Roberts S J, Penny W D
Department of Engineering Science, University of Oxford, UK.
Med Biol Eng Comput. 2000 Jan;38(1):56-61. doi: 10.1007/BF02344689.
Preliminary results from real-time 'brain-computer interface' experiments are presented. The analysis is based on autoregressive modelling of a single EEG channel coupled with classification and temporal smoothing under a Bayesian paradigm. It is shown that uncertainty in decisions is taken into account under such a formalism and that this may be used to reject uncertain samples, thus dramatically improving system performance. Using the strictest rejection method, a classification performance of 86.5 +/- 6.9% is achieved over a set of seven subjects in two-way cursor movement experiments.
本文展示了实时“脑机接口”实验的初步结果。该分析基于单个脑电图(EEG)通道的自回归建模,并结合贝叶斯范式下的分类和时间平滑处理。结果表明,在这种形式体系下,决策中的不确定性得到了考虑,并且这可用于拒绝不确定的样本,从而显著提高系统性能。在双向光标移动实验中,针对一组七名受试者,使用最严格的拒绝方法实现了86.5±6.9%的分类性能。