推荐移动设备的无障碍功能

Jason Wu, G. Reyes, Samuel White, Xiaoyi Zhang, Jeffrey P. Bigham
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引用次数: 4

摘要

已经开发了许多可访问性特性,以增加人们访问计算设备的对象和方式。这些功能越来越多地被包括在流行的平台中,例如苹果iOS、谷歌Android和微软Windows。尽管它们具有改善计算体验的潜力,但许多用户并不知道这些特性,也不知道它们的哪些组合可以使他们受益。在这项工作中,我们首先通过在线调查100名参与者(包括25名老年人)来量化这个问题,了解他们对可访问性和他们可以从中受益的功能的了解,显示出非常低的意识。我们开发了四个原型,涵盖了许多可访问性类别(例如,视觉、听觉、运动),它们包含了适用于可访问性推荐的信号和检测策略。一项针对20名老年人的研究的初步结果表明,主动推荐是一种很有前途的方法,可以更好地将用户与他们可能受益的无障碍功能配对。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Recommending Accessibility Features on Mobile Devices
Numerous accessibility features have been developed to increase who and how people can access computing devices. Increasingly, these features are included as part of popular platforms, e.g., Apple iOS, Google Android, and Microsoft Windows. Despite their potential to improve the computing experience, many users are unaware of these features and do not know which combination of them could benefit them. In this work, we first quantified this problem by surveying 100 participants online (including 25 older adults) about their knowledge of accessibility and features that they could benefit from, showing very low awareness. We developed four prototypes spanning numerous accessibility categories (e.g., vision, hearing, motor), that embody signals and detection strategies applicable to accessibility recommendation in general. Preliminary results from a study with 20 older adults show that proactive recommendation is a promising approach for better pairing users with accessibility features they could benefit from.
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