Automated classification of eight different Electroencephalogram (EEG) bands using hybrid of Fast Fourier Transform (FFT) with machine learning methods

Q4 Neuroscience Neuroscience Research Notes Pub Date : 2022-03-05 DOI:10.31117/neuroscirn.v5i1.116
Nur Shahirah Md Nor, Nurul Malim, Nur Aqilah Paskhal Rostam, J. J. Thomas, Mohamad A Effendy, Z. Hassan
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引用次数: 1

Abstract

Analysing and processing the EEG dataset is crucial. Countless actions have been taken to ensure that the researcher in brain studies always achieves informative data and produces notable findings. There are several standard procedures to produce an informative result in analysing the EEG data. However, the techniques used in each standard procedure might be different for the researcher or data analyst because they have their preferences to suit the purpose of their experiments to adapt with the dataset collected. Not only the current manual method is time-consuming, but the main challenges are that researchers need to analyse only a small portion of the brain signals that are the most relevant to be observed through the analysis of several bands such as Very low, Delta, Theta, Alpha-1, Alpha-2, Beta-1, Beta-2, and Gamma. Therefore, one of the best alternatives is to automate the process of classifying the eight bands and extract the most relevant features. Hence, this paper proposed an automated classification method and feature extraction method through hybridising Fast Fourier Transform (FFT) with three different machine learning methods (KNN, SVM, and ANN) that can improve the efficiency of EEG analysis. Based on the result, the FFT + SVM method gives a 100% accuracy and successfully classified the bands into different of eight EEG bands accurately.
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基于快速傅里叶变换(FFT)和机器学习方法的8种不同脑电图(EEG)波段自动分类
分析和处理脑电图数据集至关重要。已经采取了无数行动来确保大脑研究的研究人员始终获得信息丰富的数据并产生显著的发现。在分析EEG数据时,有几种标准程序可以产生信息性结果。然而,对于研究人员或数据分析师来说,每个标准程序中使用的技术可能不同,因为他们有适合实验目的的偏好,以适应收集的数据集。目前的手动方法不仅耗时,而且主要的挑战是,研究人员只需要分析大脑信号中最相关的一小部分,通过分析几个波段,如Very low、Delta、Theta、Alpha-1、Alpha-2、Beta-1、Beta-2和Gamma,就可以观察到这些信号。因此,最好的替代方案之一是自动对八个波段进行分类,并提取最相关的特征。因此,本文提出了一种将快速傅立叶变换(FFT)与三种不同的机器学习方法(KNN、SVM和ANN)相结合的自动分类方法和特征提取方法,以提高脑电图分析的效率。基于结果,FFT+SVM方法给出了100%的准确率,并成功地将频带准确地分类为八个不同的EEG频带。
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来源期刊
Neuroscience Research Notes
Neuroscience Research Notes Neuroscience-Neurology
CiteScore
1.00
自引率
0.00%
发文量
21
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