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Computer aided technique for Epilepsy classification using cross wavelet transform and RBF-kernel based support vector machine

机译:基于交叉小波变换和基于RBF核的支持向量机的癫痫分类计算机辅助技术

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Fast and automatic identification and analysis of different bio-medical signals is of growing importance nowadays. This necessitates the application of different computer aided diagnosis methods to interpret, distinguish and analyze various signals and images. In this paper, we have proposed a novel method to identify the Epilepsy from EEG signals. RBF Kernel based Support Vector Machine (SVM) is employed for automatic classification of normal (with closed eyes) and epilepsy patients from their Electroencephalography or EEG signals. Six features are extracted from EEG signals using cross-wavelet transform. Cross-wavelet Transform has not been used before for EEG signal classification. These features are used to train SVM performing binary classification. The average accuracy of SVM based binary classifier is obtained as high as 84.90% in 10-fold cross-validation.
机译:如今,快速,自动地识别和分析不同的生物医学信号变得越来越重要。这就需要应用不同的计算机辅助诊断方法来解释,区分和分析各种信号和图像。在本文中,我们提出了一种从脑电信号中识别癫痫病的新方法。基于RBF内核的支持向量机(SVM)用于根据脑电图或EEG信号对正常(闭眼)和癫痫患者进行自动分类。使用交叉小波变换从脑电信号中提取六个特征。交叉小波变换以前没有用于脑电信号分类。这些功能用于训练SVM执行二进制分类。在10倍交叉验证中,基于SVM的二进制分类器的平均准确性高达84.90%。

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