Md Khurram Monir Rabby, A. Islam, S. Belkasim, M. Bikdash
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引用次数: 7
摘要
在本研究中,提出了一种基于小波变换的特征提取方法,用于从EEG原始数据集中检测癫痫发作。该方法利用小波变换(Wavelet Transform, WT)方法将信号的癫痫和非癫痫类别划分为多个子带,并根据Petrosian分形维数(PFD)、Higuchi分形维数(HFD)和奇异值分解熵(SVDE)提取数据集的特征。通过Kruskal-Wallis测试来确定随机抽样的差异,并利用提取的特征将数据集划分为训练集和测试集,用于开发模型,以训练网络。将该方法应用于德国波恩大学的脑电图数据集。因此,在提出的方法中,神经网络(NN)、人工神经网络(ANN)、支持向量机(SVM)和卷积神经网络(CNN)被用作训练网络的初步模型。作为对所提出方法的初步分析,在Receiver Operating Characteristic (ROC)曲线中计算训练和测试曲线下面积(Area Under the Curve, AUC)来衡量现有模型的性能。初步结果表明,在提出的方法中,神经网络的性能优于神经网络、支持向量机和CNN。
Wavelet transform-based feature extraction approach for epileptic seizure classification
In this research, a wavelet transform-based feature extraction approach is proposed for the detection of epileptic seizures from the EEG raw dataset. The proposed approach uses the Wavelet Transform (WT) method to divide the seizure and non-seizure classes of signals into multiple sub-bands and extracts the features of the dataset following Petrosian Fractal Dimension (PFD), Higuchi Fractal Dimension (HFD), and Singular Value Decomposition Entropy (SVDE). The Kruskal-Wallis test is performed to determine the difference in the random sampling and the extracted features are leveraged to divide the dataset into the training and testing sets for developing the model in order to train the network. The proposed approach is applied to the EEG dataset of Bonn University. Hence, the Neural Network (NN), Artificial Neural Network (ANN), Support Vector Machine (SVM), and Convolutional Neural Network (CNN) are used as preliminary models in the proposed approach for training the networks. As a preliminary analysis of the proposed approach, the training and testing Area Under the Curve (AUC) is calculated in the Receiver Operating Characteristic (ROC) curve to measure the performances of the existing models. The primary results show that, in the proposed approach, the performance of ANN is better than NN, SVM, and CNN.