Research on the Key Technologies of Motor Imagery EEG Signal Based on Deep Learning

Zhuozheng Wang, Zhuo Ma, Du Xiuwen, Yingjie Dong, Wei Liu
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引用次数: 6

Abstract

Brain-computer interface (BCI) is an emerging area of research that establishes a connection between the brain and external devices in a completely new way. It provides a new idea about the rehabilitation of brain diseases, human-computer interaction and augmented reality. One of the main problems of implementing BCI is to recognize and classify the motor imagery Electroencephalography(EEG) signals effectively. This paper takes the motor imagery feature data of EEG as the research object to conduct the research of multi-classification method. In this study, we use the Emotiv helmet with 16 biomedical sensors to obtain EEG signal, adopt the fast independent component analysis and the fast Fourier transform to realize signal preprocessing and select the common spatial pattern algorithm to extract the features of the motor imagery EEG signal. In order to improve the accuracy of recognition of EEG signal, a new deep learning network is designed for multi-channel self-acquired EEG data set which is named as min-VGG-LSTMnet in this paper. The network combines Long Short-Term Memory Network with convolutional neural network VGG and achieves the four-class task of the left-hand, right-hand, left-foot and right-foot lifting movements based on motor imagery. The results show that the accuracy of the proposed classification method is at least 8.18% higher than other mainstream deep learning methods.
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基于深度学习的运动图像脑电信号关键技术研究
脑机接口(BCI)是一个新兴的研究领域,它以一种全新的方式建立了大脑和外部设备之间的连接。它为脑疾病的康复、人机交互和增强现实提供了新的思路。实现脑机接口的主要问题之一是有效地识别和分类运动图像脑电图信号。本文以脑电运动图像特征数据为研究对象,进行多分类方法的研究。在本研究中,我们使用带有16个生物医学传感器的Emotiv头盔获取脑电信号,采用快速独立分量分析和快速傅立叶变换实现信号预处理,并选择通用的空间模式算法提取运动图像脑电信号的特征。为了提高脑电信号识别的准确性,本文针对多通道自采集脑电信号集设计了一种新的深度学习网络,命名为min-VGG-LSTMnet。该网络将长短期记忆网络与卷积神经网络VGG相结合,实现了基于运动意象的左、右、左、右脚举动作四类任务。结果表明,所提分类方法的准确率比其他主流深度学习方法至少提高8.18%。
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0.40
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发文量
25
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