Motion Artifact Removal Techniques for Wearable EEG and PPG Sensor Systems

IF 1.9 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in electronics Pub Date : 2021-05-13 DOI:10.3389/felec.2021.685513
D. Seok, Sanghyun Lee, Minjae Kim, Jaeouk Cho, Chul Kim
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引用次数: 42

Abstract

Removal of motion artifacts is a critical challenge, especially in wearable electroencephalography (EEG) and photoplethysmography (PPG) devices that are exposed to daily movements. Recently, the significance of motion artifact removal techniques has increased since EEG-based brain–computer interfaces (BCI) and daily healthcare usage of wearable PPG devices were spotlighted. In this article, the development on EEG and PPG sensor systems is introduced. Then, understanding of motion artifact and its reduction methods implemented by hardware and/or software fashions are reviewed. Various electrode types, analog readout circuits, and signal processing techniques are studied for EEG motion artifact removal. In addition, recent in-ear EEG techniques with motion artifact reduction are also introduced. Furthermore, techniques compensating independent/dependent motion artifacts are presented for PPG.
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可穿戴EEG和PPG传感器系统的运动伪影去除技术
去除运动伪影是一项关键挑战,尤其是在暴露于日常运动的可穿戴脑电图(EEG)和光体积描记术(PPG)设备中。最近,由于基于脑电的脑机接口(BCI)和可穿戴PPG设备的日常医疗使用受到关注,运动伪影去除技术的重要性有所增加。本文介绍了脑电和PPG传感器系统的发展。然后,回顾了对运动伪影的理解及其通过硬件和/或软件方式实现的减少方法。研究了各种电极类型、模拟读出电路和信号处理技术来去除脑电运动伪影。此外,还介绍了近年来减少运动伪影的耳内脑电图技术。此外,针对PPG提出了补偿独立/相关运动伪影的技术。
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