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首页> 外文期刊>International Journal of High Performance Computing and Networking >Wavelet-based arrhythmia detection of ECG signal and performance measurement using diverse classifiers
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Wavelet-based arrhythmia detection of ECG signal and performance measurement using diverse classifiers

机译:基于小波的心律失常检测ECG信号和使用不同分类器的性能测量

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The diagnosis of cardiovascular arrhythmias needs accurate predictive models to test abnormalities in the functioning of the heart. The proposed work manifests a comparative analysis of different classifiers like K-nearest neighbour (KNN), support vector machine (SVM), back propagation neural network (BPNN), feed forward neural network (FFNN) and radial basis function neural network (RBFNN) with discrete wavelet transform (DWT) to assess an Electrocardiogram (ECG). For DWT, different wavelets such as Daubechies, Haar, Symlet, Biorthogonal, reverse Biorthogonal and Coiflet are used for feature extraction and their performances are compared. SVM and RBFNN have shown 100% accuracy with reduced dataset testing time of 0.0025 s and 0.0174 s, respectively, whereas BPNN, FFNN and KNN provided 95.5%, 97.7% and 84.0% accuracy with 0.0176 s, 0.0189 s and 0.0033 s of testing time, respectively. This proposed scheme builds an efficient selection of wavelet with best-suited classifier for timely perusal of cardiac disturbances.
机译:心血管心律失常的诊断需要准确的预测模型来测试心脏功能的异常。所提出的工作表现出对不同分类器的比较分析,如k最近邻(knn),支持向量机(SVM),后传播神经网络(BPNN),馈送前神经网络(FFNN)和径向基函数神经网络(RBFNN)采用离散小波变换(DWT)来评估心电图(ECG)。对于DWT,使用诸如Daubechies,HaAR,Syplet,Biorthogonal,反向双正交和Coiflet的不同小波用于特征提取,并且比较它们的性能。 SVM和RBFNN分别显示了100%的精度,随着0.0025秒和0.0174秒的降低的数据集测试时间,而BPNN,FFNN和KNN提供95.5%,97.7%和84.0%的准确度,精度为0.0176 S,0.0189 S和0.0033S的测试时间, 分别。该提出的方案建立了具有最适合分类器的小波选择,用于及时覆盖心脏障碍。

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