PalmGazer: Unimanual Eye-hand Menus in Augmented Reality
June 21, 2023 Β· Declared Dead Β· π Symposium on Spatial User Interaction
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Authors
Ken Pfeuffer, Jan Obernolte, Felix Dietz, Ville MΓ€kelΓ€, Ludwig Sidenmark, Pavel Manakhov, Minna Pakanen, Florian Alt
arXiv ID
2306.12402
Category
cs.HC: Human-Computer Interaction
Citations
28
Venue
Symposium on Spatial User Interaction
Last Checked
4 months ago
Abstract
How can we design the user interfaces for augmented reality (AR) so that we can interact as simple, flexible and expressive as we can with smartphones in one hand? To explore this question, we propose PalmGazer as an interaction concept integrating eye-hand interaction to establish a singlehandedly operable menu system. In particular, PalmGazer is designed to support quick and spontaneous digital commands -- such as to play a music track, check notifications or browse visual media -- through our devised three-way interaction model: hand opening to summon the menu UI, eye-hand input for selection of items, and dragging gesture for navigation. A key aspect is that it remains always-accessible and movable to the user, as the menu supports meaningful hand and head based reference frames. We demonstrate the concept in practice through a prototypical personal UI with application probes, and describe technique designs specifically-tailored to the application UI. A qualitative evaluation highlights the system's design benefits and drawbacks, e.g., that common 2D scroll and selection tasks are simple to operate, but higher degrees of freedom may be reserved for two hands. Our work contributes interaction techniques and design insights to expand AR's uni-manual capabilities.
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