基于量子启发自适应阈值的DTCWT单通道脑电信号眼源性去除

N. S. Malan, Shiru Sharma
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引用次数: 4

摘要

在获取脑电信号记录脑活动的同时,我们经常接收到其他肌肉活动的信号,这些信号与脑活动信号叠加在一起,形成了一个被污染的脑电信号。眨眼和眼球运动等肌肉活动被称为眼伪影(OAs),它们对脑电图信号有很大的影响。在脑机接口(BCI)系统中,去除oa对于将大脑思想正确地转换为命令以控制外部设备非常重要。独立分量分析(ICA)和主分量分析(PCA)等技术被广泛用于消除oa,但这些技术需要对多通道脑电信号进行处理。本文提出了利用双树复小波变换与量子启发自适应小波阈值算法对单通道脑电信号进行oa消除的方法。我们估计了相对均方根误差(RRMSE)。结果表明,采用量子启发自适应阈值的DTCWT方法对人眼伪影的去除效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Removal of Ocular Atrifacts from Single Channel EEG Signal Using DTCWT with Quantum Inspired Adaptive Threshold
While acquiring EEG signal for recording brain activities, we often receive signals from other muscle activities which are added with the brain activity signal thus resulting in a contaminated EEG signal. Muscle activities such as eyeblink (EB) and eye ball movement are referred as Ocular Artifacts (OAs) which highly affect EEG signals. In Brain Computer Interface (BCI) systems, removal of OAs is important for correctly converting the brain thoughts into commands in order to control the external device. Various techniques like Independent component Analysis (ICA), and Principle Component Analysis (PCA) are widely used for the elimination of OAs but these techniques require multi channel EEG signals for processing. In this paper we have proposed the use of dual tree complex wavelet transform (DTCWT) with quantum inspired adaptive wavelet threshold algorithm for the elimination of OAs from single channel EEG signal. We have estimated Relative Root Mean Square Error (RRMSE). Results show better performance in reduction of ocular artifacts when using DTCWT with quantum inspired adaptive threshold.
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