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Direct Arrhythmia Classification from Compressive ECG Signals in Wearable Health Monitoring System

机译:穿戴式健康监测系统中基于压缩ECG信号的直接心律失常分类

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摘要

Due to the capacity of processing signal with low energy consumption, compressive sensing (CS) has been widely used in wearable health monitoring system for arrhythmia classification of electrocardiogram (ECG) signals. However, most existing works focus on compressive sensing reconstruction, in other words, the ECG signals must be reconstructed before use. Hence, these methods have high computational complexity. In this paper, the authors propose a cardiac arrhythmia classification scheme that performs classification task directly in the compressed domain, skipping the reconstruction stage. The proposed scheme first employs the Pan-Tompkins algorithm to preprocess the ECG signals, including denoising and QRS detection, and then compresses the ECG signals by CS to obtain the compressive measurements. The features are extracted directly from these measurements based on principal component analysis (PCA), and are used to classify the ECG signals into different types by the proposed semi-supervised learning algorithm based on support vector machine (SVM). Extensive simulations have been performed to validate the effectiveness of the proposed scheme. Experimental results have shown that the proposed scheme achieves an average accuracy of 98.0531% at a sensing rate of 0.7, compared to an accuracy of 98.5841% for noncompressive ECG data.
机译:由于以低能耗处理信号的能力,压缩感测(CS)已广泛用于可穿戴健康监测系统中,用于心电图(ECG)信号的心律失常分类。然而,大多数现有工作集中于压缩感测重建,换句话说,必须在使用前重建ECG信号。因此,这些方法具有很高的计算复杂度。在本文中,作者提出了一种心律不齐分类方案,该方案直接在压缩域中执行分类任务,而跳过了重建阶段。提出的方案首先采用Pan-Tompkins算法对ECG信号进行预处理,包括去噪和QRS检测,然后通过CS压缩ECG信号以获得压缩测量值。这些特征是基于主成分分析(PCA)直接从这些测量中提取的,并通过基于支持向量机(SVM)的半监督学习算法将ECG信号分为不同类型。已经进行了广泛的仿真,以验证所提出方案的有效性。实验结果表明,与非压缩ECG数据的98.5841%的准确度相比,该方案在0.7的感应率下可实现98.0531%的平均准确度。

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