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首页> 外文期刊>EURASIP journal on advances in signal processing >Modeling of Electrocardiogram Signals Using Predefined Signature and Envelope Vector Sets
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Modeling of Electrocardiogram Signals Using Predefined Signature and Envelope Vector Sets

机译:使用预定义的签名和包络矢量集对心电图信号建模

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摘要

A novel method is proposed to model ECG signals by means of “predefined signature and envelope vector sets (PSEVS).” On a frame basis, an ECG signal is reconstructed by multiplying three model parameters, namely, predefined signature vector (PSV)R,” “predefined envelope vector (PEV)K,” and frame-scaling coefficient (FSC). All the PSVs and PEVs are labeled and stored in their respective sets to describe the signal in the reconstruction process. In this case, an ECG signal frame is modeled by means of the members of these sets labeled with indices R and K and the frame-scaling coefficient, in the least mean square sense. The proposed method is assessed through the use of percentage root-mean-square difference (PRD) and visual inspection measures. Assessment results reveal that the proposed method provides significant data compression ratio (CR) with low-level PRD values while preserving diagnostic information. This fact significantly reduces the bandwidth of communication in telediagnosis operations.
机译:提出了一种通过“预定义签名和包络向量集(PSEVS)”对ECG信号建模的新颖方法。在帧的基础上,通过将三个模型参数相乘来重构ECG信号,即预定义签名矢量(PSV)R,“预定义包络矢量(PEV)K”和帧缩放系数(FSC)。所有PSV和PEV都被标记并存储在它们各自的集合中,以描述重建过程中的信号。在这种情况下,在最小均方意义上,通过用索引R和K和帧缩放系数标记的这些集合的成员对ECG信号帧进行建模。通过使用百分比均方根差(PRD)和视觉检查方法来评估所提出的方法。评估结果表明,该方法在保留诊断信息的同时,具有较低的PRD值,可提供显着的数据压缩率(CR)。这个事实大大减少了远程诊断操作中的通信带宽。

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