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A heart beat rate detection framework using multiple nanofiber sensor signals

机译:使用多纳米纤维传感器信号的心跳率检测框架

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Although electrocardiogram (ECG) is one standard way for monitoring heart beat rate, there are of great interests in exploring other types of biophysical signals. A novel type of nanofiber (NF) sensor signals, as a potential alternative choice to ECG signals for heart beat monitoring, are investigated in this paper. To get the heart beat signal, three nano sensors are deployed at the wrist. However, detecting the heart beat rate (HBR) directly from the raw data is challenging because the signals of interest are masked by different types of noise. To address this concern, a two-step framework based on ensemble empirical mode decomposition (EEMD) and multiset canonical correlation analysis (MCCA) is proposed to extract the interesting signals. Further, a specific HBR detection method is presented based on peak detection and peak filtering. We apply the proposed framework to the real data collected from one subject performing 8 tasks, and the results demonstrate its effectiveness and potential in real applications.
机译:虽然心电图(ECG)是监测心跳率的标准方法,但探索其他类型的生物物理信号有很大的兴趣。本文研究了一种新型的纳米纤维(NF)传感器信号,作为心跳监测的ECG信号的潜在替代选择。为了获得心跳信号,手腕部署了三个纳米传感器。然而,直接从原始数据检测心跳率(HBR)是具有挑战性的,因为感兴趣的信号被不同类型的噪声掩盖。为了解决这一问题,提出了一种基于集合经验模式分解(EEMD)和多网规范相关分析(MCCA)的两步框架以提取有趣的信号。此外,基于峰值检测和峰值滤波来呈现特定的HBR检测方法。我们将建议的框架应用于从执行8个任务的一个主题收集的真实数据,结果证明了实际应用中的有效性和潜力。

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