Exploring the Benefits and Applications of Video-Span Selection and Search for Real-Time Support in Sign Language Video Comprehension among ASL Learners

Author:

Hassan Saad1ORCID,de Lacerda Pataca Caluã2ORCID,Amin Akhter Al2ORCID,Nourian Laleh2ORCID,Navarro Diego3ORCID,Lee Sooyeon4ORCID,Gordon Alexis5ORCID,Watkins Matthew5ORCID,Tigwell Garreth W.5ORCID,Huenerfauth Matt5ORCID

Affiliation:

1. Tulane University, USA

2. Computing and Information Science, Rochester Institute of Technology, USA

3. National Institute for the Deaf, Rochester Institute of Technology, USA

4. New Jersey Institute of Technology, USA

5. School of Information, Rochester Institute of Technology, USA

Abstract

People learning American Sign Language (ASL) and practicing their comprehension skills will often encounter complex ASL videos that may contain unfamiliar signs. Existing dictionary tools require users to isolate a single unknown sign before initiating a search by selecting linguistic properties or performing the sign in front of a webcam. This process presents challenges in extracting and reproducing unfamiliar signs, disrupting the video-watching experience, and requiring learners to rely on external dictionaries. We explore a technology that allows users to select and view dictionary results for one or more unfamiliar signs while watching a video. We interviewed 14 ASL learners to understand their challenges in understanding ASL videos, strategies for dealing with unfamiliar vocabulary, and expectations for an in-situ dictionary system. We then conducted an in-depth analysis with 8 learners to examine their interactions with a Wizard-of-Oz prototype during a video comprehension task. Finally, we conducted a comparative study with 6 additional ASL learners to evaluate the speed, accuracy, and workload benefits of an embedded dictionary search feature within a video player. Our tool outperformed a baseline in the form of an existing online dictionary across all three metrics. The integration of a search tool and span selection offered advantages for video comprehension. Our findings have implications for designers, computer vision researchers, and sign language educators.

Publisher

Association for Computing Machinery (ACM)

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