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Human Breathing Rate Estimation from Radar Returns Using Harmonically Related Filters

机译:使用谐波相关滤波器根据雷达回波估算人类呼吸速率

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Radar-based noncontact sensing of life sign signals is often used in safety and rescue missions during disasters such as earthquakes and avalanches and for home care applications. The radar returns obtained from a human target contain the breathing frequency along with its strong higher harmonics depending on the target's posture. As a consequence, well understood, computationally efficient, and the most popular traditional FFT-based estimators that rely only on the strongest peak for estimates of breathing rates may be inaccurate. The paper proposes a solution for correcting the estimation errors of such single peak-based algorithms. The proposed method is based on using harmonically related comb filters over a set of all possible breathing frequencies. The method is tested on three subjects for different postures, for different distances between the radar and the subject, and for two different radar platforms: PN-UWB and phase modulated-CW (PM-CW) radars. Simplified algorithms more suitable for real-time implementation have also been proposed and compared using accuracy and computational complexity. The proposed breathing rate estimation algorithms provide a reduction of about 81% and 80% in the mean absolute error of breathing rates in comparison to the traditional FFT-based methods using strongest peak detection, for PN-UWB and PM-CW radars, respectively.
机译:基于雷达的生命信号信号的非接触式感测通常用于地震和雪崩等灾害期间的安全和救援任务中以及家庭护理应用中。从人类目标获得的雷达回波包含呼吸频率以及取决于目标姿态的强大的高次谐波。结果,众所周知的,计算效率高且仅依赖于最强峰值进行呼吸速率估计的最流行的基于FFT的传统估计器可能是不准确的。本文提出了一种纠正此类基于单峰算法的估计误差的解决方案。所提出的方法基于在所有可能的呼吸频率的集合上使用谐波相关的梳状滤波器。在三个对象上针对不同的姿势,雷达与对象之间的不同距离以及两个不同的雷达平台(PN-UWB和相位调制CW(PM-CW)雷达)对方法进行了测试。还提出了更适合实时实现的简化算法,并使用准确性和计算复杂性进行了比较。与分别使用PN-UWB和PM-CW雷达的使用最强峰值检测的基于FFT的传统方法相比,所提出的呼吸速率估计算法可将呼吸速率的平均绝对误差降低约81%和80%。

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