From Struggle to Success: Context-Aware Guidance for Screen Reader Users in Computer Use

要旨

Equal access to digital technologies is critical for education, employment, and social participation. However, mainstream interfaces are visually oriented, creating steep learning curves and frequent obstacles for screen reader users, and limiting their independence and opportunities. Existing support is inadequate---tutorials mainly target sighted users, while human assistance lacks real-time availability. We introduce AskEase, an on-demand AI assistant that provides step-by-step, screen reader user-friendly guidance for computer use. AskEase manages multiple sources of context to infer user intent and deliver precise, situation-specific guidance. Its seamless interaction design minimizes disruption and reduces the effort of seeking help. We demonstrated its effectiveness through representative usage scenarios and robustness tests. In a within-subjects study with 12 screen reader users, AskEase significantly improved task success while reducing perceived workload, including physical demand, effort, and frustration. These results demonstrate the potential of LLM-powered assistants to promote accessible computing and expand opportunities for users with visual impairments.

著者
Nan Chen
Microsoft Research, Shanghai, China
Jing Lu
Fudan University, Shanghai, Shanghai, China
Zilong Wang
Microsoft Research Asia, Shanghai, China
Luna K.. Qiu
Microsoft Research, Shanghai, China
Siming Chen
Fudan University, Shanghai, China
Yuqing Yang
Microsoft Research, Shanghai, China

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Practical and Adaptive Accessibility

P1 - Room 132
7 件の発表
2026-04-15 18:00:00
2026-04-15 19:30:00