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Analysis of ECG Signal based on Feature Fusion and Two-Fold Classification Approach

机译:基于特征融合的ECG信号分析及两倍分类方法

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Automated analysis of electrocardiogram (ECG) signal for home health care system can ensure early stage detection of cardiac arrhythmia. Most of the published works are based on advanced signal processing algorithms, large number of ECG data, complex classifiers for arrhythmia diagnosis. Hence it is difficult to implement these algorithms in portable health monitoring device. This study introduces two-fold feature selection and classification approach for easier and faster arrhythmia identification. The discrimination of different ECG data is employed by fusion of different non-linear, temporal and statistical parameters of ECG signals. The significances of individual feature in each stage of detection process are evaluated and ranked by introducing Euclidean score. Further, the eligible features are selected to construct of an integrated feature called fused feature. These fused features are efficient to accurately classify ECG beats with lesser computational burden. The proposed method is validated using MIT-BIH arrhythmia database. Experimental result of each stage classification shows better performance of the fused feature compare to the individual feature combinations. Furthermore, proposed work produces encouraging result comparing with existing work.
机译:家庭医疗保健系统的心电图(ECG)信号自动分析可以确保心律失常的早期检测。大多数已发布的作品都基于先进的信号处理算法,大量的心电图数据,复杂分类器用于心律失常诊断。因此,难以在便携式健康监控设备中实现这些算法。本研究引入了两倍特征选择和分类方法,更容易,更快的心律失常识别。通过ECG信号的不同非线性,时间和统计参数的融合来采用不同ECG数据的辨别。通过引入欧几里德评分来评估每个检测过程中各个特征在每个阶段的重要性。此外,选择符合条件的功能以构造一个名为融合功能的集成功能。这些融合功能有效地准确地分类ECG节拍,计算负担较少。使用MIT-BIH心律失常数据库验证所提出的方法。每个阶段分类的实验结果显示了与个体特征组合相比的融合特征的更好性能。此外,拟议的工作会产生与现有工作相比的令人鼓舞的结果。

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