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Time domain analysis of epileptic EEG for seizure detection

机译:癫痫性脑电图的时域分析

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Epilepsy is an infirmity which affects the brain causing repeated seizures. An automatic novel method is used for analyzing the EEG signal and for detecting epileptic seizure activity. The proposed method is tested on a publicly available dataset and it uses two time domain features namely line length and energy. Classification algorithms-1) Quadratic discriminant analysis (QdA), 2) K-Nearest Neighbour (KNN) and 3) Linear discriminant analysis (LDA) are used for classifying the EEG signals, and their performance is evaluated by measuring sensitivity, specificity and accuracy. The results of the three classifiers are compared and KNN classifier shows better results than the other two classifiers. An overall accuracy from 94.4% to 100% is achieved by the KNN classifier and the high classification results obtained verified the success of the method.
机译:癫痫病是一种影响大脑的疾病,会引起反复发作。一种自动的新颖方法用于分析脑电信号和检测癫痫发作活动。该方法在一个公开的数据集上进行了测试,它使用了两个时域特征,即线长和能量。分类算法-1)二次判别分析(QdA),2)K最近邻(KNN)和3)线性判别分析(LDA)用于对EEG信号进行分类,并通过测量灵敏度,特异性和准确性来评估其性能。比较了三个分类器的结果,KNN分类器显示出比其他两个分类器更好的结果。 KNN分类器可实现94.4%至100%的总体准确度,并且获得的高分类结果证明了该方法的成功。

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