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Simulation and signal processing of UWB radar for human detection in complex environment

机译:复杂环境中用于人体探测的UWB雷达的仿真和信号处理

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Using ultra wideband (UWB) radar in searching and rescuing at disaster relief site has widely application. Identifying life signal and locating the position of human targets are two important research areas in this regard. Comparison with detecting moving human body, the static human's weak life signal, such as breathing and heartbeat are difficult to be identified due to the complex environment interference and weak signal response. In this paper, we build the complex environment model of two human subjects trapped in the earthquake ruins and apply finite difference time domain (FDTD) method to simulate the model response. The one is supinely postured on the side and another one is laterally postured. Advancements in signal processing may allow for improved imaging and analysis of complex targets. We first apply the correlation analysis and Curvelet transform to decompose the background signal, then use singular value decomposition (SVD) to remove noise in the life signals and present the results base on FFT and ensemble empirical mode decomposition (EEMD) which combines with the Hilbert transform as the Hilbert-Huang transform (HHT) to separate and extract characteristic frequencies of breathing and heartbeat, locate the target's position. The results demonstrate that this combination of UWB impulse radar and various processing methods has potential for identifying the life characteristic from the static human's weak response and also has high accuracy for target location. It is plausible to use this approach in disaster search and rescue operations such as people trapped under building debris during earthquake, explosion or fire.
机译:在灾区搜救中使用超宽带雷达已经得到了广泛的应用。在这方面,识别生命信号和定位人类目标的位置是两个重要的研究领域。与检测运动的人体相比,由于复杂的环境干扰和较弱的信号响应,很难识别出静止的人的微弱生命信号,如呼吸和心跳。在本文中,我们建立了两个被困在地震遗迹中的人类对象的复杂环境模型,并应用时域有限差分(FDTD)方法来模拟模型响应。一个人在侧面仰卧姿势,另一个人在侧面姿势。信号处理方面的进步可以改善复杂目标的成像和分析。我们首先应用相关分析和Curvelet变换来分解背景信号,然后使用奇异值分解(SVD)去除生命信号中的噪声,然后基于FFT和结合经验模型分解(EEMD)与希尔伯特结合的方法给出结果Hilbert-Huang变换(HHT)进行变换,以分离并提取呼吸和心跳的特征频率,确定目标的位置。结果表明,这种超宽带脉冲雷达与各种处理方法的结合,具有从静态人体的微弱反应识别生命特征的潜力,并且对目标定位具有很高的准确性。在灾难搜索和救援操作中使用这种方法似乎是合理的,例如在地震,爆炸或火灾中被困在建筑物碎片下的人。

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