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首页> 外文期刊>International journal of artificial life research >A Review on Time Series Motif Discovery Techniques an Application to ECG Signal Classification: ECG Signal Classification Using Time Series Motif Discovery Techniques
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A Review on Time Series Motif Discovery Techniques an Application to ECG Signal Classification: ECG Signal Classification Using Time Series Motif Discovery Techniques

机译:时间序列主题发现技术的概述在ECG信号分类中的应用:使用时间序列主题发现技术的ECG信号分类

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摘要

Cardiovascular disease diagnosis from an ECG signal plays an important and significant role in the health care system. Recently, numerous researchers have developed an automatic time series-based multi-step diagnosis system for the fast and accurate diagnosis of ECG abnormalities. The multi-step procedure involves ECG signal acquisition, signal pre-processing, feature extraction, and classification. Among which, the feature extraction plays a vital role in the field of accurate diagnosis. The features may be different types such as statistical, morphological, wavelet or any other signal-based approach. This article discusses various time series motif-based feature extraction techniques with respect to a different dimension of ECG signal.
机译:根据ECG信号诊断心血管疾病在医疗保健系统中起着重要的作用。最近,许多研究人员开发了一种基于时间序列的自动多步诊断系统,用于快速准确地诊断ECG异常。多步骤过程涉及ECG信号采集,信号预处理,特征提取和分类。其中,特征提取在精确诊断领域起着至关重要的作用。这些特征可以是不同的类型,例如统计,形态,小波或任何其他基于信号的方法。本文针对ECG信号的不同维度,讨论了各种基于时间序列的基于特征的特征提取技术。

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