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用于离散簇中目标的自适应微波凝视相关成像

Adaptive Microwave Staring Correlated Imaging for Targets Appearing in Discrete Clusters.

作者信息

Tian Chao, Jiang Zheng, Chen Weidong, Wang Dongjin

机构信息

Key Laboratory of Electromagnetic Space Information, Chinese Academy of Sciences, University of Science and Technology of China, Hefei 230027, China.

出版信息

Sensors (Basel). 2017 Oct 21;17(10):2409. doi: 10.3390/s17102409.

DOI:10.3390/s17102409
PMID:29065467
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5677292/
Abstract

Microwave staring correlated imaging (MSCI) can achieve ultra-high resolution in real aperture staring radar imaging using the correlated imaging process (CIP) under all-weather and all-day circumstances. The CIP must combine the received echo signal with the temporal-spatial stochastic radiation field. However, a precondition of the CIP is that the continuous imaging region must be discretized to a fine grid, and the measurement matrix should be accurately computed, which makes the imaging process highly complex when the MSCI system observes a wide area. This paper proposes an adaptive imaging approach for the targets in discrete clusters to reduce the complexity of the CIP. The approach is divided into two main stages. First, as discrete clustered targets are distributed in different range strips in the imaging region, the transmitters of the MSCI emit narrow-pulse waveforms to separate the echoes of the targets in different strips in the time domain; using spectral entropy, a modified method robust against noise is put forward to detect the echoes of the discrete clustered targets, based on which the strips with targets can be adaptively located. Second, in a strip with targets, the matched filter reconstruction algorithm is used to locate the regions with targets, and only the regions of interest are discretized to a fine grid; sparse recovery is used, and the band exclusion is used to maintain the non-correlation of the dictionary. Simulation results are presented to demonstrate that the proposed approach can accurately and adaptively locate the regions with targets and obtain high-quality reconstructed images.

摘要

微波凝视相关成像(MSCI)能够在全天候和全天时条件下,通过相关成像过程(CIP)在实孔径凝视雷达成像中实现超高分辨率。CIP必须将接收到的回波信号与时空随机辐射场相结合。然而,CIP的一个前提条件是连续成像区域必须离散化为精细网格,并且测量矩阵应准确计算,这使得当MSCI系统观测大面积区域时成像过程高度复杂。本文提出一种针对离散簇状目标的自适应成像方法,以降低CIP的复杂度。该方法分为两个主要阶段。首先,由于离散簇状目标分布在成像区域的不同距离条带中,MSCI的发射机发射窄脉冲波形,以便在时域中分离不同条带中目标的回波;基于谱熵,提出一种对噪声具有鲁棒性的改进方法来检测离散簇状目标的回波,据此可自适应定位有目标的条带。其次,在有目标的条带中,使用匹配滤波器重建算法定位有目标的区域,并且仅将感兴趣区域离散化为精细网格;采用稀疏恢复,并使用频带排除来保持字典的非相关性。给出的仿真结果表明,所提方法能够准确且自适应地定位有目标的区域,并获得高质量的重建图像。

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引用本文的文献

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