Detection and Separation of Eeg Artifacts Using Wavelet Transform

R. S. Kumar, P. Manimegalai
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Abstract

Bio-medical signal processing is one of the most important techniques of multichannel sensor network and it has a substantial concentration in medical application. However, the real-time and recorded signals in multisensory instruments contains different and huge amount of noise, and great work has been completed in developing most favorable structures for estimating the signal source from the noisy signal in multichannel observations. Methods have been developed to obtain the optimal linear estimation of the output signal through the Wide-Sense-Stationary (WSS) process with the help of time-invariant filters. In this process, the input signal and the noise signal are assumed to achieve the linear output signal. During the process, the non-stationary signals arise in the bio-medical signal processing in addition to it there is no effective structure to deal with them. Wavelets transform has been proved to be the efficient tool for handling the non-stationary signals, but wavelet provide any possible way to approach multichannel signal processing. Based on the basic structure of linear estimation of non-stationary multichannel data and statistical models of spatial signal coherence acquire through the wavelet transform in multichannel estimation. The above methods can be used for Electroencephalography (EEG) signal denoising through the original signal and then implement the noise reduction technique to evaluate their performance such as SNR, MSE and computation time.
基于小波变换的脑电信号伪影检测与分离
生物医学信号处理是多通道传感器网络中最重要的技术之一,在医学领域有着广泛的应用。然而,多感官仪器的实时和记录信号中含有不同的、巨大的噪声,在多通道观测中从噪声信号中估计信号源的最有利结构已经完成了大量的工作。本文提出了一种基于时不变滤波器的宽感知平稳(WSS)过程对输出信号进行最优线性估计的方法。在这个过程中,假设输入信号和噪声信号达到线性输出信号。在生物医学信号处理过程中会出现非平稳信号,并且没有有效的结构来处理它们。小波变换已被证明是处理非平稳信号的有效工具,但小波变换为处理多通道信号提供了任何可能的方法。基于非平稳多通道数据线性估计的基本结构和空间信号相干性的统计模型,通过小波变换在多通道估计中获取。上述方法均可通过对原始信号进行脑电图信号去噪,然后实施降噪技术,对其信噪比、均方差、计算时间等性能进行评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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