Salazar-Varas R, Costa Á, Iáñez E, Úbeda A, Hortal E, Azorín J M
Center for Research and Advanced Studies (Cinvestav), Parque de Investigación e Innovación Tecnológica km 9.5 de la Autopista Nueva al Aeropuerto, 201., Monterrey, 66600, NL, Mexico.
Brain-Machine Interface Systems Lab, Universidad Miguel Hernández de Elche, Av. de la Universidad, S/N, Elche, 03202, Spain.
J Neuroeng Rehabil. 2015 Nov 14;12:101. doi: 10.1186/s12984-015-0095-4.
When an unexpected perturbation in the environment occurs, the subsequent alertness state may cause a brain activation responding to that perturbation which can be detected and employed by a Brain-Computer Interface (BCI). In this work, the possibility of detecting a sudden obstacle appearance analyzing electroencephalographic (EEG) signals is assessed. For this purpose, different features of EEG signals are evaluated during the appearance of sudden obstacles while a subject is walking on a treadmill. The future goal is to use this procedure to detect any obstacle appearance during walking when the user is wearing a lower limb exoskeleton in order to generate an emergency stop command for the exoskeleton. This would enhance the user-exoskeleton interaction, improving the safety mechanisms of current exoskeletons.
In order to detect the change in the brain activity when an obstacle suddenly appears, different features of EEG signals are evaluated using the recordings of five healthy subjects. Since the change in the brain activity occurs in the time domain, the features evaluated are: common spatial patterns, average power, slope, and the coefficients of a polynomial fit. A Linear Discriminant Analysis-based classifier is used to differentiate between two conditions: the appearance or not of an obstacle. The evaluation of the performance to detect the obstacles is made in terms of accuracy, true positive (TP) and false positive (FP) rates.
From the offline analysis, the best performance is achieved when the slope or the polynomial coefficients are used as features, with average detection accuracy rates of 74.0 and 79.5 %, respectively. These results are consistent with the pseudo-online results, where a complete EEG recording is segmented into windows of 500 ms and overlapped 400 ms, and a decision about the obstacle appearance is made for each window. The results of the best subject were 11 out of 14 obstacles detected with a rate of 9.09 FPs/min, and 10 out of 14 obstacles detected with a rate of 6.34 FPs/min using slope and polynomial coefficients features, respectively.
An EEG-based BCI can be developed to detect the appearance of unexpected obstacles. The average accuracy achieved is 79.5 % of success rate with a low number of false detections. Thus, the online performance of the BCI would be suitable for commanding in a safely way a lower limb exoskeleton during walking.
当环境中出现意外扰动时,随后的警觉状态可能会引起大脑对该扰动的激活反应,脑机接口(BCI)可以检测并利用这种反应。在这项工作中,评估了通过分析脑电图(EEG)信号来检测突然出现的障碍物的可能性。为此,在受试者在跑步机上行走时,评估突然出现障碍物期间EEG信号的不同特征。未来的目标是使用此程序在用户穿戴下肢外骨骼行走时检测任何障碍物的出现,以便为外骨骼生成紧急停止命令。这将增强用户与外骨骼的交互,改善当前外骨骼的安全机制。
为了检测障碍物突然出现时大脑活动的变化,使用五名健康受试者的记录评估EEG信号的不同特征。由于大脑活动的变化发生在时域,评估的特征包括:共同空间模式、平均功率、斜率和多项式拟合系数。基于线性判别分析的分类器用于区分两种情况:障碍物是否出现。根据准确率、真阳性(TP)率和假阳性(FP)率对检测障碍物的性能进行评估。
离线分析表明,当使用斜率或多项式系数作为特征时,性能最佳,平均检测准确率分别为74.0%和79.5%。这些结果与伪在线结果一致,在伪在线结果中,完整的EEG记录被分割为500毫秒的窗口,重叠400毫秒,并为每个窗口做出关于障碍物出现的决策。使用斜率和多项式系数特征时,最佳受试者的结果分别是14个障碍物中检测到11个,误报率为9.09次/分钟;14个障碍物中检测到10个,误报率为6.34次/分钟。
可以开发基于EEG的BCI来检测意外障碍物的出现。平均成功率达到79.5%,误检测次数较少。因此,BCI的在线性能将适合在行走过程中安全地控制下肢外骨骼。