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A nearest neighbor based approach for classifying epileptiform EEG using nonlinear DWT features

机译:基于最近的基于邻的邻脑脑电图使用非线性DWT特征方法

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Epilepsy is a pathological condition characterized by spontaneous, unforeseeable occurrence of seizures, during which the perception or behaviour of a person is altered, if not disturbed. In prediction of occurance of seizures, better classification accuracies have been reported with the use of non linear features and hence they have been estimated from wavelet transformed Electro Encephalo Graph (EEG) data and used to train k Nearest Neighbour (kNN) classifier to classify the EEG into normal, background and epileptic classes. Very good accuracy performance of nearly 100% has been reported from the current work.
机译:癫痫是一种特征的病理状况,其特征在于自发性,不可预见的癫痫发作,在此期间,如果没有受到干扰,则会改变人的感知或行为。在预测癫痫发作的发生中,通过使用非线性特征报告了更好的分类精度,因此他们已经从小波变换电脑图(EEG)数据估计并用于训练K最近邻(knn)分类器来分类脑电图到正常,背景和癫痫课程。目前的工作报告了非常好的准确性表现近100%。

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