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ECG signal compression and denoising via optimum sparsity order selection in compressed sensing framework

机译:通过压缩传感框架中的最佳稀疏顺序选择来进行ECG信号压缩和去噪

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Graphical abstractDisplay OmittedAbstractAdvanced signal processing is widely used in healthcare systems and equipment. Compressing ECG signals is beneficial in long-term monitoring of patients’ behavior. Compressed Sensing (CS) based ECG compression has shown superiority over the existing ECG compression approaches. In current CS ECG compression methods, sparsity order (number of basis vectors involved in the compression) is determined either empirically or by thresholding approaches. Here, we propose a new method denoted by Optimum Sparsity Order Selection (OSOS) that calculates the sparsity order by minimizing reconstruction error. In addition, we have shown that basis matrix based on raised Cosine kernel has more efficiency in compression over the Gaussian basis matrices. The fundamentals of OSOS algorithm is such that the method is robust to observation noise. Simulation results confirm efficiency of our method in terms of compression ratio.
机译: 图形摘要 < ce:simple-para>省略显示 摘要 高级信号处理广泛用于医疗保健系统和设备。压缩ECG信号有利于长期监测患者的行为。基于压缩感知(CS)的ECG压缩已显示出优于现有ECG压缩方法的优势。在当前的CS ECG压缩方法中,稀疏度顺序(压缩中涉及的基本向量的数量)是凭经验或通过阈值确定的。在这里,我们提出了一种以最佳稀疏顺序选择(OSOS)表示的新方法,该方法通过最小化重构误差来计算稀疏顺序。另外,我们已经表明,基于提升余弦核的基础矩阵比高斯基础矩阵具有更高的压缩效率。 OSOS算法的基本原理是该方法对观察噪声具有鲁棒性。仿真结果证实了我们方法在压缩率方面的有效性。

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