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COMPARISON OF ICTAL AND INTERICTAL EEG SIGNALS USING FRACTAL FEATURES

机译:使用分形特征比较ICTAL信号和ICT信号

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摘要

The feature analysis of epileptic EEG is very significant in diagnosis of epilepsy. This paper introduces two nonlinear features derived from fractal geometry for epileptic EEG analysis. The features of blanket dimension and fractal intercept are extracted to characterize behavior of EEG activities, and then their discriminatory power for ictal and interictal EEGs are compared by means of statistical methods. It is found that there is significant difference of the blanket dimension and fractal intercept between interictal and ictal EEGs, and the difference of the fractal intercept feature between interictal and ictal EEGs is more noticeable than the blanket dimension feature. Furthermore, these two fractal features at multiscales are combined with support vector machine (SVM) to achieve accuracies of 97.58% for ictal and interictal EEG classification and 97.13% for normal, ictal and interictal EEG classification.
机译:癫痫脑电图的特征分析对癫痫的诊断非常重要。本文介绍了从分形几何派生的两个非线性特征用于癫痫脑电图分析。提取了毯子维数和分形截距的特征来表征脑电活动的行为,然后通过统计方法比较了它们对短波和短波脑电图的区分能力。研究发现,发作间和发作间脑电图的覆盖层尺寸和分形截距存在显着差异,并且发作间和发作间脑电图之间的分形拦截特征的差异比覆盖层尺寸特征更明显。此外,在多尺度上将这两个分形特征与支持向量机(SVM)结合使用,可实现对小儿和小儿EEG分类的准确性为97.58%,对于正常,小儿和小儿EEG分类的准确性为97.13%。

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