基于混合Glct -Ica技术的脑电信号伪影去除与噪声抑制

K. Jindal, R. Upadhyay, Hari Shankar Singh
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引用次数: 4

摘要

脑电图信号经常受到非大脑来源的污染,如肌肉伪影、眼球运动和仪器噪声,因此会发生大脑信息丢失,信号的解释变得具有挑战性。提出了一种新的脑电图信号记录噪声抑制和伪影去除技术。该混合技术是基于快速功率独立分量分析和一般线性小波变换的联合应用。在本工作中,采用快速功率ICA技术分离脑电活动污染的盲源。在此基础上,利用GLCT变换技术对伪独立分量进行了识别和校正。采用定性评价的方法对模拟脑电图信号的有效性进行了评价。结果表明,所提出的伪影和噪声抑制技术能够识别脑电图活动中存在的非脑源伪影。此外,它有效地从记录的脑电图活动中去除这些来源,使信号无污染。
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Eeg Artifact Removal and Noise Suppression Using Hybrid Glct -Ica Technique
Electroencephalogram signals are often contaminated by non-cerebral sources like muscle artifacts, eye movement and instrumentation noise due to which cerebral information loss occurs and interpretation of signals become challenging. This paper presents a novel noise suppression and artifact removal technique for Electroencephalogram signal records. The proposed hybrid technique is based on joint usage of Fast-Power ICA and General Linear Chirplet Transform. In present work, to separate blind sources of contaminated Electroencephalogram activity Fast-Power ICA technique is employed. Further, Artifactual Independent Components are identified and corrected by GLCT transformation technique. The efficacy of proposed work is estimated on simulated Electroencephalogram signals by qualitative evaluation. The results demonstrate that proposed artifact and noise suppression technique is capable of identifying non-cerebral sources of artifact present in Electroencephalogram activity. Also, it effectively removes such sources from recorded Electroencephalogram activity and makes signals contamination free.
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