Using Physiological Information to Classify Task Difficulty in Human-Swarm Interaction
Joseph P. Distefano, Hemanth Manjunatha, Souma Chowdhury, Karthik, Dantu, David Doermann, and Ehsan T. Esfahani

TL;DR
This study explores classifying task difficulty in human-swarm interaction using EEG data, employing feature-based and deep learning methods, revealing brain region importance and individual differences.
Contribution
It introduces a novel EEG-based approach for classifying task difficulty in human-swarm teams, highlighting brain region significance and individual expertise effects.
Findings
Both approaches classify task difficulty well above chance.
Occipital lobe coherence features are important.
Temporal lobe is key for experts.
Abstract
Human-swarm interaction has recently gained attention due to its plethora of new applications in disaster relief, surveillance, rescue, and exploration. However, if the task difficulty increases, the performance of the human operator decreases, thereby decreasing the overall efficacy of the human-swarm team. Thus, it is critical to identify the task difficulty and adaptively allocate the task to the human operator to maintain optimal performance. In this direction, we study the classification of task difficulty in a human-swarm interaction experiment performing a target search mission. The human may control platoons of unmanned aerial vehicles (UAVs) and unmanned ground vehicles (UGVs) to search a partially observable environment during the target search mission. The mission complexity is increased by introducing adversarial teams that humans may only see when the environment is…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Anomaly Detection Techniques and Applications
