Dyslexia deep clustering using webcam-based eye tracking

Mohamed Ikermane, A. E. Mouatasim
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引用次数: 0

Abstract

Dyslexia is a neurodevelopmental impairment that causes difficulties in reading and can have significant academic, social, and economic impacts. In Morocco, Dyslexia accounts for 37% of children's school failures. Early detection of dyslexia is crucial to help children reach their academic potential and prevent low self-esteem. To address this issue, a dyslexia screening tool using webcam-based eye tracking was developed for the Arabic language. The tool was tested on a dataset of 61 students from three primary schools in southern Morocco, and the results showed that using Arabic dyslexic-friendly typefaces improved reading performance, particularly for those with low reading performance. Deep clustering was used to reduce the dimensionality of the dataset, and the subjects were gathered using unsupervised k-means based on AutoEncoder output. The three clusters produced showed a significant difference in many dyslexia traits, such as the number and duration of fixations, as well as the saccade period. These findings suggest that webcam-based eye-tracking techniques have the potential to be used as an initial dyslexia diagnosis tool to assess if a child exhibits some of the typical symptoms of dyslexia and whether they should seek a professional full dyslexia diagnosis.
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基于网络摄像头的眼动追踪的阅读障碍深度聚类
阅读障碍是一种神经发育障碍,会导致阅读困难,并可能对学术、社会和经济产生重大影响。在摩洛哥,37%的儿童因诵读困难而失学。早期发现阅读障碍对于帮助孩子发挥他们的学术潜力和防止自卑至关重要。为了解决这个问题,一种使用基于网络摄像头的眼动追踪的阿拉伯语阅读障碍筛查工具被开发出来。该工具在摩洛哥南部三所小学的61名学生的数据集上进行了测试,结果表明,使用阿拉伯语阅读障碍友好型字体提高了阅读能力,特别是对那些阅读能力低下的学生。使用深度聚类来降低数据集的维数,并使用基于AutoEncoder输出的无监督k-means来收集受试者。这三个群体在许多阅读障碍特征上表现出显著差异,比如注视的数量和持续时间,以及扫视期。这些发现表明,基于网络摄像头的眼动追踪技术有可能被用作一种初步的阅读障碍诊断工具,以评估儿童是否表现出一些阅读障碍的典型症状,以及他们是否应该寻求专业的全面的阅读障碍诊断。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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