Novel SVM and K-NN Classifier Based Machine Learning Technique for Epileptic Seizure Detection

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Gowrishankar K., M. V, S. R, D. S., C. Ang
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引用次数: 0

Abstract

An EEG signal is used for capturing the signals from the brain, which helps in localization of epileptogenic region, thereby which plays a vital role for a successful surgery. The focal and non-focal signals are obtained from the epileptogenic region and normal region respectively. The localization of epileptic seizure with the help of focal signal is necessary while detecting seizures. Hence, the present article provides detailed analysis of EEG signals. The Focal and Non-focal signals are decomposed using EMD-DWT. A combination of EMD-DWT decomposition method in accordance with log-energy entropy gives an efficient accuracy in comparison to other entropy in differentiating the Focal from Non-focal signals. The extracted features are subjected to SVM and KNN classifiers whose performance will be calculated and verified with respect to accuracy, sensitivity and specificity. At the end, it will be shown that KNN produces the highest accuracy when compared to SVM classifier.
基于支持向量机和K-NN分类器的癫痫发作检测新方法
EEG信号用于捕获来自大脑的信号,这有助于定位致痫区域,从而对成功的手术起着至关重要的作用。局灶性和非局灶性信号分别来自致痫区和正常区。在检测癫痫发作时,有必要借助局灶信号定位癫痫发作。因此,本文对脑电信号进行了详细的分析。使用EMD-DWT对聚焦和非聚焦信号进行分解。与其他熵相比,根据对数能量熵的EMD-DWT分解方法的组合在区分聚焦信号和非聚焦信号方面提供了有效的准确性。对提取的特征进行SVM和KNN分类器处理,计算和验证它们在准确性、敏感性和特异性方面的性能。最后,将表明与SVM分类器相比,KNN产生了最高的精度。
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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