Real-time hybrid ocular artifact detection and removal for single channel EEG

Charvi A. Majmudar, Ruhi Mahajan, B. Morshed
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引用次数: 21

Abstract

Electroencephalography (EEG) is a promising technique to record brain activities in natural settings. However, EEG signals are usually contaminated by Ocular Artifacts (OA) such as eye blink activities. Removal of OA is critical to obtain clean EEG signals required for the feature extraction and classification. With the increasing interest in wearable technologies, single channel EEG systems are becoming more prevalent. Such ambulatory devices require real-time signal processing for immediate feedback. This paper presents a hybrid algorithm to detect and remove OA from single channel EEG signal using NeuroMonitor hardware platform. The algorithm first detects the eye blinks (OA zone) using Algebraic approach, and then removes artifact from OA zone using Discrete Wavelet Transform (DWT) decomposition method. De-noising technique is applied only to the OA zone to keep the critical neural information intact. The OA removal algorithm is applied to the online data for 0.5 sec epoch length. The performance evaluation is carried out qualitatively and quantitatively using time-frequency analysis, mean square coherence and other statistical parameters, i.e. Correlation Coefficient and Mutual Information. Processing time for DWT was significantly lower (x25) to that of SWT. This proposed hybrid OA removal algorithm demonstrates real-time execution with sufficient accuracy.
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单通道EEG的实时混合眼伪影检测与去除
脑电图(EEG)是一种很有前途的记录自然环境下大脑活动的技术。然而,脑电图信号通常会受到眼伪影(Ocular Artifacts, OA)的污染,如眨眼活动。去除OA对于获得特征提取和分类所需的干净脑电信号至关重要。随着人们对可穿戴技术的兴趣日益浓厚,单通道脑电图系统变得越来越普遍。这种移动设备需要实时信号处理以获得即时反馈。本文提出了一种基于NeuroMonitor硬件平台的单通道脑电信号OA检测与去除的混合算法。该算法首先采用代数方法检测眨眼区域,然后采用离散小波变换(DWT)分解方法去除眨眼区域中的伪影。降噪技术仅应用于OA区,以保持关键神经信息的完整。将OA去除算法应用于0.5秒epoch长度的在线数据。利用时频分析、均方相干性和相关系数、互信息等统计参数对系统性能进行定性和定量评价。DWT的处理时间明显低于SWT (x25)。本文提出的混合OA去除算法具有实时性和足够的精度。
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