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Personalization of a Mid-Air Gesture Keyboard using Multi-Objective Bayesian Optimization

Junxiao Shen, Jinghui Hu, John J. Dudley, Per Ola Kristensson

202214 citationsDOI

Abstract

We present AdaptiKeyboard, a mid-air gesture keyboard that uses multi-objective Bayesian optimization to adaptively change layout size to simultaneously optimize speed and accuracy. Gesture keyboards are well suited for enabling mid-air text entry in augmented reality (AR) due to their relative robustness to articulation inaccuracy. However, transplanting gesture keyboards to AR involves a larger design and operational space compared to touchscreen interactions. One potential advantage of this larger design and operational space is that mid-air keyboards presented in AR can be more versatile than their touchscreen equivalents. A key component of a mid-air gesture keyboard is the layout size, which can be made adaptive in order to optimize text entry speed and accuracy at the individual user level. This adaptive personalization can refine the keyboard design to reflect the differences users exhibit in motor behaviors and personal preferences. In this paper, we propose a multi-objective Bayesian optimization approach for adapting the layout size of a mid-air gesture keyboard to individual users. We show that this process can deliver a 14.4% improvement in speed and a 13.8% improvement in accuracy relative to a baseline design with a constant size derived from the default system keyboard on the HoloLens 2.

Topics & Concepts

GestureComputer sciencePersonalizationTouchscreenBayesian optimizationGesture recognitionRobustness (evolution)Human–computer interactionSpeech recognitionArtificial intelligenceChemistryWorld Wide WebGeneBiochemistryAugmented Reality ApplicationsInteractive and Immersive DisplaysTactile and Sensory Interactions
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