EMG Artifacts Removal from Multi-Channel EEG Signals using Multi-Channel Singular Spectrum Analysis

Muhammad Zubair
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引用次数: 1

Abstract

The Electroencephalogram (EEG) is the brain signals which are most normally debased by Electromyogram (EMG) antiquities. The presence of these EMG antiquities covers the necessary information in an EEG signal. In this paper, we have proposed another strategy named as Multi-channel Singular Spectrum Analysis (MSSA) in light of Singular Value Decomposition (SVD) to expel muscle or EMG antiquities from multi-channel EEG signals. At first, the orthogonal eigenvectors of multi-channel data are estimated by performing SVD which are acquired from the covariance matrix. Since the frequency variations of eigenvectors related to EEG signal are quite low when compared to the EMG signal, so we fix some peak frequency threshold to find out the frequencies related to EEG signal, then the frequencies related to EMG signals are suppressed and the artifact free Multi-channel EEG signal is extracted. Finally, our proposed technique is applied on a noisy sinusoidal signals to test the performance of the proposed method and then it is applied on synthetic EEG signals mixed with the EMG artifacts. Simulation results are then compared with Canonical Correlation Analysis (CCA) to show that the proposed method eliminates EMG antiquities more adequately without amending the required data.
利用多通道奇异谱分析从多通道脑电信号中去除肌电信号伪影
脑电图(EEG)是最常被肌电图(EMG)还原的脑信号。这些EMG遗迹的存在覆盖了脑电图信号中必要的信息。本文提出了一种基于奇异值分解(SVD)的多通道奇异谱分析(MSSA)策略,用于从多通道脑电信号中剔除肌肉或肌电信号。首先利用协方差矩阵进行奇异值分解,估计多通道数据的正交特征向量;由于与肌电信号相比,与脑电信号相关的特征向量的频率变化很小,因此我们设定一定的峰值频率阈值来找出与脑电信号相关的频率,然后对与肌电信号相关的频率进行抑制,提取出无伪影的多通道脑电信号。最后,将该方法应用于含噪正弦信号测试其性能,然后将该方法应用于混合了肌电信号伪影的合成脑电信号。将仿真结果与典型相关分析(CCA)进行了比较,结果表明该方法在不修改所需数据的情况下更充分地消除了肌电古特征。
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