基于VGG16网络的眼动数据检测儿童阅读障碍

Ivan A. Vajs, V. Ković, Tamara Papić, A. Savić, M. Janković
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引用次数: 8

摘要

考虑到阅读障碍对学习成绩的负面影响,阅读障碍的诊断和治疗非常重要。在本文中,基于收集的眼动追踪数据,开发了一个深度卷积神经网络来检测7-13岁儿童的阅读障碍。孩子们阅读了一篇用塞尔维亚语写的13种不同颜色的文本(包括背景和覆盖颜色的变化),在试验期间收集的原始凝视坐标被格式化为彩色图像,并用于训练基于VGG16架构的深度学习模型。评估了卷积神经网络的几种配置,以及几种试验分割配置,以提供最佳的整体结果。采用受试者交叉验证对该方法进行评估,准确度达到87%。研究结果表明,将卷积神经网络与视觉编码相结合的眼动追踪数据在阅读障碍检测中具有良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dyslexia detection in children using eye tracking data based on VGG16 network
Considering the negative impact dyslexia has on school achievements, dyslexia diagnosis and treatment are found to be of great importance. In this paper, a deep convolutional neural network was developed to detect dyslexia in children ages 7–13, based on gathered eye tracking data. The children read a text written in Serbian on 13 different color configurations (including background and overlay color variations) and the raw gaze coordinates gathered during the trials were formatted into colored images and used to train a deep learning model based on the VGG16 architecture. Several configurations of the convolutional neural network were evaluated, as well as several trial segmentation configurations in order to provide the best overall result. The method was evaluated using subject-wise cross-validation and an accuracy of 87% was achieved. The obtained results show that a combination of convolutional neural network and visual encoding of the eye tracking data shows promising results in dyslexia detection with minimal preprocessing.
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