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A Blind Source Separation Framework for Monitoring Heart Beat Rate Using Nanofiber-Based Strain Sensors

机译:使用基于纳米纤维的应变传感器监测心跳率的盲源分离框架

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摘要

A recently developed novel nanofiber-based strain sensor is introduced as a potential alternative to the conventional measurement tools for heart beat rate monitoring. Since the measured signals in real life are often contaminated by certain artifacts, in this paper, to overcome limitations of currently available empirical mode decomposing (EMD) and blind source separation-based methods and recover the buried heart beat signal accurately, we propose a novel blind source separation framework by combining noise-assisted multivariate EMD (NAMEMD) and multiset canonical correlation analysis (MCCA). The proposed method takes advantage of the multivariate data-adaptive nature of the NAMEMD and MCCA, which contributes to accurate extraction of the desired signal. The absolute correlation coefficients (ACCs) between the extracted signal and the original source signal are adopted to evaluate the performance of the proposed method in the simulation study. The average of the ACC yielded by the proposed method is 0.902, which is significantly higher than that by the state-of-the-art approaches. We also examine the proposed method on the nano-sensor data collected when the subject performs 11 tasks. It is shown that the proposed method can achieve better performance, especially for preserving the shape of the heart beat signal.
机译:引入了最近开发的新型基于纳米纤维的应变传感器,作为常规测量工具用于心跳率监测的潜在替代方法。由于现实生活中的测量信号经常受到某些伪影的污染,因此,为了克服当前可用的经验模式分解(EMD)和基于盲源分离的方法的局限性,并准确地恢复埋藏的心跳信号,我们提出了一种新颖的方法通过结合噪声辅助多元EMD(NAMEMD)和多集规范相关分析(MCCA)来实现盲源分离框架。所提出的方法利用了NAMEMD和MCCA的多变量数据自适应特性,这有助于准确提取所需信号。在仿真研究中,采用提取信号和原始信号之间的绝对相关系数(ACC)来评估所提出方法的性能。所提出的方法产生的ACC平均值为0.902,明显高于最新方法。我们还检查了该方法对受试者执行11个任务时收集的纳米传感器数据的影响。结果表明,所提出的方法可以取得更好的性能,特别是在保持心跳信号形状方面。

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