School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China.
Sensors (Basel). 2024 Sep 29;24(19):6304. doi: 10.3390/s24196304.
Brain-computer interface (BCI) offers a novel means of communication and control for individuals with disabilities and can also enhance the interactions between humans and machines for the broader population. This paper explores the brain neural signatures of unmanned aerial vehicle (UAV) operators in emergencies and develops an operator's electroencephalography (EEG) signals-based detection method for UAV emergencies. We found regularity characteristics similar to classic event-related potential (ERP) components like visual mismatch negativity (vMMN) and contingent negative variation (CNV). Source analysis revealed a sequential activation of the occipital, temporal, and frontal lobes following the onset of emergencies, corresponding to the processing of attention, emotion, and motor intention triggered by visual stimuli. Furthermore, an online detection system was implemented and tested. Experimental results showed that the system achieved an average accuracy of over 88% in detecting emergencies with a detection latency of 431.95 ms from the emergency onset. This work lays a foundation for understanding the brain activities of operators in emergencies and developing an EEG-based detection method for emergencies to assist UAV operations.
脑机接口 (BCI) 为残疾人士提供了一种新颖的通信和控制方式,也可以增强人类与机器之间的交互作用,适用于更广泛的人群。本文探讨了紧急情况下无人机 (UAV) 操作人员的脑神经特征,并开发了一种基于操作人员脑电图 (EEG) 信号的 UAV 紧急情况检测方法。我们发现了类似于经典事件相关电位 (ERP) 成分的规律特征,如视觉失匹配负波 (vMMN) 和伴随负变 (CNV)。源分析显示,在紧急情况发生后,枕叶、颞叶和额叶依次激活,对应于视觉刺激引发的注意力、情绪和运动意图的处理。此外,还实现并测试了一个在线检测系统。实验结果表明,该系统在检测紧急情况方面的平均准确率超过 88%,从紧急情况发生到检测到紧急情况的潜伏期为 431.95 毫秒。这项工作为理解操作人员在紧急情况下的大脑活动以及开发基于 EEG 的紧急情况检测方法以辅助 UAV 操作奠定了基础。