Khan Muhammad Jawad, Hong Keum-Shik
School of Mechanical Engineering, Pusan National University , Busan , South Korea.
School of Mechanical Engineering, Pusan National University, Busan, South Korea; Department of Cogno-Mechatronics Engineering, Pusan National University, Busan, South Korea.
Front Neurorobot. 2017 Feb 17;11:6. doi: 10.3389/fnbot.2017.00006. eCollection 2017.
In this paper, a hybrid electroencephalography-functional near-infrared spectroscopy (EEG-fNIRS) scheme to decode eight active brain commands from the frontal brain region for brain-computer interface is presented. A total of eight commands are decoded by fNIRS, as positioned on the prefrontal cortex, and by EEG, around the frontal, parietal, and visual cortices. Mental arithmetic, mental counting, mental rotation, and word formation tasks are decoded with fNIRS, in which the selected features for classification and command generation are the peak, minimum, and mean ΔHbO values within a 2-s moving window. In the case of EEG, two eyeblinks, three eyeblinks, and eye movement in the up/down and left/right directions are used for four-command generation. The features in this case are the number of peaks and the mean of the EEG signal during 1 s window. We tested the generated commands on a quadcopter in an open space. An average accuracy of 75.6% was achieved with fNIRS for four-command decoding and 86% with EEG for another four-command decoding. The testing results show the possibility of controlling a quadcopter online and in real-time using eight commands from the prefrontal and frontal cortices the proposed hybrid EEG-fNIRS interface.
本文提出了一种混合式脑电图-功能近红外光谱(EEG-fNIRS)方案,用于从额叶脑区解码8种活跃的脑指令,以实现脑机接口。通过位于前额叶皮层的fNIRS以及额叶、顶叶和视觉皮层周围的EEG,总共解码出8种指令。通过fNIRS对心算、心数、心理旋转和单词形成任务进行解码,其中用于分类和指令生成的选定特征是2秒移动窗口内的峰值、最小值和平均ΔHbO值。对于EEG,两次眨眼、三次眨眼以及上下和左右方向的眼球运动用于生成四种指令。在这种情况下,特征是1秒窗口内的峰值数量和EEG信号的平均值。我们在开阔空间的四轴飞行器上测试了生成的指令。对于四种指令的解码,fNIRS实现了75.6%的平均准确率,对于另外四种指令的解码,EEG实现了86%的平均准确率。测试结果表明,使用所提出的混合式EEG-fNIRS接口,从前额叶和额叶皮层发出的8种指令可以在线实时控制四轴飞行器。