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Classification of ECG Signals Using Extreme Learning Machine

机译:使用极限学习机对心电信号进行分类

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An Electrocardiogram or ECG is an electrical recording of the heart and is used in the investigation of heart disease. This ECG can be classified as normal and abnormal signals. The classification of the ECG signals is presently performed with the support vector machine. The generalization performance of the SVM classifier is not sufficient for the correct classification of ECG signals. To overcome this problem the ELM classifier is used which works by searching for the best value of the parameters that tune its discriminant function, and upstream by looking for the best subset of features that feed the classifier. The experiments were conducted on the ECG data from the Physionet arrhythmia database to classify five kinds of abnormal waveforms and normal beats. In this paper a thorough experimental study was done to show the superiority of the generalization capability of the Extreme Learning Machine (ELM) is presented and compared with support vector machine (SVM) approach in the automatic classification of ECG beats. In particular, the sensitivity of the ELM classifier is tested and that is compared with SVM combined with two classifiers, they are the k-nearest neighbor classifier (kNN) and the radial basis function neural network classifier (RBF), with respect to the curse of dimensionality and the number of available training beats. The obtained results clearly confirm the superiority of the ELM approach as compared to traditional classifiers.
机译:心电图或心电图是心脏的电记录,用于心脏病调查。此ECG可分为正常信号和异常信号。目前,心电信号的分类是用支持向量机进行的。 SVM分类器的泛化性能不足以正确分类ECG信号。为了克服此问题,使用了ELM分类器,该分类器通过搜索调整其判别函数的参数的最佳值来工作,而在上游则通过查找为分类器提供信息的最佳特征子集来工作。对来自Physionet心律失常数据库的ECG数据进行了实验,以对五种异常波形和正常搏动进行分类。本文进行了全面的实验研究,以显示提出的极限学习机(ELM)泛化能力的优越性,并将其与支持向量机(SVM)方法进行ECG搏动的自动分类。特别是,对ELM分类器的敏感性进行了测试,并与结合了两个分类器的SVM进行了比较,这两个分类器分别是k最近邻分类器(kNN)和径向基函数神经网络分类器(RBF)(相对于诅咒)维度和可用训练拍数。与传统分类器相比,所获得的结果清楚地证实了ELM方法的优越性。

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