Classification of EEG Signal using Independent Component Analysis and Discrete Wavelet Transform based on Linear Discriminant Analysis

Melinda Melinda, Oktiana Maulisa, Nissa Hasna Nabila, Yunidar Yunidar, I Ketut Agung Enriko
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Abstract

Autism Spectrum Disorder (ASD) is a neurodevelopment syndrome decreasing sufferers' social interaction, communication skills, and emotional expression. Autism syndrome can be detected using an electroencephalogram (EEG). This study utilized the EEG of autistic people to support the classification study of machine learning schemes to produce the best accuracy. One of the best approaches to classify the EEG signal is The Linear Discriminant Analysis (LDA), a machine learning technique to classify autism and normal EEG signals. LDA was chosen because it can maximize the distance between classes and minimize the number of scatters by utilizing between and within-class functions. This method was combined with other methods: Independent Components Analysis (ICA) and Discrete Wavelet Transform (DWT), to improve the accuracy system. ICA removes artifacts or signals other than brain signals that can cause noise in the EEG signal, so the analyzed signal was a complete EEG signal without other factors. DWT can help increase noise suppression in the EEG signal and provide signal information through frequency and time representation. The EEG dataset was collated from 16 children (eight autistic and eight normal). The signals from the dataset were filtered by artifacts using ICA, decomposed by three levels through DWT, and classified using the Linear Discriminant Analysis (LDA) technique. Using the Confusion Matrix, the results reveal the best accuracy of 99%.
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基于独立分量分析和基于线性判别分析的离散小波变换的脑电信号分类
自闭症谱系障碍(ASD)是一种神经发育综合症,会降低患者的社会交往、沟通技巧和情感表达能力。自闭症综合征可以通过脑电图(EEG)来检测。本研究利用自闭症患者的脑电图来支持机器学习方案的分类研究,以产生最佳的准确率。线性判别分析(LDA)是脑电信号分类的最佳方法之一,它是一种用于区分自闭症和正常脑电信号的机器学习技术。之所以选择LDA,是因为它可以利用类间函数和类内函数使类间距离最大化,使散射点数量最小化。该方法与独立分量分析(ICA)和离散小波变换(DWT)相结合,提高了系统的精度。ICA消除了脑电信号中除脑信号外可能引起噪声的伪影或信号,因此分析后的信号是一个不含其他因素的完整的脑电信号。小波变换有助于增强脑电信号中的噪声抑制,并通过频率和时间表示提供信号信息。对16名儿童(8名自闭症儿童和8名正常儿童)的脑电图数据进行整理。对数据集中的信号进行ICA伪影滤波,通过DWT进行三层分解,并使用线性判别分析(LDA)技术进行分类。使用混淆矩阵,结果显示准确率达到99%。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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