Ability-Based Methods for Personalized Keyboard Generation
Abstract
This study introduces an ability-based method for personalized keyboard generation, wherein an individual's own movement and human-computer interaction data are used to automatically compute a personalized virtual keyboard layout. Our approach integrates a multidirectional point-select task to characterize cursor control over time, distance, and direction. The characterization is automatically employed to develop a computationally efficient keyboard layout that prioritizes each user's movement abilities through capturing directional constraints and preferences. We evaluated our approach in a study involving 16 participants using inertial sensing and facial electromyography as an access method, resulting in significantly increased communication rates using the personalized keyboard (52.0 bits/min) when compared to a generically optimized keyboard (47.9 bits/min). Our results demonstrate the ability to effectively characterize an individual's movement abilities to design a personalized keyboard for improved communication. This work underscores the importance of integrating a user's motor abilities when designing virtual interfaces.
Cite
@article{arxiv.2201.04593,
title = {Ability-Based Methods for Personalized Keyboard Generation},
author = {Claire L. Mitchell and Gabriel J. Cler and Susan K. Fager and Paola Contessa and Serge H. Roy and Gianluca De Luca and Joshua C. Kline and Jennifer M. Vojtech},
journal= {arXiv preprint arXiv:2201.04593},
year = {2022}
}
Comments
20 pages, 7 figures