用数据集和机器学习方法对家用电器界面元素进行分类和增强,以支持视障人士

Hanna Tschakert, Florian Lang, Markus Wieland, Albrecht Schmidt, Tonja Machulla
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引用次数: 1

摘要

许多现代家用电器对视障人士来说操作起来很有挑战性。低对比度的设计和不充分的触觉反馈使得区分界面元素和识别它们的功能变得困难。增强现实(AR)可以用来在视觉上突出这些元素,并为残障人士提供帮助。为了实现这一目标,我们(1)创建了一个由13702张来自家用电器和手动标记的控制元素的接口图像组成的数据集;(2)训练神经网络识别控制元素,区分PushButton、TouchButton、Knob、Slider和Toggle;(3)针对这些元素设计了各种对比度丰富、视觉简单的AR增强。研究结果以基于屏幕的辅助AR应用程序的形式实现,我们在六名视力障碍患者的用户研究中对其进行了测试。参与者能够识别出在没有辅助应用程序的情况下难以察觉的控制元素。这种方法很受欢迎,特别是因为它有可能使自己熟悉新的设备。界面的自动解析和增强为视障人士与日常环境的独立交互提供了重要的一步。
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A Dataset and Machine Learning Approach to Classify and Augment Interface Elements of Household Appliances to Support People with Visual Impairment
Many modern household appliances are challenging to operate for people with visual impairment. Low-contrast designs and insufficient tactile feedback make it difficult to distinguish interface elements and to recognize their function. Augmented reality (AR) can be used to visually highlight such elements and provide assistance to people with residual vision. To realize this goal, we (1) created a dataset consisting of 13,702 images of interfaces from household appliances and manually labeled control elements; (2) trained a neural network to recognize control elements and to distinguish between PushButton, TouchButton, Knob, Slider, and Toggle; and (3) designed various contrast-rich and visually simple AR augmentations for these elements. The results were implemented as a screen-based assistive AR application, which we tested in a user study with six individuals with visual impairment. Participants were able to recognize control elements that were imperceptible without the assistive application. The approach was well received, especially for the potential of familiarizing oneself with novel devices. The automatic parsing and augmentation of interfaces provide an important step toward the independent interaction of people with visual impairments with their everyday environment.
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