Rakotomamonjy Alain, Guigue Vincent
Litis EA4108, University of Rouen, INSA de Rouen, 76801 Saint Etienne du Rouvray, France.
IEEE Trans Biomed Eng. 2008 Mar;55(3):1147-54. doi: 10.1109/TBME.2008.915728.
Brain-computer interface P300 speller aims at helping patients unable to activate muscles to spell words by means of their brain signal activities. Associated to this BCI paradigm, there is the problem of classifying electroencephalogram signals related to responses to some visual stimuli. This paper addresses the problem of signal responses variability within a single subject in such brain-computer interface. We propose a method that copes with such variabilities through an ensemble of classifiers approach. Each classifier is composed of a linear support vector machine trained on a small part of the available data and for which a channel selection procedure has been performed. Performances of our algorithm have been evaluated on dataset II of the BCI Competition III and has yielded the best performance of the competition.
脑机接口P300拼写器旨在帮助无法激活肌肉的患者通过大脑信号活动来拼写单词。与这种脑机接口范式相关的是,存在对与某些视觉刺激反应相关的脑电图信号进行分类的问题。本文解决了这种脑机接口中单个受试者内信号反应变异性的问题。我们提出了一种通过分类器集成方法来应对这种变异性的方法。每个分类器由一个线性支持向量机组成,该线性支持向量机在可用数据的一小部分上进行训练,并且已经执行了通道选择程序。我们算法的性能已在脑机接口竞赛III的数据集II上进行了评估,并在竞赛中取得了最佳性能。