从EOG信号中检测阅读运动

F. Latifoğlu, Ramis Ileri, E. Demirci, Çiğdem Gülüzar Altıntop
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引用次数: 9

摘要

本文旨在分析阅读过程中背眼运动(检索单词/重读)和跳行过程中记录的眼电信号。两种情况的特征是EOG信号的振幅波动较大。为此,我们在阅读10名志愿者的文本时同时记录了EOG信号,并分析了阅读时跳底线和背部运动引起的EOG信号变化。对这些信号的分类可能有助于开发一种新的方法,用于早期和快速诊断各种阅读障碍(例如阅读障碍)。本研究包括两个主要过程;特征提取与分类。首先,从记录的EOG信号中确定两个特征,以确定从EOG信号中检索单词/重读。然后将这些信号作为输入输入到各种分类器中。通过计算准确率、灵敏度、特异性、精密度和F测度来评价分类器的性能。所有分类器都获得了高性能的总体分类结果,随机森林和k-NN分类器使用的分类器的最高准确率为98%。结果表明,该方法对眼电信号的眼动分类具有重要的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Reading Movement from EOG Signals
In this paper, it is aimed to analysis of Electrooculography (EOG) signals recorded during the back to eye movement (retrieving words/re-reading) and skipping lines while reading. Two situations are characterized by large amplitude fluctuations in EOG signals. For this aim, EOG signals were recorded simultaneously while reading a text from 10 volunteers and changes in EOG signals caused by jumping a bottom line and back movements as reading were analyzed. The classification of these signals may allow the development of a new method for early and rapid diagnosis of various reading disorders (for example dyslexia). This study consists of two main processes; feature extraction and classification. Firstly, two features were determined from the recorded EOG signals for determination of retrieving words/re-reading from EOG signal. Then these signals were applied as input to various classifiers. The classifier performances were evaluated by calculating accuracy, sensitivity, specificity, precision and F measure. Overall classification results were obtained with high performance from all classifiers, and the highest accuracy of the classifiers used was 98% for each of the Random Forest and k-NN classifiers. The results show that this proposed method has an important performance for classification of eye movements from EOG signals.
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