基于脑电图的学生注意力水平监测装置的微控制器人工神经网络实现

D. Lestari, Pradareza S.T. Muhammad, I. A. Zaini
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引用次数: 1

摘要

学生在学习过程中需要有集中注意力的能力。此外,当每个员工想做各种工作时,他们所需要的集中程度。监测和评估一个人的注意力状况并不容易,其中一项指标是通过脑电图(EEG)信息信号获得的。这项研究的目的是检测一个人在做活动时是否集中注意力。本研究使用的方法是反向传播型神经网络。人工神经网络的输入是Theta、Low Beta和High Beta类型的脑电波。识别系统输出有两类,即全浓度类和低浓度类。然后将训练得到的ANN模型实现到Arduino微控制器中,使其可以作为便携式设备使用。因此,所得到的分类结果与输出是吻合的。
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Implementation Artificial Neural Network on Microcontroller for Student Attention Level Monitoring Device Using EEG
The ability to concentrate is needed by students in the learning process. Also, the level of concentration required by each employee when they want to do various kinds of work. Monitoring and evaluating a person’s concentration conditions is not easy, one of which is obtained from the information signal Electroencephalography (EEG). This study aims to detect the condition of whether someone is concentrating when doing activities or not. The method used in this study is for Backpropagation Type Neural Networks. Inputs from Artificial Neural Networks are EEG waves with Theta, Low Beta, and High Beta types. The identification system outputs are two classes, namely the full concentration class and the low concentration class. The ANN model obtained through training is then implemented into the Arduino Microcontroller so that it can be used as portable device. So, the classification results obtained are suitable with the output.
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