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Technological Analysis of ECG Classification based on Machine Learning and Deep Learning Techniques

机译:基于机器学习的ECG分类技术分析和深度学习技术

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The analysis and processing of the Electrocardiogram (ECG) reveals key information about the condition of the heart. The detection of the QRS wave segment in the ECG signal is crucial as it is the start of extracting relevant features for the classification of heart arrhythmia. This paper presents algorithms for each block in the typical structure of an ECG classification system with the recent researches, advantages and limitations of the presented algorithms. Some including adaptive filter, wavelet Transform ANN, GWO (Grey Wolf Optimization), deep residual Convolutional Neural Networks (DRCNN), SVM.
机译:心电图(ECG)的分析和处理揭示了关于心脏状况的关键信息。 ECG信号中的QRS波段的检测至关重要,因为它是提取心脏心律失常分类的相关特征的开始。本文介绍了ECG分类系统典型结构中的每个块的算法,其近期的算法的优点和局限性。一些包括自适应滤波器,小波变换ANN,GWO(灰狼优化),深度残余卷积神经网络(DRCNN),SVM。

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