Designing Distinguishable Mid-Air Ultrasound Tactons with Temporal Parameters
May 05, 2024 Β· Declared Dead Β· π International Conference on Human Factors in Computing Systems
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Authors
Chungman Lim, Gunhyuk Park, Hasti Seifi
arXiv ID
2405.02800
Category
cs.HC: Human-Computer Interaction
Citations
11
Venue
International Conference on Human Factors in Computing Systems
Last Checked
4 months ago
Abstract
Mid-air ultrasound technology offers new design opportunities for contactless tactile patterns (i.e., Tactons) in user applications. Yet, few guidelines exist for making ultrasound Tactons easy to distinguish for users. In this paper, we investigated the distinguishability of temporal parameters of ultrasound Tactons in five studies (n=72 participants). Study 1 established the discrimination thresholds for amplitude-modulated (AM) frequencies. In Studies 2-5, we investigated distinguishable ultrasound Tactons by creating four Tacton sets based on mechanical vibrations in the literature and collected similarity ratings for the ultrasound Tactons. We identified a subset of temporal parameters, such as rhythm and low envelope frequency, that could create distinguishable ultrasound Tactons. Also, a strong correlation (mean Spearman's $Ο$=0.75) existed between similarity ratings for ultrasound Tactons and similarities of mechanical Tactons from the literature, suggesting vibrotactile designers can transfer their knowledge to ultrasound design. We present design guidelines and future directions for creating distinguishable mid-air ultrasound Tactons.
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