Newbie Guides for Omnidirectional Guidance in Head-Mounted-Device-Based Museum Applications.
HCI (45)(2023)
Abstract
Novel digital museum guides using omnidirectional cues thr-ough head-mounted devices (HMDs) have been presented in previous research. However, due to the novel interaction technologies of HMDs, today's visitors are not yet familiar with these types of guides. We developed and tested instructions ("newbie guides") to help first-time users learn novel interaction patterns of HMDs, inspired by those used in website design or game tutorial design. First, we created three basic example patterns to direct attention using visual, auditory, and a combination of visual and auditory cues. Second, we created a newbie guide as an example showcase for each guidance pattern based on seven design criteria. The newbie guides were tested and evaluated in an exhibition situation, and the results indicate that the seven design criteria can assist HMD-based AR developers in creating effective newbie guides to support first-time users learn omnidirectional guidance patterns in the museum and exhibition context.
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Key words
Tangible User Interfaces,User-defined Gestures,Wayfinding,Immersive Simulations,Gesture Recognition
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