Automated and Context-Aware Repair of Color-Related Accessibility Issues for Android Apps
Yuxin Zhang, Sen Chen, Lingling Fan, Chunyang Chen, Xiaohong Li

TL;DR
This paper introduces Iris, an automated, context-aware tool that effectively repairs color-related accessibility issues in Android apps, improving usability for users with disabilities and demonstrating high success and acceptance rates.
Contribution
Iris is the first automated repair method specifically designed for color-related accessibility issues in Android apps, ensuring style consistency and high repair success.
Findings
Achieves 91.38% repair success rate
High user satisfaction and positive developer feedback
9 pull requests accepted on GitHub
Abstract
Approximately 15% of the world's population is suffering from various disabilities or impairments. However, many mobile UX designers and developers disregard the significance of accessibility for those with disabilities when developing apps. A large number of studies and some effective tools for detecting accessibility issues have been conducted and proposed to mitigate such a severe problem. However, compared with detection, the repair work is obviously falling behind. Especially for the color-related accessibility issues, which is one of the top issues in apps with a greatly negative impact on vision and user experience. Apps with such issues are difficult to use for people with low vision and the elderly. Unfortunately, such an issue type cannot be directly fixed by existing repair techniques. To this end, we propose Iris, an automated and context-aware repair method to fix the…
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Taxonomy
TopicsDigital Accessibility for Disabilities
