Craven Darren, McGinley Brian, Kilmartin Liam, Glavin Martin, Jones Edward
IEEE J Biomed Health Inform. 2017 May;21(3):645-654. doi: 10.1109/JBHI.2016.2531182. Epub 2016 Feb 18.
This paper proposes a novel adaptive dictionary (AD) reconstruction scheme to improve the performance of compressed sensing (CS) with electrocardiogram signals (ECG). The method is based on the use of multiple dictionaries, created using dictionary learning (DL) techniques for CS signal reconstruction. The modified reconstruction framework is a two-stage process that leverages information about the signal from an initial signal reconstruction stage. By identifying whether a QRS complex is present and if so, determining a location estimate of the QRS, the most appropriate dictionary is selected and a second stage more refined signal reconstruction can be obtained. The performance of the proposed algorithm is compared with state-of-the-art CS implementations in the literature, as well as the set partitioning in hierarchical trees (SPIHT) wavelet-based lossy compression algorithm. The results indicate that the proposed reconstruction scheme outperforms all existing CS implementations in terms of signal fidelity at each compression ratio tested. The performance of the proposed approach also compares favorably with SPIHT in terms of signal reconstruction quality. Furthermore, an analysis of the overall power consumption of the proposed ECG compression framework as would be used in a body area network (BAN) demonstrates positive results for the proposed CS approach when compared with existing CS techniques and SPIHT.
本文提出了一种新颖的自适应字典(AD)重建方案,以提高心电图信号(ECG)的压缩感知(CS)性能。该方法基于使用多个字典,这些字典是通过字典学习(DL)技术创建用于CS信号重建的。改进后的重建框架是一个两阶段过程,它利用初始信号重建阶段的信号信息。通过识别是否存在QRS复合波,如果存在,则确定QRS的位置估计,选择最合适的字典,并获得更精细的第二阶段信号重建。将所提出算法的性能与文献中最先进的CS实现以及基于分层树集分割(SPIHT)的小波有损压缩算法进行了比较。结果表明,在所测试的每个压缩率下,所提出的重建方案在信号保真度方面优于所有现有的CS实现。所提出方法的性能在信号重建质量方面也优于SPIHT。此外,对将在所提出的ECG压缩框架中用于人体区域网络(BAN)的总体功耗进行分析,结果表明,与现有的CS技术和SPIHT相比,所提出的CS方法具有积极的效果。