CPR Emergency Assistance Through Mixed Reality Communication
December 14, 2023 Β· Declared Dead Β· π International Conference on Intelligent Tutoring Systems
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Authors
Manuel Rebol, Alexander Steinmaurer, Florian Gamillscheg, Krzysztof Pietroszek, Christian GΓΌtl, Claudia Ranniger, Colton Hood, Adam Rutenberg, Neal Sikka
arXiv ID
2312.09150
Category
cs.HC: Human-Computer Interaction
Citations
4
Venue
International Conference on Intelligent Tutoring Systems
Last Checked
4 months ago
Abstract
We design and evaluate a mixed reality real-time communication system for remote assistance during CPR emergencies. Our system allows an expert to guide a first responder, remotely, on how to give first aid. RGBD cameras capture a volumetric view of the local scene including the patient, the first responder, and the environment. The volumetric capture is augmented onto the remote expert's view to spatially guide the first responder using visual and verbal instructions. We evaluate the mixed reality communication system in a research study in which participants face a simulated emergency. The first responder moves the patient to the recovery position and performs chest compressions as well as mouth-to-mask ventilation. Our study compares mixed reality against videoconferencing-based assistance using CPR performance measures, cognitive workload surveys, and semi-structured interviews. We find that more visual communication including gestures and objects is used by the remote expert when assisting in mixed reality compared to videoconferencing. Moreover, the performance and the workload of the first responder during simulation do not differ significantly between the two technologies.
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