基于层次视觉分析的语义网页可访问性测试

Mohammad Bajammal, A. Mesbah
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引用次数: 9

摘要

网页可访问性,即网页应用程序的设计能够被残疾用户使用,影响着全球数百万人。虽然易访问性在传统上是一个边缘的事后考虑,在许多软件产品中经常被忽略,但它正日益成为必须满足的法律要求。虽然存在一些web可访问性测试工具,但大多数只执行基本的语法检查,而不评估残疾用户依赖的更重要的高级语义方面。因此,评估网站的可访问性在很大程度上仍然是一个需要人工输入的费力的手工过程。在本文中,我们提出了一种称为AXERAY的方法,该方法可以推断网页中各个区域的语义分组及其语义角色。我们在30个真实世界的网站上评估了我们的方法,并评估了语义推理的准确性以及检测可访问性故障的能力。结果表明,AXERAY在推断语义分组方面的平均f值达到87%,并且能够以85%的准确率检测可访问性故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Web Accessibility Testing via Hierarchical Visual Analysis
Web accessibility, the design of web apps to be usable by users with disabilities, impacts millions of people around the globe. Although accessibility has traditionally been a marginal afterthought that is often ignored in many software products, it is increasingly becoming a legal requirement that must be satisfied. While some web accessibility testing tools exist, most only perform rudimentary syntactical checks that do not assess the more important high-level semantic aspects that users with disabilities rely on. Accordingly, assessing web accessibility has largely remained a laborious manual process requiring human input. In this paper, we propose an approach, called AXERAY, that infers semantic groupings of various regions of a web page and their semantic roles. We evaluate our approach on 30 real-world websites and assess the accuracy of semantic inference as well as the ability to detect accessibility failures. The results show that AXERAY achieves, on average, an F-measure of 87% for inferring semantic groupings, and is able to detect accessibility failures with 85% accuracy.
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