Tap to Sign: Towards using American Sign Language for Text Entry on Smartphones

被引:0
|
作者
Hassan S. [1 ]
Glasser A. [2 ]
Shengelia M. [3 ]
Starner T. [4 ]
Forbes S. [5 ]
Qualls N. [5 ]
Sepah S.S. [6 ]
机构
[1] Tulane University, New Orleans, LA
[2] Gallaudet University, Washington, DC
[3] Rochester Institute of Technology, Rochester, NY
[4] Google Research, Atlanta, GA
[5] DPAN, Ferndale, MI
[6] Google Research, Mountain View, CA
关键词
ASL; fingerspelling; mobile assistant; sign languages; signing interface; text entry;
D O I
10.1145/3604274
中图分类号
学科分类号
摘要
Soon, smartphones may be capable of allowing American Sign Language (ASL) signing and/or fingerspelling for text entry. To explore the usefulness of this approach, we compared emulated fingerspelling recognition with a virtual keyboard for 12 Deaf participants. With practice, fingerspelling is faster (42.5 wpm), potentially has fewer errors (4.02% corrected error rate) and higher throughput (14.2 bits/second), and is as desired as virtual keyboard texting (31.9 wpm; 6.46% corrected error rate; 10.9 bits/second throughput). Our second study recruits another 12 Deaf users at the 2022 National Association for the Deaf conference to compare the walk-up usability of fingerspelling alone, signing, and virtual keyboard text entry for interacting with an emulated mobile assistant. Both signing and virtual keyboard text entry were preferred over fingerspelling. © 2023 Owner/Author.
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