首页> 外文期刊>Journal of mechanics in medicine and biology >CLASSIFICATION OF EEG SIGNALS IN NORMAL AND DEPRESSION CONDITIONS BY ANN USING RWE AND SIGNAL ENTROPY
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CLASSIFICATION OF EEG SIGNALS IN NORMAL AND DEPRESSION CONDITIONS BY ANN USING RWE AND SIGNAL ENTROPY

机译:使用RWE和信号熵对神经网络在正常和抑郁状态下的脑电信号分类

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摘要

EEG is useful for the analysis of the functional activity of the brain and a detailed assessment of this non-stationary waveform can provide crucial parameters indicative of the mental state of patients. The complex nature of EEG signals calls for automated analysis using various signal processing methods. This paper attempts to classify the EEG signals of normal and depression patients using well-established signal processing techniques involving relative wavelet energy (RWE) and artificial feedForward neural network. High frequency noise present in the recorded signal is removed using total variation filtering (TVF). Classification of the frequency bands of EEG signals into appropriate detail levels and approximation level is carried out using an eight-level multiresolution decomposition method of discrete wavelet transform (DWT). Parseval's theorem is used for calculating the energy at different resolution levels. RWE analysis gives information about the signal energy distribution at different decomposition levels. Both RWE and feedforward Network are used to classify the signals from normal controls and depression patients. The performance of the artificial neural network was evaluated using the classification accuracy and its value of 98.11% indicates a great potential for classifying normal and depression signals.
机译:脑电图可用于分析大脑的功能活动,对该非平稳波形的详细评估可提供指示患者心理状态的关键参数。脑电信号的复杂性要求使用各种信号处理方法进行自动分析。本文尝试使用成熟的涉及相对小波能量(RWE)和人工前馈神经网络的信号处理技术对正常和抑郁症患者的脑电信号进行分类。使用总变化滤波(TVF)可以消除记录在信号中的高频噪声。使用离散小波变换(DWT)的八级多分辨率分解方法,将EEG信号的频带分为适当的细节级别和近似级别。 Parseval定理用于计算不同分辨率级别的能量。 RWE分析提供有关不同分解级别的信号能量分布的信息。 RWE和前馈网络均用于对正常对照和抑郁症患者的信号进行分类。使用分类精度评估了人工神经网络的性能,其98.11%的值表明了对正常和抑郁信号进行分类的巨大潜力。

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