基于毫米波雷达点云的生命体征检测动态杂波抑制方法

    Dynamic Clutter Suppression Method for Vital Signs Detection Based on Millimeter-wave Radar Point Clouds

    • 摘要: 针对实际环境中动态杂波会影响人体目标定位和生命体征检测的问题,本文提出了一种由粗到细的点云选择策略和基于品质因子的自适应变分模态分解方法,以实现动态杂波的抑制和生命体征检测性能的提升。首先,通过自相关分析区分人体和动态物体的点云;其次,构建基于频谱的多特征融合模型选择具有较强生命体征的点云;然后,设计基于品质因子的变分模态分解方法分离动态杂波和微弱生命体征信号;最后,采用谐波加权选择算法自适应地提取呼吸和心跳分量。在复杂室内环境中进行的实验表明,本文方法可有效抑制动态杂波,实现动态环境下人体生命体征的准确检测,呼吸率和心率的准确率分别达到98.01%和98.14%。

       

      Abstract: To address the issue that the presence of dynamic clutter in actual environments will affect the accuracy of human target localization and vital signs detection, a coarse-to-fine point cloud selection strategy and an adaptive variational modal decomposition method based on the quality factor are proposed to achieve the suppression of dynamic clutter and the enhancement of vital signs detection performance. First, coarse point clouds of the human body and dynamic objects are distinguished by autocorrelation analysis. Second, a spectrum-based multi-feature fusion model is proposed to select fine point cloud with strong vital signs. Third, a quality factor-based variational mode decomposition method is proposed to separate the dynamic clutter and weak vital signals. Finally, a harmonic weighting selection algorithm is proposed to adaptively extract the respiratory and heartbeat components. Experiments conducted in cluttered indoor environments show that the proposed method effectively mitigates the effects of dynamic clutter and achieves accurate detection of human vital signs in dynamic environments, achieving respiratory and heart rate accuracies of 98.01% and 98.14%, respectively.

       

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