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Low-rank singular approximation based ECG signal compression in e-health applications

机译:电子医疗应用中基于低秩奇异逼近的ECG信号压缩

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In this paper, a compression technique for ECG signal using low-rank matrix approximation based on inter and intra beat correlation, is presented. Here, singular value decomposition (SVD) has been exploited to explore the low rank representation using truncation process that stores most significant data with few singular values. In this method, two dimensional (2-D) array of ECG signal is constructed using interpolation, zero padding and average period length. The presented compression is evaluated with MIT-BIH arrhythmia ECG signal using different fidelity parameters such as compression ratio (CR), percentage root-mean square difference (PRD), signal-to-noise ratio (SNR), and correlation (CC). The obtained results presented at different rank truncation are 4:1 to 34:1 compression ratio for signal 117. Overall results show that the efficiency of presented compression technique is good for data storage or transmission in telemedicine applications.
机译:本文提出了一种基于心跳和帧内心跳相关性的基于低秩矩阵逼近的心电信号压缩技术。在这里,奇异值分解(SVD)已被利用来利用截断过程来探索低秩表示,该截断过程存储了具有很少奇异值的最重要数据。在这种方法中,使用插值,零填充和平均周期长度构造ECG信号的二维(2-D)阵列。使用不同的保真度参数(例如压缩率(CR),均方根百分比差(PRD),信噪比(SNR)和相关性(CC)),通过MIT-BIH心律失常ECG信号评估提出的压缩。信号117在不同等级截断下获得的结果压缩比为4:1到34:1。总体结果表明,所提出的压缩技术的效率非常适合远程医疗应用中的数据存储或传输。

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