基于多层感知器神经网络的感觉运动节律分类

Roxana Toderean
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引用次数: 0

摘要

感觉运动节奏由8-12Hz频带的mu节奏和12-30Hz频带的beta节奏表示。运动或准备运动通常伴随着mu和beta节奏的减少,特别是在运动的对侧区域,这是实现脑机接口的一个非常重要的知识。脑电图信号是通过放置在头皮运动区域的8个活动电极来记录的。利用基于多分辨率小波分析的Daubechies小波,将原始信号分解成兴趣频段内的子分量信号进行特征提取。利用多层感知器神经网络(MLP-NN)方法对特征进行分类。该分类器表现良好,95.45%为研究对象的最大分类率。通过弗里德曼双向方差分析(ANOVA)的秩次检验,MLP-NN分类器的优越性也得到了证实。
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 Sensorimotor Rhythms Based on Multi-layer Perceptron Neural Networks
Sensorimotor rhythms are represented by mu rhythm with 8-12Hz frequency band and beta rhythm with the 12-30Hz frequency range. The movement or preparation of the movement is typically accompanied by a decrease of the mu and beta rhythms, especially in the contralateral area of the movement, which is a piece of very important knowledge for the implementation of a brain computer interface. The EEG signal was recorded using 8 active electrodes placed in the motor areas of the scalp. Features extraction was performed by decomposing the original signal in subcomponents signal with the frequency band in the interest range using multiresolution wavelet analysis based Daubechies wavelets. Multi-layer perceptron neural networks (MLP-NN) method is utilized for the classification of the features. This classifier performs well, 95.45% was the maximum classification rate for the subjects involved in the study. The superiority of the classifier MLP-NN was sustained also by The Friedman Two-way Analysis of Variance (ANOVA) by Ranks Test.
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