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首页> 外文期刊>International Journal of Industrial and Manufacturing Systems Engineering >Statistical Wavelet Features, PCA, MLPNN, SVM and K-NN Based Approach for the Classification of EEG Physiological Signal
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Statistical Wavelet Features, PCA, MLPNN, SVM and K-NN Based Approach for the Classification of EEG Physiological Signal

机译:统计小波特征,基于PCA,MLPNN,SVM和K-NN的EEG生理信号分类方法

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Brain is the most complex organ amongst all the systems in human body. The study of the electrical signals produced by neural activities of human brain is called Electroencephalogram. Electroencephalogram (EEG) is a technique which is used to identify the neurological disorder of brain. Epilepsy is one of the most common neurological disorders of brain. Epilepsy needs to be detected efficiently using required EEG feature extraction such as: mean, standard deviation, median, entropy, kurtosis and skewness etc. The framework of proposed technique is an efficient EEG signal classification approach. The proposed approach is used to classify the EEG signal into two classes: epileptic seizure or not. Extraction of the features by applying Discrete Wavelet Transform (DWT) in order to decompose the EEG signals into sub-bands. These features, extracted from details and approximation coefficients of DWT sub-bands, are used as input to Principal Component Analysis (PCA). The classification is based on reducing the feature dimension using PCA and deriving the Support Vector Machine (SVM), neural network analysis (NNA) and k-nearest neighbour (K-NN). In classification of normal and epileptic, results obtained exhibited an accuracy of 100% by applying NNA and k-NN. It has been found that the computation time of NNA classifier is lesser than SVM and k-NN to provide 100% accuracy. So, the detection of an epileptic seizure based on DWT statistical features using NNA classifiers is more suitable in real time for a reliable, automatic epileptic seizure detection system to enhance the patient's care and the quality of life.
机译:大脑是人体所有系统中最复杂的器官。对人脑神经活动产生的电信号的研究称为脑电图。脑电图(EEG)是一种用于识别大脑神经系统疾病的技术。癫痫病是大脑最常见的神经系统疾病之一。癫痫病需要使用所需的EEG特征提取方法进行有效检测,例如:均值,标准差,中位数,熵,峰度和偏度等。提出的技术框架是一种有效的EEG信号分类方法。所提出的方法用于将EEG信号分为两类:是否为癫痫性发作。通过应用离散小波变换(DWT)提取特征,以便将EEG信号分解为子带。这些特征是从DWT子带的细节和近似系数中提取的,用作主成分分析(PCA)的输入。该分类基于使用PCA减少特征尺寸并推导支持向量机(SVM),神经网络分析(NNA)和k近邻(K-NN)。在正常和癫痫的分类中,通过使用NNA和k-NN,获得的结果显示出100%的准确性。已经发现,NNA分类器的计算时间比SVM和k-NN短,以提供100%的准确性。因此,使用NNA分类器基于DWT统计特征检测癫痫发作更适合于实时,可靠,自动的癫痫发作检测系统,以提高患者的护理水平和生活质量。

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