使用压缩感知技术恢复心电信号的字典级联

O. Kerdjidj, K. Ghanem, A. Amira, F. Harizi, F. Chouireb
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引用次数: 7

摘要

压缩感知(CS)是一种很有前途的信号恢复方法,它使用比香农采样定理所施加的通常数量更少的测量样本。许多领域可能需要CS技术,但在这里,我们只对将其应用于生理信号采集系统,特别是心电图(ECG)生物信号感兴趣。由于该信号是稀疏的,因此它是CS处理的完美候选。本文研究了两种贪婪算法在心电原始数据上的应用,即匹配追踪(MP)算法和正交匹配追踪(OMP)算法。在各种心电数据集上进行了多次测试,以做出参数(字典类型,最大迭代次数等)的最佳选择,从而能够很好地重建原始信号。此外,我们建议将不同的字典连接起来,这表明准确率提高了14 dB。新颖之处在于字典的选择和对原始数据的窗口的应用,这使得字典的大小大大减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concatenation of dictionaries for recovery of ECG signals using compressed sensing techniques
Compressed Sensing (CS) is a promising method for signal recovery using fewer measurement samples than the ordinarily amount imposed by Shannon's sampling theorem. Many fields may need CS technique, but herein we are solely interested in applying it to the physiological signal acquisition systems, particularly the Electrocardiogram (ECG) biosignal. Since this signal is sparse, it is a perfect candidate for CS processing. This paper investigates the application of two greedy algorithms on ECG raw data, namely the matching pursuit (MP) and the orthogonal matching pursuit (OMP) algorithms. Several tests on various ECG data sets are carried out to make the best choice of the parameters (type of dictionary, maximum number of iterations,etc) that allow a good reconstruction of the original signal. Moreover, we propose to concatenate different dictionaries which is shown to enhance the accuracy by 14 dB. The novelty lies in the choice of the dictionaries and the application of the windowing on the original data that allows to significantly reduce the size of the dictionary.
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