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Analysis of EEG signals during relaxation and mental stress condition using AR modeling techniques

机译:使用AR建模技术分析放松和精神压力状态下的脑电信号

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Electroencephalography (EEG) is the most important tool to study the brain behavior. This paper presents an integrated system for detecting brain changes during relax and mental stress condition. In most studies, which use quantitative EEG analysis, the properties of measured EEG are computed by applying power spectral density (PSD) estimation for selected representative EEG samples. The sample for which the PSD is calculated is assumed to be stationary. This work deals with a comparative study of the PSD obtained from resting and mental stress condition of EEG signals. The power density spectra were calculated using fast Fourier transform (FFT) by Welch's method, auto regressive (AR) method by Yule-Walker and Burg's method. Finally a neural network classifier used to classify these two conditions. It is found that maximum classification accuracy of 91.17% was obtained for the Burg Method compared to Yule Walker and Welch Method technique.
机译:脑电图(EEG)是研究大脑行为的最重要工具。本文提出了一个用于检测放松和精神压力状况下大脑变化的集成系统。在大多数使用定量脑电图分析的研究中,通过对选定的代表性脑电图样本应用功率谱密度(PSD)估算来计算测得的脑电图的性能。假定为其计算PSD的样本是固定的。这项工作涉及从静息和脑电信号的精神压力条件下获得的PSD的比较研究。功率密度谱是通过Welch方法的快速傅里叶变换(FFT),Yule-Walker方法的自回归(AR)方法和Burg方法计算的。最后,使用神经网络分类器对这两个条件进行分类。结果发现,与Yule Walker和Welch方法相比,Burg方法的最大分类精度为91.17%。

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