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Robust BSBL recovery method of physiological signals with application to fetal ECG

机译:健壮的BSBL生理信号恢复方法及其在胎儿心电图中的应用

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Compressive Sensing (CS) techniques have emerged with the increasing demand of high data rate transmissions. Recently, block sparse Bayesian learning (BSBL) framework was introduced which has a superior performance over conventional CS methods. In this paper, the BSBL-Expectation Maximization (BSBL-EM) and BSBL-Bound Optimization (BSBL-BO) methods were deployed. The performance, mainly quality and speed, of recovering a block sparse signal was analyzed. Results showed that the two algorithms performance is almost the same in terms of NMSE. However, BSBL-BO achieved better efficiency since the required recovery time was less than BSBL-EM. To further investigate the algorithms performance, they were deployed to recover a real world FECG segment. They achieved a satisfactory quality where the distortion is negligible and does not affect the clinical diagnosis. Nevertheless, using BSBL-BO is more suitable for wireless tele-monitoring based systems since it is more efficient.
机译:随着高数据速率传输的需求不断增长,出现了压缩传感(CS)技术。最近,引入了块稀疏贝叶斯学习(BSBL)框架,该框架具有优于常规CS方法的性能。在本文中,部署了BSBL期望最大化(BSBL-EM)和BSBL边界优化(BSBL-BO)方法。分析了恢复块稀疏信号的性能,主要是质量和速度。结果表明,就NMSE而言,两种算法的性能几乎相同。但是,由于所需的恢复时间少于BSBL-EM,因此BSBL-BO的效率更高。为了进一步研究算法的性能,他们被部署来恢复现实世界中的FECG段。他们获得了令人满意的质量,其中失真可以忽略,并且不影响临床诊断。但是,使用BSBL-BO效率更高,因此更适合基于无线远程监视的系统。

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