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引用次数: 6
摘要
自动发作检测对于癫痫患者的监测和康复非常重要,并将为挽救癫痫患者的生命开辟新的治疗可能性。近年来,人们提出并应用了许多用于癫痫自动检测的算法,其中支持向量机被证明是一种鲁棒的机器学习算法。本研究的目的是计算相关的脑电图特征,并应用特征选择算法来选择最优的特征集用于癫痫发作检测的分类方案。因此,与其他算法相比,S VM将产生更好的准确性。选择能量、相对幅值、标准差、变异系数、波动指数等有效特征,并将这些特征输入支持向量机进行训练和分类。该算法利用径向基函数核(Radial Basis Function kernel)对训练数据进行训练,得到更准确的结果。
Automated epileptic seizure detection using relevant features in support vector machines
Automatic seizure detection is very essential for monitoring and rehabilitation of epilepsy patients and will open up new treatment possibilities for saving the lives of epileptic patients. In recent years, many algorithms for the automatic seizure detection have been proposed and applied, in which Support vector machines proved to be a robust machine learning algorithm. The purpose of this study is to compute relevant EEG features and apply a feature selection algorithm to select an optimum set of features for use in a classification scheme for epileptic seizure detection. Thus S VM will thereby yield a better accuracy compared to other algorithms. Effective features such as energy, relative amplitude, standard deviation, coefficient of variation, fluctuation index etc are selected and then these features are fed into the support vector machine for training and classification. This algorithm makes use of Radial Basis Function Kernels for training data and thus obtains more accurate results.