AccessiText:自动检测Android应用程序中的文本可访问性问题

Abdulaziz Alshayban, S. Malek
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引用次数: 3

摘要

对于世界上15%的残疾人来说,可访问性可以说是最关键的软件质量属性。残疾用户越来越依赖移动应用程序来完成日常任务,这进一步强调了对无障碍软件的需求。移动操作系统,如iOS和Android,提供各种综合辅助服务,帮助残疾人完成原本很难或不可能完成的任务。然而,为了使这些辅助服务正常工作,开发者必须遵循一套最佳实践和可访问性指南,在应用中支持它们。文本缩放辅助服务(TSAS)用于弱视人群,以增加文本大小并使应用程序易于访问。然而,在不兼容的应用程序中使用TSAS可能会导致意想不到的行为,给用户带来可访问性障碍。本文提出了一种方法,一种自动测试技术,用于解决由于应用程序和TSAS之间不兼容而引起的文本可访问性问题。作为第一步,我们通过分析用户在(i) Android和iOS应用评论中报告的600多个候选问题,以及(ii)从公共Twitter账户收集的Twitter数据,确定了五种不同类型的文本可访问性。为了自动检测这些问题,approach利用UI屏幕截图和使用动态分析提取的各种元数据信息,然后应用由前面确定的不同类型的文本可访问性问题提供的各种启发式方法。通过对30个真实Android应用的评估,证实了该方法在检测文本可访问性问题上的有效性,平均准确率为88.27%,召回率为95.76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AccessiText: automated detection of text accessibility issues in Android apps
For 15% of the world population with disabilities, accessibility is arguably the most critical software quality attribute. The growing reliance of users with disability on mobile apps to complete their day-to-day tasks further stresses the need for accessible software. Mobile operating systems, such as iOS and Android, provide various integrated assistive services to help individuals with disabilities perform tasks that could otherwise be difficult or not possible. However, for these assistive services to work correctly, developers have to support them in their app by following a set of best practices and accessibility guidelines. Text Scaling Assistive Service (TSAS) is utilized by people with low vision, to increase the text size and make apps accessible to them. However, the use of TSAS with incompatible apps can result in unexpected behavior introducing accessibility barriers to users. This paper presents approach, an automated testing technique for text accessibility issues arising from incompatibility between apps and TSAS. As a first step, we identify five different types of text accessibility by analyzing more than 600 candidate issues reported by users in (i) app reviews for Android and iOS, and (ii) Twitter data collected from public Twitter accounts. To automatically detect such issues, approach utilizes the UI screenshots and various metadata information extracted using dynamic analysis, and then applies various heuristics informed by the different types of text accessibility issues identified earlier. Evaluation of approach on 30 real-world Android apps corroborates its effectiveness by achieving 88.27% precision and 95.76% recall on average in detecting text accessibility issues.
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