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Improved Detection of Human Respiration Using Data Fusion Basedon a Multistatic UWB Radar

机译:基于多静态UWB雷达的数据融合改进的人体呼吸检测

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This paper investigated the feasibility for improved detection of human respiration using data fusion based on a multistatic ultra-wideband (UWB) radar. UWB-radar-based respiration detection is an emerging technology that has great promise in practice. It can be applied to remotely sense the presence of a human target for through-wall surveillance, post-earthquake search and rescue, etc. In these applications, a human target’s position and posture are not known a priori. Uncertainty of the two factors results in a body orientation issue of UWB radar, namely the human target’s thorax is not always facing the radar. Thus, the radial component of the thorax motion due to respiration decreases and the respiratory motion response contained in UWB radar echoes is too weak to be detected. To cope with the issue, this paper used multisensory information provided by the multistatic UWB radar, which took the form of impulse radios and comprised one transmitting and four separated receiving antennas. An adaptive Kalman filtering algorithm was then designed to fuse the UWB echo data from all the receiving channels to detect the respiratory-motion response contained in those data. In the experiment, a volunteer’s respiration was correctly detected when he curled upon a camp bed behind a brick wall. Under the same scenario, the volunteer’s respiration was detected based on the radar’s single transmitting-receiving channels without data fusion using conventional algorithm, such as adaptive line enhancer and single-channel Kalman filtering. Moreover, performance of the data fusion algorithm was experimentally investigated with different channel combinations and antenna deployments. The experimental results show that the body orientation issue for human respiration detection via UWB radar can be dealt well with the multistatic UWB radar and the Kalman-filter-based data fusion, which can be applied to improve performance of UWB radar in real applications.
机译:本文研究了基于多静态超宽带(UWB)雷达的数据融合改善人类呼吸检测的可行性。基于UWB雷达的呼吸检测是一项新兴技术,在实践中具有广阔的前景。它可以用于通过墙壁监视,地震后搜索和救援等远程感测人类目标的存在。在这些应用中,人类目标的位置和姿势并不是先验的。这两个因素的不确定性导致了UWB雷达的人体定向问题,即人类目标的胸腔并不总是面对雷达。因此,由于呼吸引起的胸腔运动的径向分量减小,并且UWB雷达回波中包含的呼吸运动响应太弱而无法检测到。为了解决这个问题,本文使用了多静态UWB雷达提供的多感官信息,该信息采用脉冲无线电的形式,包括一个发射天线和四个分离的接收天线。然后设计了自适应卡尔曼滤波算法,以融合来自所有接收通道的UWB回波数据,以检测这些数据中包含的呼吸运动响应。在实验中,当志愿者curl缩在砖墙后面的露营床上时,可以正确检测到呼吸。在相同的情况下,无需使用常规算法(例如自适应线路增强器和单通道卡尔曼滤波)进行数据融合,即可根据雷达的单个收发通道检测志愿者的呼吸。此外,通过不同的信道组合和天线部署,实验研究了数据融合算法的性能。实验结果表明,通过多静态超宽带雷达和基于卡尔曼滤波的数据融合,可以很好地解决超宽带雷达人体呼吸检测的方向性问题,可以提高实际应用中超宽带雷达的性能。

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