基于粒子滤波的非接触式实时监测动态呼吸建模

Kohei Yamamoto, K. Maeno, T. Kamakura
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引用次数: 0

摘要

虽然多普勒雷达以非接触方式检测呼吸运动,但由于反射速率的降低,雷达与人体之间的距离成比例地降低了性能。提出了一种基于模型的方法来评估这种情况下的呼吸存在。该模型表示胸壁位移。表达式由有五个参数的周期函数组成。该模型具有灵感和到期分别由两个独立参数给出的新性质。因此,利用粒子滤波框架对雷达输出进行跟踪,解决了这一问题。实验在距离3.25m处对6名受试者进行。结果表明,无人值守状态的评价值与有值守状态的评价值有统计学差异。此外,估计模型与高精度位移传感器测量的参考数据进行了较好的比较。由此,建立了该方法在长距离(>3.00m)下的有效性和所提出的呼吸模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic respiratory modeling for non-contact live monitoring by particle filter approach
Although a Doppler radar detects the respiratory motion in the non-contact way, there is a problem of the performance decrement in proportion to the distance between a radar and a human body due to the reduction of the reflected rate. A model-based method is proposed to evaluate the respiratory presence in such cases. This model expresses the chest-wall displacement. The expression is composed of the periodic function which has five parameters. This model has a new property that the inspiration and the expiration are given by each of the two independent parameters. Therefore the problem is solved by tracking the radar outputs using the particle filter framework. The experiment was carried out to the six subjects at the distance 3.25m. The result showed that there was the statistically significant difference between the evaluation value of the unattended state and that of the attended one. In addition, the estimated model was favorably compared with the reference data which was measured by the high-precision displacement sensor. Consequently, the efficacy of the proposed method for the long distance (>3.00m) and that of the proposed respiratory model are established.
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