ECG signal classification using support vector machine based on wavelet multiresolution analysis

Ayman Rabee, I. Barhumi
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引用次数: 27

Abstract

In this paper we propose a highly reliable ECG analysis and classification approach using discrete wavelet transform multiresolution analysis and support vector machine (SVM). This approach is composed of three stages, including ECG signal preprocessing, feature selection, and classification of ECG beats. Wavelet transform is used for signal preprocessing, denoising, and for extracting the coefficients of the transform as features of each ECG beat which are employed as inputs to the classifier. SVM is used to construct a classifier to categorize the input ECG beat into one of 14 classes. In this work, 17260 ECG beats, including 14 different beat types, were selected from the MIT/BIH arrhythmia database. The average accuracy of classification for recognition of the 14 heart beat types is 99.2%.
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基于小波多分辨率分析的支持向量机心电信号分类
本文提出了一种基于离散小波变换、多分辨率分析和支持向量机(SVM)的高可靠性心电分析与分类方法。该方法由心电信号预处理、特征选择和心电拍频分类三个阶段组成。小波变换用于信号预处理,去噪,并提取变换系数作为每个心电拍的特征,这些特征被用作分类器的输入。使用支持向量机构建分类器,将输入的心电拍分为14类。在这项工作中,从MIT/BIH心律失常数据库中选择了17260次心电图,包括14种不同的心跳类型。对14种心跳类型的分类识别平均准确率为99.2%。
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