PCA and SVM Technique for Epileptic Seizure Classification

Mohammad Asif Raibag, J. V. Franklin
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Abstract

In India we have shortage of skilled Neuro-Physicians who can correctly and timely analyze the complicated features of electroencephalogram (EEG) signal which is critical in epilepsy diagnosis, and hence developing a reliable seizure classification model remains a challenging task. A Support Vector Machine (SVM)-based mechanism is proposed in this paper for classification of epileptic seizures from EEG recordings of brain activity. Certain relevant features are selected from time-frequency domain EEG recordings (TFD). Principal Component Analysis (PCA) technique is applied to improve the performance of the model and for classification SVM classifier with different kernels is applied. According to the results, the proposed PCA-SVM radial basis kernel approach is capable of improving epilepsy classification, as made evident by the results, which show an accuracy of 96.6% for normal subject data versus epileptic data. The performance with other parameters too show promising results hence the proposed SVM-RBF model achieves robust classification for epilepsy.
基于PCA和SVM的癫痫发作分类
在印度,我们缺乏熟练的神经内科医生,他们能够正确及时地分析脑电图信号的复杂特征,这对癫痫的诊断至关重要,因此建立一个可靠的癫痫发作分类模型仍然是一项具有挑战性的任务。本文提出了一种基于支持向量机(SVM)的基于脑电活动记录的癫痫发作分类机制。从时频域EEG记录(TFD)中选取一定的相关特征。采用主成分分析(PCA)技术提高模型的性能,并采用不同核的支持向量机分类器进行分类。结果表明,所提出的PCA-SVM径向基核方法能够提高癫痫分类的准确率,对正常受试者数据的准确率为96.6%。在其他参数下,SVM-RBF模型的分类效果也很好,实现了对癫痫的鲁棒分类。
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