计算机科学
计算复杂性理论
方位角
雷达
合成孔径雷达
超分辨率
计算机视觉
实时计算
算法
光学
电信
图像(数学)
物理
作者
Deqing Mao,Jianyu Yang,Yongchao Zhang,Weibo Huo,Jiawei Luo,Jifang Pei,Yin Zhang,Yulin Huang
标识
DOI:10.1109/tgrs.2021.3139355
摘要
Superresolution methods can be applied to real aperture radar (RAR) to improve its angular resolution by solving an inverse problem. However, traditional superresolution methods are achieved after batch data collection, which requires extensive operational complexity and storage space. To solve this problem for RAR, an online detect-before-reconstruct (DBR) framework is proposed in this article based on the sparse property of targets. First, along the range direction, each sample of the echo data is detected to reduce the computational complexity by reducing the dimension of the effective data. Second, along the azimuth direction, a data-adaptive online processing structure is proposed to reduce the storage requirement for the angular superresolution problem. Finally, within the online processing structure, a target data-adaptive updating strategy is proposed to reduce the number of iterations for each target grid. The online DBR-based framework can effectively reduce the operational complexity caused by the noise values of the echo data. Based on the proposed online processing structure, the storage requirement and the operational complexity of the angular superresolution for an RAR system can be greatly reduced without significant reconstruction performance loss. The results of simulations and experimental data verify the proposed framework.
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