Predicting Situation Awareness from Physiological Signals
Kieran J. Smith, Tristan C. Endsley, Torin K. Clark

TL;DR
This study demonstrates that multimodal physiological signals, including EEG and eye-tracking, can predict all three levels of situation awareness in a complex simulation, offering a non-disruptive assessment method.
Contribution
It extends prior work by predicting all three SA levels using a multimodal sensor suite in a multi-tasking simulation, with validated predictive performance.
Findings
Multimodal physiological models outperform shuffled label models in predicting SA.
Level 3 SA (projection) was most accurately predicted.
EEG and eye-tracking signals are particularly useful for predicting high-level SA.
Abstract
Situation awareness (SA)--comprising the ability to 1) perceive critical elements in the environment, 2) comprehend their meanings, and 3) project their future states--is critical for human operator performance. Due to the disruptive nature of gold-standard SA measures, researchers have sought physiological indicators to provide real-time information about SA. We extend prior work by using a multimodal suite of neurophysiological, psychophysiological, and behavioral signals, predicting all three levels of SA along a continuum, and predicting a comprehensive measure of SA in a complex multi-tasking simulation. We present a lab study in which 31 participants controlled an aircraft simulator task battery while wearing physiological sensors and responding to SA 'freeze-probe' assessments. We demonstrate the validity of task and assessment for measuring SA. Multimodal physiological models…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Sleep and Work-Related Fatigue · Gaze Tracking and Assistive Technology
