Don't Drone Yourself in Work: Discussing DronOS as a Framework for Human-Drone Interaction
October 20, 2020 Β· Declared Dead Β· π iHDI@CHI
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Authors
Matthias Hoppe, Yannick WeiΓ, Marinus Burger, Thomas Kosch
arXiv ID
2010.10148
Category
cs.HC: Human-Computer Interaction
Citations
2
Venue
iHDI@CHI
Last Checked
4 months ago
Abstract
More and more off-the-shelf drones provide frameworks that enable the programming of flight paths. These frameworks provide vendor-dependent programming and communication interfaces that are intended for flight path definitions. However, they are often limited to outdoor and GPS-based use only. A key disadvantage of such a solution is that they are complicated to use and require readjustments when changing the drone model. This is time-consuming since it requires redefining the flight path for the new framework. This workshop paper proposes additional features for DronOS, a community-driven framework that enables model-independent automatisation and programming of drones. We enhanced DronOS to include additional functions to account for the specific design constraints in human-drone-interaction. This paper provides a starting point for discussing the requirements involved in designing a drone system with other researchers within the human-drone interaction community. We envision DronOS as a community-driven framework that can be applied to generic drone models, hence enabling the automatisation for any commercially available drone. Our goal is to build DronOS as a software tool that can be easily used by researchers and practitioners to prototype novel drone-based systems.
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