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Block sparsity-based joint compressed sensing recovery of multi-channel ECG signals

机译:基于块稀疏性的联合压缩感知多通道ECG信号恢复

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摘要

In recent years, compressed sensing (CS) has emerged as an effective alternative to conventional wavelet based data compression techniques. This is due to its simple and energy-efficient data reduction procedure, which makes it suitable for resource-constrained wireless body area network (WBAN)-enabled electrocardiogram (ECG) telemonitoring applications. Both spatial and temporal correlations exist simultaneously in multi-channel ECG (MECG) signals. Exploitation of both types of correlations is very important in CS-based ECG telemonitoring systems for better performance. However, most of the existing CS-based works exploit either of the correlations, which results in a suboptimal performance. In this work, within a CS framework, the authors propose to exploit both types of correlations simultaneously using a sparse Bayesian learning-based approach. A spatiotemporal sparse model is employed for joint compression/reconstruction of MECG signals. Discrete wavelets transform domain block sparsity of MECG signals is exploited for simultaneous reconstruction of all the channels. Performance evaluations using Physikalisch-Technische Bundesanstalt MECG diagnostic database show a significant gain in the diagnostic reconstruction quality of the MECG signals compared with the state-of-the art techniques at reduced number of measurements. Low measurement requirement may lead to significant savings in the energy-cost of the existing CS-based WBAN systems.
机译:近年来,压缩传感(CS)已经成为传统的基于小波的数据压缩技术的有效替代方案。这是由于其简单且节能的数据缩减程序,使其适用于资源受限的启用无线体域网(WBAN)的心电图(ECG)远程监护应用程序。空间相关性和时间相关性同时存在于多通道ECG(MECG)信号中。在基于CS的ECG远程监视系统中,两种类型的相关性的利用对于提高性能非常重要。但是,大多数现有的基于CS的作品都利用了任何一种相关性,从而导致性能欠佳。在这项工作中,作者建议在CS框架内使用稀疏的基于贝叶斯学习的方法同时利用两种类型的相关性。时空稀疏模型用于MECG信号的联合压缩/重建。 MECG信号的离散小波变换域块稀疏性被用于同时重建所有通道。使用Physikalisch-Technische Bundesanstalt MECG诊断数据库进行的性能评估显示,与最新技术相比,在减少测量次数的情况下,MECG信号的诊断重建质量有了显着提高。较低的测量要求可能会大大节省现有基于CS的WBAN系统的能源成本。

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