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Electrooculogram based blink detection to limit the risk of eye dystonia

机译:基于眼电图的眨眼检测可限制眼肌张力障碍的风险

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摘要

In this paper a system for detecting the possibility of eye dystonia, a neural disorder that causes a person to blink excessively, by eye movement analysis is proposed. The designed system counts the number of blinks for a particular time interval and thus detecting the risk of eye dystonia. Electrooculogram (EOG) signal is recorded to collect eye movement data using a laboratory developed acquisition system. Radial Basis Function(RBF) kernel Support Vector Machine (SVM) classifier and Feed forward neural network classifier is used to classify blinks from other types of eye movements using combinations of Wavelet coefficients, Autoregressive (AR) parameters and Hjorth parameters with Power Spectral Density (PSD) as signal features. A maximum average accuracy of 95.33% over all classes and participants is obtained using RBF-SVM classifier with a feature space of AR parameters of order 5 and PSD taken together.
机译:本文提出了一种通过眼动分析检测眼肌张力障碍的可能性的系统,眼肌张力障碍是一种导致人过度眨眼的神经疾病。设计的系统对特定时间间隔内的眨眼次数进行计数,从而检测出眼肌张力障碍的风险。使用实验室开发的采集系统记录眼电图(EOG)信号以收集眼睛运动数据。径向基函数(RBF)内核支持向量机(SVM)分类器和前馈神经网络分类器用于结合小波系数,自回归(AR)参数和Hjorth参数与功率谱密度( PSD)作为信号特征。使用RBF-SVM分类器将AR参数的特征空间和PSD的特征空间合在一起,可获得所有类别和参与者的最大平均准确度为95.33%。

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