Rahman M M, Chowdhury M A, Fattah S A
Bangladesh University of Engineering and Technology (BUET), Dhaka, 1000, Bangladesh.
Brain Inform. 2018 Mar;5(1):1-12. doi: 10.1007/s40708-017-0073-7. Epub 2017 Dec 9.
Classification of different mental tasks using electroencephalogram (EEG) signal plays an imperative part in various brain-computer interface (BCI) applications. In the design of BCI systems, features extracted from lower frequency bands of scalp-recorded EEG signals are generally considered to classify mental tasks and higher frequency bands are mostly ignored as noise. However, in this paper, it is demonstrated that high frequency components of EEG signal can provide accommodating data for enhancing the classification performance of the mental task-based BCI. Instead of using autoregressive (AR) parameters considering AR modeling of EEG data, reflection coefficients obtained from EEG signal are proposed as potential features. From a given frame of EEG data, reflection coefficients are directly extracted by using the autocorrelation values in a recursive fashion, which avoids matrix inversion and computation of AR parameters. Use of reflection coefficients not only provides an effective feature vector for EEG signal classification but also offers very low computational burden. Support vector machine classifier is deployed in leave-one-out cross-validation manner to carry out classification process. Extensive simulation is done on an openly accessible dataset containing five different mental tasks. It is found that the proposed scheme can classify mental tasks with a very high level of accuracy as well as low time complexity in contrast with some of the existing strategies.
利用脑电图(EEG)信号对不同心理任务进行分类在各种脑机接口(BCI)应用中起着至关重要的作用。在BCI系统的设计中,从头皮记录的EEG信号低频带提取的特征通常被用于对心理任务进行分类,而高频带大多被视为噪声而被忽略。然而,本文表明,EEG信号的高频成分可以提供适应性数据,以提高基于心理任务的BCI的分类性能。本文提出将从EEG信号中获得的反射系数作为潜在特征,而不是使用考虑EEG数据自回归(AR)建模的AR参数。从给定的EEG数据帧中,通过递归方式使用自相关值直接提取反射系数,避免了矩阵求逆和AR参数的计算。反射系数的使用不仅为EEG信号分类提供了有效的特征向量,而且计算负担非常低。采用支持向量机分类器以留一法交叉验证的方式进行分类过程。在一个包含五种不同心理任务的公开可用数据集上进行了大量仿真。结果发现,与一些现有策略相比,所提出的方案能够以非常高的准确率和低时间复杂度对心理任务进行分类。