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EEG different frequency sound response identification using neural network and fuzzy techniques

机译:基于神经网络和模糊技术的脑电异频声响应识别

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摘要

Electroencephalographic (EEG) technology has enabled effective measurement of human brain activity, as functional and physiological changes within the brain may be registered by EEG signals. In this paper, electrical activity of human brain due to sound waves of different frequency, i.e. 40 Hz, 500 Hz, 5000 Hz and 15000 Hz, is studied based on EEG signals. Several signal processing techniques, i.e. Principle Component algorithm, Discrete Wavelet Transform and Fast Fourier Transform, are applied onto the raw EEG signal to extract useful information and specific characteristics from the EEG signals. This research has shown that the characteristics of EEG signals differ with respect to different frequency of sound waves, and hence the EEG signal can be identified with suitable characterization algorithm using artificial intelligent techniques, such as Artificial neural network, fuzzy logic and adaptive neuro-fuzzy system.
机译:脑电图(EEG)技术已使人脑活动的有效测量成为可能,因为脑内的功能和生理变化可能会通过EEG信号进行记录。在本文中,基于脑电信号研究了由于不同频率的声波引起的人脑电活动,即40 Hz,500 Hz,5000 Hz和15000 Hz。将几种信号处理技术,即主成分算法,离散小波变换和快速傅立叶变换,应用于原始EEG信号,以从EEG信号中提取有用的信息和特定特征。研究表明,脑电信号的特征随声波频率的不同而不同,因此可以使用人工智能技术,如人工神经网络,模糊逻辑和自适应神经模糊,通过合适的表征算法识别脑电信号。系统。

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