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Cross-wavelet transform as a new prototype for classification of EEG signals

机译:交叉小波变换作为脑电信号分类的新原型

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The main objective of this paper is to develop a computerised method that could be used to classify electroencephalogram (EEG) signals automatically and potentially help doctors, researchers and other medical personnel to detect epileptic signals accurately from a subject's EEG recordings. In this paper, a Cross-Wavelet Transform (XWT) based feature extraction algorithm coupled with a few learning based classification techniques, like the Probabilistic Neural Network (PNN), the Least-Square Support Vector Machine (LS-SVM) and the Learning Vector Quantization (LVQ) is proposed to classify the EEG signals and compare the accuracy of the identification of epileptic activities. Benchmark EEG signals from the Bonn University are utilised to classify the EEG signals into the binary classes viz. Normal and Epileptic subjects. Also, a ternary classification model with categories being signals from healthy volunteers with their eyes open and eyes closed, signals from epileptic subjects during the seizure-free interval measured from within and outside the seizure generating zone of the brain and signals from epileptic subjects experiencing seizures has been put forward. The performance of the above-mentioned three supervised classification algorithms is compared by using the same training and testing datasets during stimulation. The accuracy of classification is obtained to be approximately 99%, 97.5%, 98.5% and 98.2%, 96.4%, 94% for binary and multiclass classification, respectively, using the PNN, LS-SVM and LVQ based classifier.
机译:本文的主要目的是开发一种计算机化的方法,该方法可用于自动分类脑电图(EEG)信号,并有可能帮助医生,研究人员和其他医务人员从受试者的EEG记录中准确检测出癫痫信号。在本文中,基于交叉小波变换(XWT)的特征提取算法与一些基于学习的分类技术相结合,例如概率神经网络(PNN),最小二乘支持向量机(LS-SVM)和学习向量提出了量化(LVQ)以对EEG信号进行分类并比较癫痫活动识别的准确性。来自波恩大学的基准脑电信号被用于将脑电信号分类为二元类。正常和癫痫患者。此外,三元分类模型的类别包括:健康志愿者睁开眼睛和闭眼的信号,在癫痫发作间隔内从大脑癫痫发作区的内部和外部测量的癫痫受试者的信号以及癫痫发作受试者的信号已经提出了。通过在刺激期间使用相同的训练和测试数据集,比较了上述三种监督分类算法的性能。使用基于PNN,LS-SVM和LVQ的分类器,对于二元分类和多分类,分类的准确性分别约为99%,97.5%,98.5%和98.2%,96.4%,94%。

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