CNRS, UMR 8520-IEMN groupe CSAM (Systems Circuits Microwave Applications), University of Lille, F-59000 Lille, France.
Groupe LEOST (Electronic Wave and Signal Laboratory for Transport), University of Gustave Eiffel, F-59666 Villeneuve d' Ascq, France.
Sensors (Basel). 2020 Jun 16;20(12):3396. doi: 10.3390/s20123396.
Non-contact detection and estimation of vital signs such as respiratory and cardiac frequencies is a powerful tool for surveillance applications. In particular, the continuous wave bio-radar has been widely investigated to determine the physiological parameters in a non-contact manner. Since the RF-reflected signal from the human body is corrupted by noise and random body movements, traditional Fourier analysis fails to detect the heart and breathing frequencies. In this effort, cyclostationary analysis has been used to improve the radar performance for non-invasive measurement of respiratory rate and heart rate. However, the preliminary works focus only on one frequency and do not include the impact of attenuation and random movement of the body in the analysis. Hence in this paper, we evaluate the impact of distance and noise on the cyclic features of the reflected signal. Furthermore, we explore the assessment of second order cyclostationary signal processing performance by developing the cyclic mean, the conjugate cyclic autocorrelation and the cyclic cumulant. In addition, the analysis is carried out using a reduced number of samples to reduce the response time. Implementation of the cyclostationary technique using a bi-static radar configuration at 2.5 GHz is shown as an example to demonstrate the proposed approach.
非接触式检测和估计生命体征,如呼吸和心搏频率,是监测应用的有力工具。特别是连续波生物雷达已被广泛研究,以非接触方式确定生理参数。由于人体的射频反射信号受到噪声和随机身体运动的干扰,传统的傅里叶分析无法检测到心率和呼吸频率。在这项工作中,循环平稳分析已被用于提高雷达性能,以实现呼吸率和心率的非侵入式测量。然而,初步工作仅关注一个频率,并且在分析中不包括衰减和身体随机运动的影响。因此,在本文中,我们评估了距离和噪声对反射信号循环特征的影响。此外,我们通过开发循环均值、共轭循环自相关和循环累积量来探索二阶循环平稳信号处理性能的评估。此外,通过使用较少的样本来减少响应时间来进行分析。使用 2.5GHz 的双基地雷达配置实现循环平稳技术作为示例,以演示所提出的方法。