Brain EEG signal processing for controlling a robotic arm

H. Shedeed, M. F. Issa, S. El-Sayed
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引用次数: 52

Abstract

Researchers recently proposed new scientific methods for restoring function to those with motor impairments. one of these methods is to provide the brain with a new non-muscular communication and control channel, a direct Brain-Machine Interface (BMI). This paper presents a Brain Machine Interface (BMI) system based on using the brain electroencephalography (EEG) signals associated with 3 arm movements (close, open arm and close hand) for controlling a robotic arm. Signals recorded from one subject using Emotive Epoc device. Four channels only were used, in our experiment, AF3, which located at the prefrontal cortex and F7, F3, FC5 which located at the supplementary motor cortex of the brain. Three different techniques were used for features extraction which are: Wavelet Transform (WT), Fast Fourier Transform (FFT) and Principal Component Analysis (PCA). Multi-layer Perceptron Neural Network trained by a standard back propagation algorithm was used for classifying the three considered tasks. Classification rates of 91.1%, 86.7% and 85.6% were achieved with the three used features extraction techniques respectively. Experimental results show that the proposed system achieved high classification rates than other systems in the same application.
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机械臂控制的脑电信号处理
研究人员最近提出了新的科学方法来恢复运动障碍患者的功能。其中一种方法是为大脑提供一种新的非肌肉通信和控制通道,即直接脑机接口(BMI)。提出了一种基于脑脑电信号(EEG)控制机械臂的脑机接口(BMI)系统。用情绪记录仪记录一个实验对象的信号。我们的实验只使用了四个通道,分别是位于前额皮质的AF3通道和位于大脑辅助运动皮质的F7、F3、FC5通道。三种不同的特征提取技术分别是:小波变换(WT)、快速傅立叶变换(FFT)和主成分分析(PCA)。使用标准反向传播算法训练的多层感知器神经网络对三个考虑的任务进行分类。三种特征提取方法的分类率分别为91.1%、86.7%和85.6%。实验结果表明,在相同的应用中,该系统取得了较高的分类率。
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