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      Electroencephalographic Workload Indicators During Teleoperation of an Unmanned Aerial Vehicle Shepherding a Swarm of Unmanned Ground Vehicles in Contested Environments.

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          Abstract

          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.

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          Author and article information

          Journal
          Front Neurosci
          Frontiers in neuroscience
          Frontiers Media SA
          1662-4548
          1662-453X
          2020
          : 14
          Affiliations
          [1 ] School of Engineering & IT, University of New South Wales, Canberra, NSW, Australia.
          [2 ] Defence Science and Technology Organisation, Adelaide, SA, Australia.
          Article
          10.3389/fnins.2020.00040
          7034033
          32116498
          4428b9a9-5192-4a4b-a744-64a312f614a4
          History

          shepherding,EEG,augmented intelligence,cognitive indicators,cognitive load,human-autonomy teaming,human-swarm teaming,mental load

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