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Feature extraction of epilepsy EEG using discrete wavelet transform

机译:基于离散小波变换的癫痫脑电特征提取

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Epilepsy is one of the most common a chronic neurological disorders of the brain that affect millions of the world's populations. It is characterized by recurrent seizures, which are physical reactions to sudden, usually brief, excessive electrical discharges in a group of brain cells. Hence, seizure identification has great importance in clinical therapy of epileptic patients. Electroencephalogram (EEG) is most commonly used in epilepsy detection since it includes precious physiological information of the brain. However, it could be a challenge to detect the subtle but critical changes included in EEG signals. Feature extraction of EEG signals is core trouble on EEG-based brain mapping analysis. This paper will extract ten features from EEG signal based on discrete wavelet transform (DWT) for epilepsy detection. These numerous features will help the classifiers to achieve a good accuracy when utilize to classify EEG signal to detect epilepsy. Subsequently, the results have illustrated that DWT has been adopted to extract various features i.e., Entropy, Min, Max, Mean, Median, Standard deviation, Variance, Skewness, Energy and Relative Wave Energy (RWE).
机译:癫痫病是影响世界上数百万人口的最常见的慢性神经系统疾病之一。它的特征是反复发作,是对一组脑细胞突然(通常是短暂的)过度放电的物理反应。因此,癫痫发作的识别在癫痫患者的临床治疗中具有重要意义。脑电图(EEG)最常用于癫痫病检测,因为它包括大脑的宝贵生理信息。然而,检测脑电信号中包含的细微但关键的变化可能是一个挑战。脑电信号的特征提取是基于脑电图的脑图分析的核心问题。本文将基于离散小波变换(DWT)从脑电信号中提取十个特征进行癫痫检测。当利用这些功能对脑电信号进行分类以检测癫痫时,这些分类器将帮助分类器达到良好的准确性。随后,结果表明,已采用DWT提取各种特征,即熵,最小,最大,均值,中位数,标准差,方差,偏度,能量和相对波能(RWE)。

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