Shaban Saad Abdulazeez, Ucan Osman Nuri, Duru Adil Deniz
Computer Science Department, College of Education for Pure Sciences, Diyala University, Diyala 32001, Iraq.
Electrical and Computer Engineering, School of Engineering and Natural Sciences, Altınbaş University, Istanbul 34217, Turkey.
Appl Bionics Biomech. 2021 Feb 8;2021:6662074. doi: 10.1155/2021/6662074. eCollection 2021.
The electroencephalography (EEG) signals have been used widely for studying the brain neural information dynamics and behaviors along with the developing impact of using the machine and deep learning techniques. This work proposes a system based on the fast Fourier transform (FFT) as a feature extraction method for the classification of human brain resting-state electroencephalography (EEG) recorded signals. In the proposed system, the FFT method is applied on the resting-state EEG recordings and the corresponding band powers were calculated. The extracted relative power features are supplied to the classification methods (classifiers) as an input for the classification purpose as a measure of human tiredness through predicting lactate enzyme level, high or low. To validate the suggested method, we used an EEG dataset which has been recorded from a group of elite-level athletes consisting of two classes: not tired, the EEG signals were recorded during the resting-state task before performing acute exercise and tired, the EEG signals were recorded in the resting-state after performing an acute exercise. The performance of three different classifiers was evaluated with two performance measures, accuracy and precision values. The accuracy was achieved above 98% by the K-nearest neighbor (KNN) classifier. The findings of this study indicated that the feature extraction scheme has the ability to classify the analyzed EEG signals accurately and predict the level of lactate enzyme high or low. Many studying fields, like the Internet of Things (IoT) and the brain computer interface (BCI), can utilize the findings of the proposed system in many crucial decision-making applications.
随着机器学习和深度学习技术的不断发展,脑电图(EEG)信号已被广泛用于研究大脑神经信息动态和行为。这项工作提出了一种基于快速傅里叶变换(FFT)的系统,作为一种特征提取方法,用于对人类大脑静息状态脑电图(EEG)记录信号进行分类。在所提出的系统中,FFT方法应用于静息状态EEG记录,并计算相应的频段功率。提取的相对功率特征作为人类疲劳程度的一种度量,通过预测乳酸酶水平的高低,被提供给分类方法(分类器)作为分类目的的输入。为了验证所提出的方法,我们使用了一个EEG数据集,该数据集记录自一组精英运动员,分为两类:不累,EEG信号在进行急性运动前的静息状态任务期间记录;累,EEG信号在进行急性运动后的静息状态下记录。使用准确率和精确率两个性能指标评估了三种不同分类器的性能。K近邻(KNN)分类器的准确率达到了98%以上。本研究结果表明,该特征提取方案能够准确地对分析的EEG信号进行分类,并预测乳酸酶水平的高低。许多研究领域,如物联网(IoT)和脑机接口(BCI),可以在许多关键决策应用中利用所提出系统的研究结果。