Qureshi Nauman Khalid, Naseer Noman, Noori Farzan Majeed, Nazeer Hammad, Khan Rayyan Azam, Saleem Sajid
Department of Mechatronics Engineering, Air University, Islamabad, Pakistan.
Department of Electrical and Computer Engineering, Institute of Systems and Robotics, University of Coimbra, Coimbra, Portugal.
Front Neurorobot. 2017 Jul 17;11:33. doi: 10.3389/fnbot.2017.00033. eCollection 2017.
In this paper, a novel methodology for enhanced classification of functional near-infrared spectroscopy (fNIRS) signals utilizable in a two-class [motor imagery (MI) and rest; mental rotation (MR) and rest] brain-computer interface (BCI) is presented. First, fNIRS signals corresponding to MI and MR are acquired from the motor and prefrontal cortex, respectively, afterward, filtered to remove physiological noises. Then, the signals are modeled using the general linear model, the coefficients of which are adaptively estimated using the least squares technique. Subsequently, multiple feature combinations of estimated coefficients were used for classification. The best classification accuracies achieved for five subjects, for MI versus rest are 79.5, 83.7, 82.6, 81.4, and 84.1% whereas those for MR versus rest are 85.5, 85.2, 87.8, 83.7, and 84.8%, respectively, using support vector machine. These results are compared with the best classification accuracies obtained using the conventional hemodynamic response. By means of the proposed methodology, the average classification accuracy obtained was significantly higher ( < 0.05). These results serve to demonstrate the feasibility of developing a high-classification-performance fNIRS-BCI.
本文提出了一种用于增强功能性近红外光谱(fNIRS)信号分类的新方法,该方法可用于两类[运动想象(MI)与静息;心理旋转(MR)与静息]脑机接口(BCI)。首先,分别从运动皮层和前额叶皮层获取与MI和MR对应的fNIRS信号,然后进行滤波以去除生理噪声。接着,使用通用线性模型对信号进行建模,并使用最小二乘法自适应估计其系数。随后,将估计系数的多个特征组合用于分类。使用支持向量机时,五名受试者在MI与静息分类中的最佳准确率分别为79.5%、83.7%、82.6%、81.4%和84.1%,而在MR与静息分类中的最佳准确率分别为85.5%、85.2%、87.8%、83.7%和84.8%。将这些结果与使用传统血液动力学响应获得的最佳分类准确率进行比较。通过所提出的方法,获得的平均分类准确率显著更高(<0.05)。这些结果证明了开发具有高分类性能的fNIRS-BCI的可行性。