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AccessLens: Auto-detecting Inaccessibility of Everyday Objects
Kwon, Nahyun1; Lu, Qian1; Hasham Qazi, Muhammad1; Liu, Joanne1; Oh, Changhoon2; KONG SHU3; Kim, Jeeeun1
2024-05
Conference NameACM CHI Conference on Human Factors in Computing Systems
Pages963
Conference Date11 May 2024through 16 May 2024
Conference PlaceHonolulu, USA
PublisherAssociation for Computing Machinery
Abstract

In our increasingly diverse society, everyday physical interfaces often present barriers, impacting individuals across various contexts. This oversight, from small cabinet knobs to identical wall switches that can pose different contextual challenges, highlights an imperative need for solutions. Leveraging low-cost 3D-printed augmentations such as knob magnifiers and tactile labels seems promising, yet the process of discovering unrecognized barriers remains challenging because disability is context-dependent. We introduce AccessLens, an end-to-end system designed to identify inaccessible interfaces in daily objects, and recommend 3D-printable augmentations for accessibility enhancement. Our approach involves training a detector using the novel AccessDB dataset designed to automatically recognize 21 distinct Inaccessibility Classes (e.g., bar-small and round-rotate) within 6 common object categories (e.g., handle and knob). AccessMeta serves as a robust way to build a comprehensive dictionary linking these accessibility classes to open-source 3D augmentation designs. Experiments demonstrate our detector's performance in detecting inaccessible objects.

Keyword3d Assistive Design End-user Interface Object Detection
DOI10.1145/3613904.3642767
URLView the original
Language英語English
Scopus ID2-s2.0-85194881880
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Document TypeConference paper
CollectionDEPARTMENT OF COMPUTER AND INFORMATION SCIENCE
Corresponding AuthorKONG SHU
Affiliation1.Texas A&M University
2.University of Macau
3.Yonsei University
Recommended Citation
GB/T 7714
Kwon, Nahyun,Lu, Qian,Hasham Qazi, Muhammad,et al. AccessLens: Auto-detecting Inaccessibility of Everyday Objects[C]:Association for Computing Machinery, 2024, 963.
APA Kwon, Nahyun., Lu, Qian., Hasham Qazi, Muhammad., Liu, Joanne., Oh, Changhoon., KONG SHU., & Kim, Jeeeun (2024). AccessLens: Auto-detecting Inaccessibility of Everyday Objects. , 963.
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