基于小波变换和反向传播神经网络的心电信号分类

H. Rai, A. Trivedi
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引用次数: 21

摘要

本文讨论了利用离散小波变换的反向传播神经网络对心电波形进行分类。我们选择MIT-BIH心律失常数据库,从48个1分钟记录文件中选取45个文件,其中25个文件根据每条记录的最大节拍数被认为是正常类,20个文件被认为是异常类。提出了一种利用bp神经网络对心电信号数据进行异常分类的方法。这些特征分为两类:基于小波变换的特征和作为分类器输入的心电信号的形态特征。采用反向传播神经网络(BPNN)对心电数据进行分类,并以百分比准确率衡量系统性能。对于异常样本,准确率达到100%,而对于正常ECG样本,准确率达到96%。使用BPNN分类器,系统总体准确率达到97.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG signal classification using wavelet transform and Back Propagation Neural Network
This paper addressed the use of Back Propagation Neural Network for Classification of ECG waveforms using discrete wavelet transform. We have been selected of MIT-BIH arrhythmia database and picked up 45 files out of 48 files of one minute recording where 25 files are considered as normal class and 20 files of abnormal based on Maximum number of beats present in each record. Proposed method used to classify ECG signal data for abnormal class using BPNN. The features are break up in to two classes that is DWT based features and morphological feature of ECG signal which is an input to the classifier. Back Propagation Neural Network (BPNN) was used to classify the ECG data and the system performance is measured on the basis of percentage accuracy. For the Abnormal sample 100% of accuracy is reached whereas 96% of accuracy was achieved for normal ECG sample. The overall system accuracy 97.8 % was obtained with the use of BPNN classifier.
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