心电压缩感知中字典矩阵优化的新方法

Enrico Picariello, E. Balestrieri, F. Picariello, S. Rapuano, IOAN TUDOSA, L. D. Vito
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引用次数: 5

摘要

本文提出了一种新的字典矩阵优化方法,旨在提高压缩感知(CS)算法传递的心电信号重构质量。该方法利用同一患者所有心电信号记录的共同特征,得到一个精简的优化字典。通过这种方式,压缩样本的信号重建是在一个由基数减少的基数定义的do-main中进行的,从而可以提高信号的重建质量,减少重建算法的执行时间。描述了患者心电信号字典优化的数学模型,并进行了初步的实验评估。得到的结果清楚地表明,该方法的重建质量在均方根差(PRD)的百分比方面低于采用非优化字典矩阵的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Method for Dictionary Matrix Optimization in ECG Compressed Sensing
This paper proposes a new method for dictionary matrix optimization with the aim of improving the reconstruction quality of ECG signals delivered by a Compressed Sensing (CS) algorithm. The method exploits the features common to all the records of the ECG signal of the same patient to obtain an optimized dictionary with reduced size. In this way, the signal reconstruction from the compressed samples is performed in a do-main defined by a base with a reduced cardinality, thus allowing to increase the signal’s reconstruction quality and to reduce the execution time of the reconstruction algorithm. The mathematical model for the patient specific ECG signals dictionary optimization is described, and a preliminary experimental assessment is presented. The obtained results clearly demonstrates that the proposed method exhibits a reconstruction quality in terms of Percentage of Root-mean-squared Difference (PRD) lower than a method adopting the non-optimized dictionary matrix.
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