SaIL:显著性驱动的ARIA地标注入。

Ali Selman Aydin, Shirin Feiz, Vikas Ashok, I V Ramakrishnan
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引用次数: 11

摘要

使用屏幕阅读器浏览网页是一个挑战,即使最近屏幕阅读器技术有所改进,并且越来越多地采用可访问性网络标准,即ARIA。ARIA地标,ARIA的一个重要方面,让屏幕阅读器用户快速访问网页的不同部分,使他们能够跳过不相关或冗余的内容块。然而,这些地标被web开发人员偶尔和不一致地使用,在许多情况下,甚至在许多网页中都没有。因此,我们提出了SaIL,这是一种可扩展的方法,可以自动检测网页的重要部分,然后将ARIA标记注入相应的HTML标记中,以方便快速访问这些部分。SaIL的核心概念是视觉显著性,这是通过最先进的深度学习模型确定的,该模型是根据从浏览网页的正常用户收集的视线跟踪数据进行训练的。我们介绍了一项试点研究的结果,该研究证明了SaIL在减少使用屏幕阅读器浏览网页所花费的时间和精力方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SaIL: Saliency-Driven Injection of ARIA Landmarks.

Navigating webpages with screen readers is a challenge even with recent improvements in screen reader technologies and the increased adoption of web standards for accessibility, namely ARIA. ARIA landmarks, an important aspect of ARIA, lets screen reader users access different sections of the webpage quickly, by enabling them to skip over blocks of irrelevant or redundant content. However, these landmarks are sporadically and inconsistently used by web developers, and in many cases, even absent in numerous web pages. Therefore, we propose SaIL, a scalable approach that automatically detects the important sections of a web page, and then injects ARIA landmarks into the corresponding HTML markup to facilitate quick access to these sections. The central concept underlying SaIL is visual saliency, which is determined using a state-of-the-art deep learning model that was trained on gaze-tracking data collected from sighted users in the context of web browsing. We present the findings of a pilot study that demonstrated the potential of SaIL in reducing both the time and effort spent in navigating webpages with screen readers.

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