A Framework for Computational Design and Adaptation of Extended Reality User Interfaces
September 07, 2023 Β· Declared Dead Β· π arXiv.org
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Authors
Kashyap Todi, Tanya R. Jonker
arXiv ID
2309.04025
Category
cs.HC: Human-Computer Interaction
Citations
6
Venue
arXiv.org
Last Checked
4 months ago
Abstract
To facilitate high quality interaction during the regular use of computing systems, it is essential that the user interface (UI) deliver content and components in an appropriate manner. Although extended reality (XR) is emerging as a new computing platform, we still have a limited understanding of how best to design and present interactive content to users in such immersive environments. Adaptive UIs offer a promising approach for optimal presentation in XR as the user's environment, tasks, capabilities, and preferences vary under changing context. In this position paper, we present a design framework for adapting various characteristics of content presented in XR. We frame these as five considerations that need to be taken into account for adaptive XR UIs: What?, How Much?, Where?, How?, and When?. With this framework, we review literature on UI design and adaptation to reflect on approaches that have been adopted or developed in the past towards identifying current gaps and challenges, and opportunities for applying such approaches in XR. Using our framework, future work could identify and develop novel computational approaches for achieving successful adaptive user interfaces in such immersive environments.
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