Jia Min, Wang Jinjia, Li Jing, Hong Wenxue
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2014 Feb;31(1):1-6.
Electroencephalogram (EEG) classification for brain-computer interface (BCI) is a new way of realizing human-computer interreaction. In this paper the application of semi-supervised sparse representation classifier algorithms based on help training to EEG classification for BCI is reported. Firstly, the correlation information of the unlabeled data is obtained by sparse representation classifier and some data with high correlation selected. Secondly, the boundary information of the selected data is produced by discriminative classifier, which is the Fisher linear classifier. The final unlabeled data with high confidence are selected by a criterion containing the information of distance and direction. We applied this novel method to the three benchmark datasets, which were BCI I, BCI II_IV and USPS. The classification rate were 97%, 82% and 84.7%, respectively. Moreover the fastest arithmetic rate was just about 0. 2 s. The classification rate and efficiency results of the novel method are both better than those of S3VM and SVM, proving that the proposed method is effective.
用于脑机接口(BCI)的脑电图(EEG)分类是实现人机交互的一种新方式。本文报道了基于辅助训练的半监督稀疏表示分类器算法在BCI的EEG分类中的应用。首先,通过稀疏表示分类器获取未标记数据的相关信息,并选择一些相关性高的数据。其次,由判别分类器(即Fisher线性分类器)产生所选数据的边界信息。通过包含距离和方向信息的准则选择最终具有高置信度的未标记数据。我们将这种新方法应用于三个基准数据集,即BCI I、BCI II_IV和USPS。分类率分别为97%、82%和84.7%。此外,最快的运算速度约为0.2秒。新方法的分类率和效率结果均优于S3VM和SVM,证明了所提方法的有效性。