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Epileptic seizure classification using novel entropy features applied on maximal overlap discrete wavelet packet transform of EEG signals

机译:使用新型熵特征的癫痫发作分类应用于脑电信号的最大重叠离散小波包变换

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Using electroencephalography for diagnosis of seizure attacks has been in a great attention as it records abnormal electrical activities of the brain. This paper proposes a novel technique for diagnosis of epileptic seizures based on non-linear entropy features extracted from maximal overlap discrete wavelet packet transform (MODWPT) of EEG signals. Discriminative features are selected by a t-test criterion and used for the classification with two different classifiers. The proposed method is evaluated and compared to the previous methods in EEG seizure classification by using a publically available EEG dataset with different healthy and seizure suffering subjects. The obtained results show the superiority of the proposed method over the previous techniques in classification performance.
机译:由于脑电图记录了大脑的异常电活动,因此使用脑电图诊断癫痫发作一直备受关注。本文提出了一种基于从脑电信号最大重叠离散小波包变换(MODWPT)中提取的非线性熵特征的癫痫发作诊断新技术。区分性特征通过t检验标准选择,并用于通过两个不同的分类器进行分类。通过使用可公开获得的具有不同健康和癫痫发作受试者的EEG数据集,对提出的方法进行评估并与以前的方法进行脑电图癫痫发作分类。获得的结果表明,该方法在分类性能上优于现有技术。

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