EEG-based automatic epilepsy diagnosis using the instantaneous frequency with sub-band energies

Mohammad Fani, G. Azemi, B. Boashash
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引用次数: 12

Abstract

This paper presents a novel approach for classifying the electroencephalogram (EEG) signals as normal or abnormal. This method uses features derived from the instantaneous frequency (IF) and energies of EEG signals in different spectral sub-bands. Results of applying the method to a database of real signals reveal that, for the given classification task, the selected features consistently exhibit a high degree of discrimination between the EEG signals collected from healthy and epileptic patients. The analysis of the effect of window length used during feature extraction indicates that features extracted from EEG segments as short as 5 seconds achieve a high average total accuracy of 95.3%.
基于脑电图的瞬时频率子带能量癫痫自动诊断
提出了一种新的脑电图信号正常与异常分类方法。该方法利用脑电信号在不同谱子波段的瞬时频率和能量特征。将该方法应用于真实信号数据库的结果表明,对于给定的分类任务,所选择的特征在从健康患者和癫痫患者收集的脑电图信号之间一致地表现出高度的区分。对特征提取过程中窗口长度的影响分析表明,从短至5秒的脑电信号片段中提取的特征平均总准确率达到95.3%。
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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