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EEGs Feature Extraction by Multi-Level DWT with Different Numbers of Principal Components

机译:EEGS特征通过多级DWT提取,具有不同数量的主要组件

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An electroencephalogram (EEG) is a measure used to record the electrical activity in the brain by attaching electrodes to the patient's scalp. An Epileptic seizure is a result of anomalous electrical activity in the brain, which is usually detected by EEG signals. In this work, we proposed a feature extraction method using different DWT levels and different numbers of principal components for the classification of seizure and normal EEG signals. First features are extracted from the different DWT levels the results then are used as an input to the PCA in order to reduce their dimension. As a dimensional reduction process, the different number of PCs are tested and evaluated using SVM classifier. The experimental results show that the use of SO-PCs obtains better result when it compared to the other number of PCs which reaches 100% in term accuracy and F-measure. In addition, the classification rates achieved in this research outperform several numbers of existent EEG seizure detection techniques published in the literature.
机译:脑电图(EEG)是用于通过将电极连接到患者的头皮的电极来记录大脑中的电活动的措施。癫痫癫痫发作是大脑中异常电活动的结果,其通常由EEG信号检测。在这项工作中,我们提出了一种使用不同DWT水平的特征提取方法和不同数量的主组件,用于癫痫发作和正常EEG信号的分类。从不同的DWT级别提取第一个特征,结果将结果用作PCA的输入,以减小其尺寸。作为尺寸减少过程,使用SVM分类器测试和评估不同数量的PC。实验结果表明,当其与术语准确度和F测量相比,使用SO-PC的使用获得更好的结果。此外,本研究中实现的分类率优于文献中公布的几个存在的脑电图癫痫发布检测技术。

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