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Wavelet-Based Feature Extraction for the Analysis of EEG Signals Associated with Imagined Fists and Feet Movements

机译:基于小波的特征提取,用于与想象中的拳头和脚部运动相关的脑电信号分析

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Electroencephalography (EEG) signals were analyzed in many research applications as a channel of communication between humans and computers. EEG signals associated with imagined fists and feet movements were filtered and processed using wavelet transform analysis for feature extraction. The proposed work used Neural Networks (NNs) as a classifier that enables the classification of imagined movements into either fists or feet. Wavelet families such as Daubechies, Symlets, and Coiflets wavelets were used to analyze the extracted events and then different feature extraction measures were calculated for three detail levels of the wavelet coefficients. Intensive NN training and testing experiments were carried out and different network configurations were compared. The optimum classification performance of 89.11% was achieved with a NN classifier of 20 hidden layers while using the Mean Absolute Value (MAV) of the Coiflets wavelet coefficients as inputs to NN. The proposed system showed a good performance that enables controlling computer applications via imagined fists and feet movements.
机译:脑电图(EEG)信号在许多研究应用中被分析为人与计算机之间的通信通道。使用小波变换分析对与想象中的拳脚运动有关的脑电信号进行滤波和处理,以提取特征。拟议的工作使用神经网络(NN)作为分类器,可以将想象中的运动分类为拳头或脚。使用小波族(例如Daubechies,Symlets和Coiflets小波)分析提取的事件,然后针对小波系数的三个细节级别计算不同的特征提取度量。进行了密集的NN训练和测试实验,并比较了不同的网络配置。使用20个隐藏层的NN分类器,同时使用Coiflets小波系数的平均绝对值(MAV)作为NN的输入,可以实现89.11%的最佳分类性能。拟议的系统表现出良好的性能,可以通过想象中的拳头和脚部运动来控制计算机应用程序。

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