首页> 外文会议>EUROCON 2005 - The International Conference on ""Computer as a Tool"""; Belgrade,Serbia amp; Montenegro >Improving the Performance of Two-state Mental Task Brain-Computer Interface Design Using Linear Discriminant Classifier
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Improving the Performance of Two-state Mental Task Brain-Computer Interface Design Using Linear Discriminant Classifier

机译:使用线性判别器提高两态心理任务脑机接口设计的性能

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The purpose of this study is to motivate the use of the simpler Linear Discriminant (LD) classifier as compared to the commonly used Multilayer-perceptron-backpropagation (MLP-BP) neural network for Brain Computer Interface (BCI) design. We investigated the performances of MLP-BP and LD classifiers for mental task based BCI design. In the experimental study, EEG signals from five mental tasks were recorded from four subjects and the classification performances of different combinations of two mental tasks were studied for each subject. Two different AR models were used to compute the features from the electroencephalogram signals: Burg''s algorithm (ARB) and Least Square algorithm (ARLS). The results showed that in most cases, LD classifier gave superior classification performance as compared to MLP-BP, with reduced computational complexity. However, the best mental tasks for each subject were the same using both classifiers. ARLS gave the best performance (93.10%) using MLP-BP and (97.00%) using LD. As the best mental task combinations varied between subjects, we conclude that for different subjects, proper selection of mental tasks and feature extraction methods would be essential for a BCI design.
机译:与用于大脑计算机接口(BCI)设计的常用多层感知器反向传播(MLP-BP)神经网络相比,本研究的目的是鼓励使用更简单的线性判别(LD)分类器。我们调查了基于心理任务的BCI设计的MLP-BP和LD分类器的性能。在实验研究中,记录了来自四个受试者的五个脑力任务的脑电信号,并且针对每个受试者研究了两个脑力任务的不同组合的分类表现。两种不同的AR模型用于根据脑电图信号计算特征:Burg算法(ARB)和最小二乘算法(ARLS)。结果表明,在大多数情况下,与MLP-BP相比,LD分类器具有更好的分类性能,并且降低了计算复杂度。但是,使用两个分类器,每个对象的最佳心理任务是相同的。使用MLP-BP时,ARLS表现最佳(93.10%),使用LD时,表现最佳(97.00%)。由于最佳心理任务组合在各个主题之间有所不同,因此我们得出结论,对于不同的主题,正确选择心理任务和特征提取方法对于BCI设计至关重要。

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