Effect of Delay in EOG Signals for Eye Movement Recognition

Rajat Rakesh Jhnujhunwala, P. Geethanjali
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引用次数: 1

Abstract

Electrooculogram (EOG) signals as a part of human-controlled interface (HCI) is proposed for detecting the relevant information in EOG with and without delay in movement of eyes. The performance of eye movements is studied with the accuracy in identification of information along with single and double blink. The algorithm consists of a simple first order derivative, threshold windowing technique, and pattern recognition. The EOG pattern recognition was studied with time domain features mean value (MV) and ensemble of MV and zero crossing (ZC). The highest average classification accuracy of 85% and 84.4% is obtained from continuous movement of eyes for three classes (L, R, DB and L, R, SB) with two time-domain features. Further, the accuracy of 90% and 88% from two eye movement detection is obtained.
眼电信号延迟对眼动识别的影响
提出将眼电图信号作为人机界面的一部分,用于检测眼电图中相关信息。在单次眨眼和双次眨眼的情况下,研究眼球运动对信息识别的准确性。该算法由简单的一阶导数、阈值窗技术和模式识别组成。利用时域特征均值(MV)和MV与零交叉(ZC)的集合对eeg模式识别进行了研究。对于具有两个时域特征的L、R、DB和L、R、SB三个类别,眼睛连续运动的分类准确率最高,分别为85%和84.4%。两眼动检测的准确率分别为90%和88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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