Supporting the design of data visualisation for the visually impaired through reinforcement learning

Dalal Aljasem
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Abstract

The aim of the research is to present a possible approach to help visually impaired people to make decisions while interacting with a data visualisation task. The main goal is to build a Machine Learning model (i.e. Reinforcement Learning) that can predict the visual behaviour of visually impaired people when they interact with a data visualisation. This work concerns partial vision, where the damage occurred in either the peripheral vision such as in the Tunnel vision (e.g. due to Glaucoma), or in the central vision (e.g. in age-related Macular Degeneration). Getting the desired results would help in designing accessible visualisation tasks which will assist the decision-making process for the relevant users. Initially, the model will be iteratively evaluated on existing visual search tasks from the literature; the tasks will consist of both visual impairment-and normal vision-related tasks. Once the model is tested, a new visualisation task that is suitable for the visually impaired will be designed and evaluated on human participants in order to help the cycle of design, development and testing, with the ultimate goal of supporting and transforming user experience for the visual impaired. The model will be iteratively refined using more advanced methods such as Deep Reinforcement Learning (DRL). Furthermore, rational analysis framework will inform the building of the model, as it uses rationality as an empirical tool to explain how and why people adapt to their environment.
通过强化学习支持视障人士的数据可视化设计
这项研究的目的是提出一种可能的方法,帮助视障人士在与数据可视化任务互动时做出决定。主要目标是建立一个机器学习模型(即强化学习),可以预测视障人士在与数据可视化交互时的视觉行为。这项工作涉及部分视力,其中损害发生在周围视力,如隧道视力(如青光眼)或中央视力(如年龄相关性黄斑变性)。获得期望的结果将有助于设计可访问的可视化任务,这将有助于相关用户的决策过程。首先,该模型将迭代评估现有的视觉搜索任务;这些任务将包括视觉障碍和正常视觉相关的任务。一旦模型测试完成,我们将设计一个适合视障人士的新的可视化任务,并对人类参与者进行评估,以帮助设计、开发和测试的循环,最终目标是支持和改变视障人士的用户体验。该模型将使用更先进的方法(如深度强化学习(DRL))进行迭代改进。此外,理性分析框架将告知模型的构建,因为它使用理性作为经验工具来解释人们如何以及为什么适应他们的环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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