Accessible PDFs: Applying Artificial Intelligence for Automated Remediation of STEM PDFs

Felix M. Schmitt-Koopmann, Elaine M. Huang, Alireza Darvishy
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引用次数: 2

Abstract

People with visual impairments use assistive technology, e.g., screen readers, to navigate and read PDFs. However, such screen readers need extra information about the logical structure of the PDF, such as the reading order, header levels, and mathematical formulas, described in readable form to navigate the document in a meaningful way. This logical structure can be added to a PDF with tags. Creating tags for a PDF is time-consuming, and requires awareness and expert knowledge. Hence, most PDFs are left untagged, and as a result, they are poorly readable or unreadable for people who rely on screen readers. STEM documents are particularly problematic with their complex document structure and complicated mathematical formulae. These inaccessible PDFs present a major barrier for people with visual impairments wishing to pursue studies or careers in STEM fields, who cannot easily read studies and publications from their field. The goal of this Ph.D. is to apply artificial intelligence for document analysis to reasonably automate the remediation process of PDFs and present a solution for large mathematical formulae accessibility in PDFs. With these new methods, the Ph.D. research aims to lower barriers to creating accessible scientific PDFs, by reducing the time, effort, and expertise necessary to do so, ultimately facilitating greater access to scientific documents for people with visual impairments.
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无障碍pdf:应用人工智能自动修复STEM pdf
有视觉障碍的人使用辅助技术,例如屏幕阅读器来浏览和阅读pdf文件。但是,这样的屏幕阅读器需要关于PDF的逻辑结构的额外信息,例如阅读顺序、标题级别和数学公式,这些信息以可读的形式描述,以便以有意义的方式浏览文档。这种逻辑结构可以用标签添加到PDF中。为PDF创建标签非常耗时,而且需要一定的意识和专业知识。因此,大多数pdf都没有标记,因此,对于依赖屏幕阅读器的人来说,它们的可读性很差或无法阅读。STEM文档由于其复杂的文档结构和复杂的数学公式而特别成问题。这些无法访问的pdf文件对希望在STEM领域学习或职业的视障人士来说是一个主要障碍,因为他们无法轻松阅读自己领域的研究和出版物。本博士的目标是将人工智能应用于文档分析,合理地自动化pdf的修复过程,并提出pdf中大型数学公式可访问性的解决方案。有了这些新方法,博士研究的目标是通过减少时间、精力和必要的专业知识,降低创建可访问的科学pdf的障碍,最终为视力障碍的人提供更多的科学文件。
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