Design Method of Morphological Structural Function for Pattern Recognition of EEG Signals During Motor Imagery and Cognition

Tomonari Yamaguchi, M. Fujio, K. Inoue, G. Pfurtscheller
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引用次数: 2

Abstract

Electroencephalograph (EEG) recordings during right and left hand motor imagery can be used to move a cursor to a target on a computer screen (such system is called BCI). Recently, we have proposed the detection method of Error Potential in order to add the fail safe function to BCI system. In this paper, feature extraction method based on morphological multi-resolution analysis is introduced to extract features concerned with motor imagery and cognition simultaneously from the EEG signals. Morphological filter is composed of nonlinear operation between signal and structural function and this multi-resolution analysis can be constructed by repeating this filtering to signal while changing structural function. This method is a kind of discrete wavelet analysis with non-linear characteristics and is effective to extract specific shapes. The structural function which decides the filter characteristic is designed to obtain optimal separation based on mutual information algorithm or spectrum dividing algorithm.
运动想象与认知过程中脑电信号模式识别的形态结构函数设计方法
在右手和左手运动图像期间的脑电图(EEG)记录可用于将光标移动到计算机屏幕上的目标(这种系统称为BCI)。最近,我们提出了错误电位的检测方法,以便在BCI系统中加入故障安全功能。提出了一种基于形态学多分辨率分析的特征提取方法,从脑电信号中同时提取与运动图像和认知相关的特征。形态滤波是由信号与结构函数之间的非线性运算构成的,在改变结构函数的同时对信号进行重复滤波,可以构建多分辨率分析。该方法是一种具有非线性特征的离散小波分析方法,可以有效地提取特定形状。设计了决定滤波器特性的结构函数,以实现基于互信息算法或分谱算法的最佳分离。
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