基于脑电图信号的人集中精神状态分类

Mehran Safari Dehnavi, V. Dehnavi, M. Shafiee
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引用次数: 1

摘要

本文提出了一种合适的脑电信号分类方法。本文从脑电图信号中提取了许多特征,并利用这些不同的特征和网络,将这些信号分为松弛、中度集中和高度集中三类。在这种情况下,根据对脑电图信号有直接影响的心理活动的数量,可以对注意力状态进行分类。本文采用4个传感器(电极)采集脑电信号的电压,然后利用大拉普拉斯滤波器对信号进行局部定位,将4个传感器的信号转换成1个信号,然后用陷波无源滤波器去除50 Hz (City frequency)的频率,再用小波滤波器去除噪声和伪像。在本文中,精神状态的诊断在时间域进行了研究。然后,在测量信号上确定一个窗口,在这个窗口中提取各种特征,并利用这些特征和机器学习方法对不同的心理状态进行分类。最后,在数据集上对所采用的方法进行了测试,并对方法的结果进行了检验。该方法的优点之一是基于PCA特征约简方法减少了网络输入的数量,从而减少了网络体积,这在神经网络中尤为重要。在本文中,我们试图通过使用各种特征来提高分类的准确性。最后,我们使用对折交叉验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of mental states of human concentration based on EEG signal
This paper provides a suitable method for classifying the EEG signal. In this article, a number of features are extracted from the EEG signal and by using these different features and networks, these signals are classified into three categories: relaxation, moderate concentration and high concentration. In this case, based on the amount of mental activity that has a direct effect on the EEG signal, the state of attention can be categorized. In this paper, four sensors (electrodes) are used to collect the voltage of the brain signals, then the Large Laplacian Filter is used to localize the signals, and by this method, the signals of the four sensors are converted into one signal, then the frequency of 50 Hz (City frequency) is removed using a Notch passive filter and then a wavelet filter is used to remove noise and artifacts. In this article, the diagnosis of mental states in the time domain is examined. Then, a window is determined on the measured signal and in these windows, various features are extracted and by using these features and machine learning methods, different mental states are categorized. Finally, the method used is tested on the data set and the results of the method is checked. One of the advantages of the proposed method is to reduce the number of network inputs based on PCA feature reduction method, which leads to a reduction in network volume, which is especially important in neural networks. In this article, we have tried to increase the accuracy of classification by using various features. Finally, we use to-fold cross validation.
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