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Efficient Parameter Estimation for Cone-Shaped Target Based on Distributed Radar Networks

机译:基于分布式雷达网络的圆锥形目标有效参数估计

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摘要

An echo signal received from a cone-shaped target with micro-motion is composed of a linear mixture of individual signals radiated from multiple effective scatterers with the occlusion effect, resulting in difficulties in parameter estimation for ballistic target discrimination (BTD). To solve this, conventional methods have been based on the sophisticated signal decomposition techniques using a 2D joint time-frequency (JTF) image or a 2D radial-range (RR) history image; however, they are inefficient for real-time BTD due to complex 2D image processing. Therefore, we propose a new parameter estimation framework consisting of five stages: 1) a normalization step; 2) signal decomposition and data association using independent component analysis in the distributed radar network; 3) estimation of dynamic parameters using 1D micro-Doppler frequency trajectories; 4) restoration of 1D RR histories; and 5) estimation of geometric parameters using the restored 1D RR histories. In particular, ICA of stage 2 is more time-saving than the conventional mathematical model-based methods using the 2D JTF image due to signal decomposition using the 1D normalized echo signals. Moreover, in the stage 4, high-quality 1D RR histories can be restored in spite of using the 2D RR history image with low resolution, compared with the conventional methods using 2D RR history image of very high resolution. In the simulations, we observed that our proposed framework is capable of performing efficient parameter estimation for the real-time BTD.
机译:从具有微小运动的圆锥形目标接收的回波信号由从多个有效散射体发出的具有遮挡效应的单个信号的线性混合构成,从而导致弹道目标识别(BTD)的参数估计困难。为了解决这个问题,常规方法已经基于复杂的信号分解技术,该技术使用2D联合时频(JTF)图像或2D径向范围(RR)历史图像。然而,由于复杂的2D图像处理,它们对于实时BTD效率低下。因此,我们提出了一个新的参数估计框架,该框架包括五个阶段:1)归一化步骤; 2)在分布式雷达网络中使用独立分量分析进行信号分解和数据关联; 3)使用一维微多普勒频率轨迹估计动态参数; 4)恢复一维RR历史; 5)使用恢复的一维RR历史估计几何参数。尤其是,由于使用1D归一化回波信号进行信号分解,因此第2阶段的ICA比使用2D JTF图像的传统基于数学模型的方法更节省时间。此外,在阶段4中,与使用高分辨率的2D RR历史图像的传统方法相比,尽管使用了低分辨率的2D RR历史图像,仍可以恢复高质量的1D RR历史。在仿真中,我们观察到我们提出的框架能够为实时BTD执行有效的参数估计。

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