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A case study on Discrete Wavelet Transform based Hurst exponent for epilepsy detection

机译:基于离散小波变换的脑卒中脑卒中检测的案例研究

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摘要

Epileptic seizures are manifestations of epilepsy. Careful analysis of EEG records can provide valuable insight and improved understanding of the mechanism causing epileptic disorders. The detection of epileptic form discharges in EEG is an important component in the diagnosis of epilepsy. As EEG signals are non-stationary, the conventional frequency and time domain analysis does not provide better accuracy. So, in this work an attempt has been made to provide an overview of the determination of epilepsy by implementation of Hurst exponent (HE)-based discrete wavelet transform techniques for feature extraction from EEG data sets obtained during ictal and pre ictal stages of affected person and finally classifying EEG signals using SVM and KNN Classifiers. The The highest accuracy of 99% is obtained using SVM.
机译:癫痫发作是癫痫的表现。 仔细分析EEG记录可以提供有价值的见解和改善对癫痫疾病的机制的理解。 在脑电图中检测癫痫症的癫痫症排出是癫痫诊断的重要组成部分。 由于EEG信号是非静止的,传统频率和时域分析不提供更好的精度。 因此,在这项工作中,已经尝试通过实施来自ICTAL和受影响的人的IEG数据集的特征提取的特征提取来确定癫痫的测定概述。 最后分类EEG信号使用SVM和KNN分类器。 使用SVM获得99%的最高精度。

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