combination of Noise-Assisted Multivariate Empirical Mode Decomposition (NA-MEMD) with Adaptive Noise Cancellation (ANC), where each pair (EEG and motion sensors) of Intrinsic Mode Functions (IMFs) within NA-MEMD is fed independently to multiple Normalised Least Mean Square (NLMS) adaptive filters. The resulting denoised IMFs are then added up again to reconstruct the denoised EEG signal. Results across multiple subjects show that the so denoised EEG signals have reduced power in the frequency range occupied by artefacts. Also, different sensors provide different denoising performance in the tested artefacts, with the microphones being more sensitive to artefacts which cause internal motion within the ear-canal, such as chewing, and the accelerometer being more suitable for artefacts which come from full body movements of the subjects, such as walking.
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可听设备:去除耳内伪影,实现24/7连续监测
耳戴式设备提供了在不需要临床医生的情况下全天候测量生命信号的机会。然而,这些设备容易产生运动伪影,因此,整个时代的伪影损坏的录音通常被丢弃。这项工作旨在通过记录耳道脑电图(EEG)来减少由一系列常见的现实生活日常活动(如说话,咀嚼和行走)引入的人工制品的影响。所使用的方法采用多个外部传感器,如麦克风和加速度计作为捕获人工制品的手段。所提出的算法是噪声辅助多元经验模态分解(NA-MEMD)和自适应噪声消除(ANC)的结合,其中NA-MEMD内的每对(EEG和运动传感器)内禀模态函数(IMFs)被独立地馈送到多个归一化最小均方(NLMS)自适应滤波器。然后将得到的去噪后的imf再次相加以重建去噪后的脑电信号。多受试者的实验结果表明,去噪后的脑电图信号在被伪信号占据的频率范围内功率降低。此外,不同的传感器在测试的伪影中提供了不同的去噪性能,麦克风对引起耳道内部运动的伪影更敏感,比如咀嚼,加速度计更适合于来自受试者全身运动的伪影,比如走路。
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