Vidaurre C, Schlögl A, Cabeza R, Scherer R, Pfurtscheller G
Department of Electrical Engineering and Electronics, State University of Navarra, Spain.
Biomed Tech (Berl). 2005 Nov;50(11):350-4. doi: 10.1515/BMT.2005.049.
We present the result of on-line feedback Brain Computer Interface experiments using adaptive and non-adaptive feature extraction methods with an on-line adaptive classifier based on Quadratic Discriminant Analysis. Experiments were performed with 12 naïve subjects, feedback was provided from the first moment and no training sessions were needed. Experiments run in three different days with each subject. Six of them received feedback with Adaptive Autoregressive parameters and the rest with logarithmic Band Power estimates. The study was done using single trial analysis of each of the sessions and the value of the Error Rate and the Mutual Information of the classification were used to discuss the results. Finally, it was shown that even subjects starting with a low performance were able to control the system in a few hours: and contrary to previous results no differences between AAR and BP estimates were found.
我们展示了使用自适应和非自适应特征提取方法以及基于二次判别分析的在线自适应分类器进行的在线反馈脑机接口实验的结果。实验由12名未经训练的受试者进行,从一开始就提供反馈,无需训练环节。每个受试者在三天内进行实验。其中6人接收基于自适应自回归参数的反馈,其余人接收对数带功率估计值的反馈。该研究通过对每个实验环节进行单次试验分析来完成,并使用错误率和分类互信息的值来讨论结果。最后表明,即使是初始表现不佳的受试者也能在几个小时内控制系统:而且与之前的结果相反,未发现自适应自回归(AAR)和带功率(BP)估计之间存在差异。