CNN与CSP相结合的脑电特征提取与识别方法研究

Research on EEG feature extraction and recognition method based on CNN and CSP

  • 摘要: 本文针对脑机接口(BCI)应用中需要对脑电(EEG)信号快速精准的解析问题,提出了一种卷积神经网络(CNN)和共同空间模式(CSP)相结合的脑电特征提取与识别方法。在原始脑电信号经过预处理的基础上,通过CSP空间变换获得其相应的特征矩阵。应用CNN对特征矩阵进行学习,对收敛后的CNN网络全连接层的权值进行分析,根据网络学习特性定义CSP矩阵特征筛选准则,得到降维高效的EEG特征集F,计算特征集F规模构建CNN分类器。我们工作在BCI2005Ⅳa竞赛数据集上进行了实验测试,获得88.3%的识别准确率。本文方法与sCSP和KLCSP方法在相同数据集上进行测试,平均识别准确率分别提升了3.2%和2.4%。本文研究综合了数据的时间、空间的特征信息,采用CNN网络学习特性进行特征二次优选与降维,为脑电的特征提取问题提供了一个新的思路。

     

    Abstract: In order to solve the problem that the brain computer interface (BCI) application need to analysis EEG signal rapidly and precisely , we proposes a method of EEG feature extraction and recognition based on convolutional neural network (CNN) and common spatial model (CSP). On the basis of the preprocessing of the original EEG signal, the corresponding feature matrix is obtained by CSP space transformation. Study on application of CNN feature matrix, the fully connection layer weights analysis on the convergence of the CNN network, according to the characteristics of e-learning definition CSP matrix feature selection criterion, obtained EEG efficient dimensional feature set F, computing feature set scale of F to construct CNN classifier.Experimental tests were carried out in BCI2005 IV a competition data set, obtained 88.3% recognition accuracy, compared to the traditional CSP such as sCSP algorithm and KLCSP method, the average recognition accuracy were improved by 3.2% and 2.4% of the results. In this paper, the method combines the time and space characteristic information, and introduces a new view of the secondary selection of the feature according to the result, which provides a new idea for the feature extraction of EEG.

     

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