Deep Learning on EEG Study Concentration in Pendemic

Garnis Ajeng Pamiela, Ahmad Azhari
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引用次数: 2

Abstract

Brainwaves are one of the biometric properties that can be used to identify individuals based on their physical and behavioural characteristics. An electroencephalogram (EEG) can be used to measure and capture brain wave activity. The activities required are in the form of giving complex tasks to get thinking and concentration processes called Cognitive Tests, in the form of a Culture Fair Intelligence Test (CFIT) stimulus and Competency Test (UK). This study aims to obtain a pattern of the relationship between concentration and learning outcomes for late adolescent students during the pandemic. The object of research involved in this research is the 10th grade students of TKJ SMK. Data acquisition was carried out twice on the Beta signal by doing cognitive test questions which were done twice at school and at home. Then the data obtained from the test results will be extracted using Fast Fourier Transform (FFT). Furthermore, after the data extraction results are obtained, the classification process will be carried out using the CNN algorithm. The results of the FFT obtained the average value of the signal peak. The results of the CNN classification show that the pandemic does not affect student concentration. The average signal concentration in schools when testing using CFIT is 0.2445 and at the time of testing using UK Mathematics is 0.1330 with an average CFIT score of 77.05 and for UK average is 53.33 with an accuracy value of 83.33 %. While the average signal concentration at home when testing using CFIT is 0.2252 and at the time of testing using UK Mathematics is 0.1301 with an average CFIT score of 77.13 and for UK average is 57.50 with an accuracy value of 83, 33%.
深度学习在流行病脑电集中研究中的应用
脑电波是一种生物特征,可以根据个人的身体和行为特征来识别他们。脑电图(EEG)可以用来测量和捕捉脑电波活动。所需活动的形式是提供复杂的任务来获得思维和集中过程,称为认知测试,形式是文化公平智力测试(CFIT)刺激和能力测试(英国)。本研究旨在获得大流行期间青少年晚期学生注意力与学习成果之间关系的模式。本研究涉及的研究对象是TKJ SMK的10年级学生。通过在学校和家中分别做两次认知测试,对Beta信号进行两次数据采集。然后使用快速傅里叶变换(FFT)提取从测试结果中获得的数据。进一步,在获得数据提取结果后,使用CNN算法进行分类过程。FFT的结果得到了信号峰值的平均值。CNN的分类结果显示,疫情并未影响学生的集中程度。使用CFIT测试时,学校的平均信号浓度为0.2445,使用UK Mathematics测试时的平均信号浓度为0.1330,平均CFIT分数为77.05,英国平均为53.33,准确率值为83.33%。而使用CFIT测试时,家中的平均信号浓度为0.2252,使用UK Mathematics测试时的平均信号浓度为0.1301,平均CFIT得分为77.13,英国平均为57.50,准确率为83,33%。
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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