心电压缩感知中投影矩阵与字典的比较研究

M. Fira, L. Goras
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引用次数: 5

摘要

在本文中,我们从压缩感知(CS)理论的基础出发,提出并比较讨论了几种心电信号压缩技术,重点是采集技术、投影矩阵和重建字典,以及所涉及的预处理的影响。本质上,我们调查和讨论两种方法。第一种心电信号压缩方法依赖于直接CS采集信号,在进行投影之前没有对波形进行预处理,也没有对字典进行构建。我们将这种“真正的”CS称为患者特定经典压缩感知(PSCCS),因为字典是根据患者的初始记录构建的。第二种方法实现了一个特定的预处理阶段,旨在增强稀疏性和提高可恢复性,基于将信号分割成单个心跳(也称为心脏模式)-进一步表示为心脏模式压缩感知- (CPCS),因为在这种情况下,采集的信号和字典原子被预处理为没有R波中心或有R波中心的分段心跳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On projection matrices and dictionaries in ECG compressive sensing - A comparative study
In this communication we propose and discuss comparatively several techniques for ECG signal compression inspired from the fundamentals of compressed sensing (CS) theory, focusing on acquisition techniques, projection matrices and reconstruction dictionaries and on the effects of the preprocessing involved. Essentially, we investigate and discuss two approaches. The first approach for ECG signal compression relies on the direct CS acquisition of the signal with no preprocessing of the waveforms before taking the projections, neither for the construction of the dictionaries. This “genuine” CS we will call patient specific classical compressed sensing (PSCCS) since the dictionary is built from patient initial recordings. The second approach implements a specific preprocessing stage designed to enhance sparsity and improve recoverability, based on segmenting the signal into single heart beats (also known as cardiac patterns) - denoted further as cardiac patterns compressed sensing - (CPCS) since in this case the acquired signals and the dictionary atoms are preprocessed segmented cardiac beats without or with centering of the R wave.
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