Abstract

The non-contact monitoring of vital signs by radar has great prospects in clinical monitoring. However, the accuracy of separated respiratory and heartbeat signals has not satisfied the clinical limits of agreement. This paper presents a study for automated separation of respiratory and heartbeat signals based on empirical wavelet transform (EWT) for multiple people. The initial boundary of the EWT was set according to the limited prior information of vital signs. Using the initial boundary, empirical wavelets with a tight frame were constructed to adaptively separate the respiratory signal, the heartbeat signal and interference due to unconscious body movement. To verify the validity of the proposed method, the vital signs of three volunteers were simultaneously measured by a stepped-frequency continuous wave ultra-wideband (UWB) radar and contact physiological sensors. Compared with the vital signs from contact sensors, the proposed method can separate the respiratory and heartbeat signals among multiple people and obtain the precise rate that satisfies clinical monitoring requirements using a UWB radar. The detection errors of respiratory and heartbeat rates by the proposed method were within ±0.3 bpm and ±2 bpm, respectively, which are much smaller than those obtained by the bandpass filtering, empirical mode decomposition (EMD) and wavelet transform (WT) methods. The proposed method is unsupervised and does not require reference signals. Moreover, the proposed method can obtain accurate respiratory and heartbeat signal rates even when the persons unconsciously move their bodies.

Highlights

  • Heartbeat and respiration rates are two basic physiological indicators that reflect human health conditions and are normally monitored during clinical examination and treatment

  • Bland–Altman plots for (a) the respiratory rate based on the bandpass filtering method, (b) the heartbeat rate based on the bandpass filtering method, (c) the respiratory rate based on the empirical mode decomposition (EMD) method, (d) the heartbeat rate based on the EMD method, (e) the respiratory rate based on the wavelet transform (WT) method, (f) the heartbeat rate based on the WT method, (g) the respiratory rate based on the proposed method and (h) the heartbeat rate based on the proposed contact sensors and the vital signals extracted from radar using different methods for the three volunteers, including 10 measurements

  • Bland–Altman plots for (a) the respiratory rate based on on the bandpass filtering method, (b) the heartbeat rate based on the bandpass filtering method, (c) the respiratory rate based on the EMD method, (d) the heartbeat rate based on the EMD method, (e) the respiratory rate based on the WT method, (f) the heartbeat rate based on the WT method, (g) the respiratory rate based on the proposed method and (h) the heartbeat rate based on the proposed method

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Summary

Introduction

Heartbeat and respiration rates are two basic physiological indicators that reflect human health conditions and are normally monitored during clinical examination and treatment. To reduce the noise from the received radar signal, where sparse spectrum reconstruction and the zero-attracting sign least-mean-square were incorporated to estimate the heartbeat spectrum with an average absolute error of 3.18 bpm for five volunteers These methods are, complicated and computationally expensive. To address these limitations, in this paper, we propose a novel vital sign separation method based on empirical wavelet transform (EWT) using SFCW-UWB radar. The respiratory and heartbeat signals obtained by radar are compared with the vital signs from contact sensors To our knowledge, this is the first work to use EWT to extract respiratory and heartbeat information from radar signals and to acquire vital signs that satisfy the clinical requirements for multiple targets in a non-scanning mode.

Block Diagram of Signal Processing
Acquire the Beat Signal
Obtain the Range-Time Matrix
Obtain Mixed Vital Sign Signals of Targets
Acquire the Fundamental Respiration Frequency of Targets
Construct Initial Boundary and Empirical Wavelet Functions
EWT Decomposition and Vital Sign Signal Separation
Signal Model of the SFCW-UWB Radar
Theory of the Proposed Algorithm Based on EWT
UWB Radar Platform
Data Acquisition and Analysis
Range-Time Spectrogram of Volunteers
EWT Composition
Comparison physiological signals
Comparison of Different Methods
Figure
Method
Conclusions
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