Huan Nai-Jen, Palaniappan Ramaswamy
Faculty of Information Science and Technology, Multimedia University, Melaka, Malaysia.
J Neural Eng. 2004 Sep;1(3):142-50. doi: 10.1088/1741-2560/1/3/003. Epub 2004 Aug 31.
In this paper, we have designed a two-state brain-computer interface (BCI) using neural network (NN) classification of autoregressive (AR) features from electroencephalogram (EEG) signals extracted during mental tasks. The main purpose of the study is to use Keirn and Aunon's data to investigate the performance of different mental task combinations and different AR features for BCI design for individual subjects. In the experimental study, EEG signals from five mental tasks were recorded from four subjects. Different combinations of two mental tasks were studied for each subject. Six different feature extraction methods were used to extract the features from the EEG signals: AR coefficients computed with Burg's algorithm, AR coefficients computed with a least-squares (LS) algorithm and adaptive autoregressive (AAR) coefficients computed with a least-mean-square (LMS) algorithm. All the methods used order six applied to 125 data points and these three methods were repeated with the same data but with segmentation into five segments in increments of 25 data points. The multilayer perceptron NN trained by the back-propagation algorithm (MLP-BP) and linear discriminant analysis (LDA) were used to classify the computed features into different categories that represent the mental tasks. We compared the classification performances among the six different feature extraction methods. The results showed that sixth-order AR coefficients with the LS algorithm without segmentation gave the best performance (93.10%) using MLP-BP and (97.00%) using LDA. The results also showed that the segmentation and AAR methods are not suitable for this set of EEG signals. We conclude that, for different subjects, the best mental task combinations are different and proper selection of mental tasks and feature extraction methods are essential for the BCI design.
在本文中,我们设计了一种双态脑机接口(BCI),它利用神经网络(NN)对在心理任务期间提取的脑电图(EEG)信号的自回归(AR)特征进行分类。本研究的主要目的是使用基尔恩(Keirn)和奥农(Aunon)的数据,来研究不同心理任务组合以及不同AR特征在个体受试者BCI设计中的性能。在实验研究中,记录了四名受试者在五项心理任务中的EEG信号。针对每个受试者研究了两项心理任务的不同组合。使用六种不同的特征提取方法从EEG信号中提取特征:用伯格(Burg)算法计算的AR系数、用最小二乘法(LS)算法计算的AR系数以及用最小均方(LMS)算法计算的自适应自回归(AAR)系数。所有方法均采用六阶,应用于125个数据点,并且对相同数据重复这三种方法,但将其分割为五个段,每次增加25个数据点。使用通过反向传播算法训练的多层感知器神经网络(MLP - BP)和线性判别分析(LDA)将计算出的特征分类为代表心理任务的不同类别。我们比较了六种不同特征提取方法之间的分类性能。结果表明,不进行分割时,使用LS算法的六阶AR系数在使用MLP - BP时性能最佳(93.10%),在使用LDA时性能最佳(97.00%)。结果还表明,分割方法和AAR方法不适用于这组EEG信号。我们得出结论,对于不同的受试者,最佳的心理任务组合是不同的,并且正确选择心理任务和特征提取方法对于BCI设计至关重要。