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On the efficient application of compressive sensing of physiological signals in medical diagnostics

机译:生理信号压缩感知在医学诊断中的有效应用

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Wireless telemonitoring of physiological signals is an evolving direction in personalized medicine and home-based e-Health. There are several constraints in designing such systems. The three important constraints are energy consumption, data compression and device cost. Compressive Sensing (CS) is an emerging data compression technique that overcomes those constraints. Nevertheless, the non-sparsity of physiological signals presents a major issue to the existing compressive sensing algorithms. This research proposes to use a developed compressive sensing algorithm which has the ability to recover such non-sparse physiological signals. This algorithm is Block Sparse Bayesian Learning (BSBL). The proposed algorithm and the conventional CS algorithm were used to compress Fetal ECG (FECG) signals. Results showed that using BSBL to recover non-sparse FECG is more efficient comparing with the conventional CS algorithm, SL0.
机译:生理信号的无线远程监控是个性化医疗和基于家庭的e-Health的发展方向。设计这样的系统有几个约束。三个重要的约束是能耗,数据压缩和设备成本。压缩感知(CS)是一种新兴的数据压缩技术,可以克服这些限制。然而,生理信号的稀疏性给现有的压缩感测算法提出了一个主要问题。这项研究建议使用一种已开发的压缩感知算法,该算法具有恢复此类非稀疏生理信号的能力。该算法是块稀疏贝叶斯学习(BSBL)。提出的算法和常规的CS算法被用于压缩胎儿ECG(FECG)信号。结果表明,与传统的CS算法SL0相比,使用BSBL恢复非稀疏FECG效率更高。

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