Engineering Adaptive Information Graphics for Disabled Communities: A Case Study with Public Space Indoor Maps
January 11, 2024 Β· Declared Dead Β· π arXiv.org
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Authors
Anuradha Madugalla, Yutan Huang, John Grundy, Min Hee Cho, Lasith Koswatta Gamage, Tristan Leao, Sam Thiele
arXiv ID
2401.05659
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.SE
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Most software applications contain graphics such as charts, diagrams and maps. Currently, these graphics are designed with a ``one size fits all" approach and do not cater to the needs of people with disabilities. Therefore, when using software with graphics, a colour-impaired user may struggle to interpret graphics with certain colours, and a person with dyslexia may struggle to read the text labels in the graphic. Our research addresses this issue by developing a framework that generates adaptive and accessible information graphics for multiple disabilities. Uniquely, the approach also serves people with multiple simultaneous disabilities. To achieve these, we used a case study of public space floorplans presented via a web tool and worked with four disability groups: people with low vision, colour blindness, dyslexia and mobility impairment. Our research involved gathering requirements from 3 accessibility experts and 80 participants with disabilities, developing a system to generate adaptive graphics that address the identified requirements, and conducting an evaluation with 7 participants with disabilities. The evaluation showed that users found our solution easy to use and suitable for most of their requirements. The study also provides recommendations for front-end developers on engineering accessible graphics for their software and discusses the implications of our work on society from the perspective of public space owners and end users.
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