Massaeli Faghihe, Bagheri Mohammad, Power Sarah D
Faculty of Engineering and Applied Science, Memorial University of Newfoundland, St. Johns, Canada.
Faculty of Medicine, Memorial University of Newfoundland, St. Johns, Canada.
J Neural Eng. 2023 Feb 20;20(1). doi: 10.1088/1741-2552/acb9be.
A passive brain-computer interface (pBCI) is a system that enhances a human-machine interaction by monitoring the mental state of the user and, based on this implicit information, making appropriate modifications to the interaction. Key to the development of such a system is the ability to reliably detect the mental state of interest via neural signals. Many different mental states have been investigated, including fatigue, attention and various emotions, however one of the most commonly studied states is mental workload, i.e. the amount of attentional resources required to perform a task. The emphasis of mental workload studies to date has been almost exclusively on detecting and predicting the 'level' of cognitive resources required (e.g. high vs. low), but we argue that having information regarding the specific 'type' of resources (e.g. visual or auditory) would allow the pBCI to apply more suitable adaption techniques than would be possible knowing just the overall workload level.15 participants performed carefully designed visual and auditory tasks while electroencephalography (EEG) data was recorded. The tasks were designed to be as similar as possible to one another except for the type of attentional resources required. The tasks were performed at two different levels of demand. Using traditional machine learning algorithms, we investigated, firstly, if EEG can be used to distinguish between auditory and visual processing tasks and, secondly, what effect level of sensory processing demand has on the ability to distinguish between auditory and visual processing tasks.The results show that at the high level of demand, the auditory vs. visual processing tasks could be distinguished with an accuracy of 77.1% on average. However, in the low demand condition in this experiment, the tasks were not classified with an accuracy exceeding chance.These results support the feasibility of developing a pBCI for detecting not only the level, but also the type, of attentional resources being required of the user at a given time. Further research is required to determine if there is a threshold of demand under which the type of sensory processing cannot be detected, but even if that is the case, these results are still promising since it is the high end of demand that is of most concern in safety critical scenarios. Such a BCI could help improve safety in high risk occupations by initiating the most effective and efficient possible adaptation strategies when high workload conditions are detected.
被动式脑机接口(pBCI)是一种通过监测用户的心理状态,并基于此隐含信息对人机交互进行适当调整,从而增强人机交互的系统。开发这样一个系统的关键在于能够通过神经信号可靠地检测出感兴趣的心理状态。人们已经研究了许多不同的心理状态,包括疲劳、注意力和各种情绪,然而,最常研究的状态之一是心理负荷,即执行一项任务所需的注意力资源量。迄今为止,心理负荷研究几乎完全集中在检测和预测所需认知资源的“水平”(例如高与低)上,但我们认为,了解有关资源的具体“类型”(例如视觉或听觉)的信息将使pBCI能够应用比仅知道总体负荷水平时更合适的适应技术。15名参与者在进行精心设计的视觉和听觉任务时,记录了脑电图(EEG)数据。这些任务的设计尽可能相似,只是所需的注意力资源类型不同。任务在两种不同的需求水平下执行。使用传统的机器学习算法,我们首先研究了EEG是否可用于区分听觉和视觉处理任务,其次研究了感觉处理需求水平对区分听觉和视觉处理任务能力的影响。结果表明,在高需求水平下,听觉与视觉处理任务平均区分准确率可达77.1%。然而,在本实验的低需求条件下,任务分类准确率未超过随机水平。这些结果支持了开发一种pBCI的可行性,该pBCI不仅可以检测给定时间用户所需注意力资源的水平,还可以检测其类型。需要进一步研究以确定是否存在一个需求阈值,低于该阈值则无法检测感觉处理类型,但即便如此,这些结果仍然很有前景,因为在安全关键场景中,最令人担忧的是高需求情况。这样的脑机接口可以通过在检测到高负荷条件时启动最有效和高效的适应策略,帮助提高高风险职业的安全性。