Towards an AI-Driven Video-Based American Sign Language Dictionary: Exploring Design and Usage Experience with Learners
April 08, 2025 Β· Declared Dead Β· π International Cross-Disciplinary Conference on Web Accessibility
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Authors
Saad Hassan, Matyas Bohacek, Chaelin Kim, Denise Crochet
arXiv ID
2504.05857
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.AI
Citations
1
Venue
International Cross-Disciplinary Conference on Web Accessibility
Last Checked
4 months ago
Abstract
Searching for unfamiliar American Sign Language (ASL) signs is challenging for learners because, unlike spoken languages, they cannot type a text-based query to look up an unfamiliar sign. Advances in isolated sign recognition have enabled the creation of video-based dictionaries, allowing users to submit a video and receive a list of the closest matching signs. Previous HCI research using Wizard-of-Oz prototypes has explored interface designs for ASL dictionaries. Building on these studies, we incorporate their design recommendations and leverage state-of-the-art sign-recognition technology to develop an automated video-based dictionary. We also present findings from an observational study with twelve novice ASL learners who used this dictionary during video-comprehension and question-answering tasks. Our results address human-AI interaction challenges not covered in previous WoZ research, including recording and resubmitting signs, unpredictable outputs, system latency, and privacy concerns. These insights offer guidance for designing and deploying video-based ASL dictionary systems.
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