Towards the Design of Effective Freehand Gestural Interaction for Interactive TV
March 26, 2016 Β· Declared Dead Β· π Journal of Intelligent & Fuzzy Systems
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Authors
Gang Ren, Wenbin Li, Eamonn O'Neill
arXiv ID
1603.08103
Category
cs.HC: Human-Computer Interaction
Citations
23
Venue
Journal of Intelligent & Fuzzy Systems
Last Checked
4 months ago
Abstract
As interactive devices become pervasive, people are beginning to looking for more advanced interaction with televisions in the living room. Interactive television has the potential to offer a very engaging experience. But most common user tasks are still challenging with such systems, such as menu selection or text input. And little work has been done on understanding and sup-porting the effective design of freehand interaction with an TV in the living room. In this paper, we perform two studies investi-gating freehand gestural interaction with a consumer level sensor, which is suitable for TV scenarios. In the first study, we inves-tigate a range of design factors for tiled layout menu selection, including wearable feedback, push gesture depth, target size and position in motor space. The results show that tactile and audio feedback have no significant effect on performance and prefer-ence, and these results inform potential designs for high selection performance. In the second study, we investigate a common TV user task of text input using freehand gesture. We design and evaluate two virtual keyboard layouts and three freehand selec-tion methods. Results show that ease of use and error tolerance can be both achieved using a text entry method utilizing a dual circle layout and an expanding target selection technique. Finally, we propose design guidelines for effective, usable and com-fortable freehand gestural interaction for interactive TV based on the findings.
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