首页> 外文期刊>Frontiers in Neuroscience >Electroencephalographic Workload Indicators During Teleoperation of an Unmanned Aerial Vehicle Shepherding a Swarm of Unmanned Ground Vehicles in Contested Environments
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Electroencephalographic Workload Indicators During Teleoperation of an Unmanned Aerial Vehicle Shepherding a Swarm of Unmanned Ground Vehicles in Contested Environments

机译:脑电图工作负载指示器在无人驾驶的空中车辆牧羊人在竞争环境中牧羊人牧羊人牧羊人

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Background: Although many electroencephalographic (EEG) indicators have been proposed in the literature, it is unclear which of the power bands and various indices are best as indicators of mental workload. Spectral powers (Theta, Alpha, and Beta) and ratios (Beta/(Alpha + Theta), Theta/Alpha, Theta/Beta) were identified in the literature as prominent indicators of cognitive workload. Objective: The aim of the present study is to identify a set of EEG indicators that can be used for the objective assessment of cognitive workload in a multitasking setting and as a foundational step toward a human-autonomy augmented cognition system. Methods: The participants' perceived workload was modulated during a teleoperation task involving an unmanned aerial vehicle (UAV) shepherding a swarm of unmanned ground vehicles (UGVs). Three sources of data were recorded from sixteen participants ( n = 16): heart rate (HR), EEG, and subjective indicators of the perceived workload using the Air Traffic Workload Input Technique (ATWIT). Results: The HR data predicted the scores from ATWIT. Nineteen common EEG features offered a discriminatory power of the four workload setups with high classification accuracy (82.23%), exhibiting a higher sensitivity than ATWIT and HR. Conclusion: The identified set of features represents EEG indicators for the objective assessment of cognitive workload across subjects. These common indicators could be used for augmented intelligence in human-autonomy teaming scenarios, and form the basis for our work on designing a closed-loop augmented cognition system for human-swarm teaming.
机译:背景:虽然在文献中提出了许多脑电图(EEG)指示器,但目前尚不清楚哪种动力频带和各种指数是最佳的心理工作量指标。在文献中,在文献中确定了光谱势(θ,α,β)和比率(β/(α+θ),θ/α,θ/ beta)作为认知工作量的突出指标。目的:本研究的目的是识别一组EEG指标,可用于对多任务设置中的认知工作量的客观评估,并作为朝向人自主增强认知系统的基础阶段。方法:在涉及无人驾驶飞行器(UAV)的漫步性任务期间调制参与者的感知工作负载,伴随着一辆无人面的地面车辆(UGV)的牧羊犬。使用空中流量工作负载输入技术(ATWIT)记录了三个参与者(n = 16):心率(HR),EEG和主观指标记录了三个数据来源。结果:HR数据预测ATWIT的分数。 19个常见的EEG功能提供了具有高分类精度(82.23%)的四个工作负荷设置的歧视性,表现出比ATWIT和HR更高的灵敏度。结论:确定的特征集代表了eEG指标,用于客观评估跨对象的认知工作量。这些常见指标可用于人类自主组织方案中的增强智能,并为我们的工作设计为人类群体队伍设计闭环增强认知系统的基础。

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