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Identification of epileptic seizures using Hilbert transform and learning vector quantization based classifier

机译:使用Hilbert变换和学习矢量量化癫痫发作的癫痫发作的鉴定

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This work describes the development of a computer-aided diagnostic model for the analysis and classification of EEG signals. The main objective of this study is to achieve an accurate as well as timely classification model which would help in the detection of epileptic EEG signals. This is very important as the patient suffering from epilepsy should receive proper medical attention hours before seizures occur. Thus the importance of fast and accurate analysis of different biomedical signals is growing at an ever increasing rate. In this study we have developed a feature extractor which when integrated with a classifier based on the Learning Vector Quantization (LVQ) algorithm classifies EEG signals into two categories viz. healthy and epileptic. The feature extractor uses the Hilbert Transform to convert real-time series EEG signals into an analytic signal which makes it easier to perform the requisite analysis. 5 sets of EEG signals from a publicly available EEG time series database were used to develop the proposed model on MATLAB. The average accuracy of classification of our proposed methodology is obtained to be as high as 89.31%.
机译:这项工作描述了用于分析和分类EEG信号的计算机辅助诊断模型的开发。本研究的主要目的是实现准确的以及及时的分类模型,这将有助于检测癫痫脑电图信号。这是非常重要的,因为患有癫痫的患者应该在癫痫发作前的适当医疗注意事项。因此,对不同生物医学信号的快速和准确分析的重要性以不断增加的速度增长。在这项研究中,我们开发了一种特征提取器,该特征提取器在基于学习矢量量化(LVQ)算法基于分类器(LVQ)算法将EEG信号分类为两类viz时。健康和癫痫。该特征提取器使用HILBERT变换将实时序列EEG信号转换为分析信号,这使得更容易执行必要的分析。来自公共可用EEG时间序列数据库的5组EEG信号用于在MATLAB上开发所提出的模型。获得所提出的方法的分类的平均准确性获得高达89.31%。

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