论文标题
分布式毫米波汽车雷达系统的3D超分辨率成像方法
3D Super-Resolution Imaging Method for Distributed Millimeter-wave Automotive Radar System
论文作者
论文摘要
毫米波(MMW)雷达广泛应用于先进的自动驾驶辅助系统。但是,其小天线孔可导致低成像分辨率。在本文中,新的分布式MMW雷达系统旨在解决此问题。它使用多输入和多输出(MIMO)处理形成一个较大的稀疏虚拟平面阵列来扩大光圈。但是,在此系统中,传统成像方法不能适用于稀疏阵列。因此,我们还为本文中专门为该系统提出了一种3D超分辨率成像方法。 The proposed method consists of three steps: (1) using range FFT to get range imaging, (2) using 2D adaptive diagonal loading iterative adaptive approach (ADL-IAA) to acquire 2D super-resolution imaging, which can satisfy this sparsity under single-measurement, (3) using constant false alarm (CFAR) processing to gain final 3D super-resolution imaging.仿真结果表明,在稀疏阵列和单测量下,提出的方法可以显着改善成像分辨率。
Millimeter-wave (mmW) radar is widely applied to advanced autopilot assistance systems. However, its small antenna aperture causes a low imaging resolution. In this paper, a new distributed mmW radar system is designed to solve this problem. It forms a large sparse virtual planar array to enlarge the aperture, using multiple-input and multiple-output (MIMO) processing. However, in this system, traditional imaging methods cannot apply to the sparse array. Therefore, we also propose a 3D super-resolution imaging method specifically for this system in this paper. The proposed method consists of three steps: (1) using range FFT to get range imaging, (2) using 2D adaptive diagonal loading iterative adaptive approach (ADL-IAA) to acquire 2D super-resolution imaging, which can satisfy this sparsity under single-measurement, (3) using constant false alarm (CFAR) processing to gain final 3D super-resolution imaging. The simulation results show the proposed method can significantly improve imaging resolution under the sparse array and single-measurement.