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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >High-Resolution Inverse Synthetic Aperture Radar Imaging and Scaling With Sparse Aperture
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High-Resolution Inverse Synthetic Aperture Radar Imaging and Scaling With Sparse Aperture

机译:高分辨率逆合成孔径雷达成像和稀疏孔径缩放

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摘要

In high-resolution radar imaging, the rotational motion of targets generally produces migration through resolution cells (MTRC) in inverse synthetic aperture radar (ISAR) images. Usually, it is a challenge to realize accurate MTRC correction on sparse aperture (SA) data, which tends to degrade the performance of translational motion compensation and SA-imaging. In this paper, we present a novel algorithm for high-resolution ISAR imaging and scaling from SA data, which effectively incorporates the translational motion phase error and MTRC corrections. In this algorithm, the ISAR image formation is converted into a sparsity-driven optimization via maximum a posterior (MAP) estimation, where the statistics of an ISAR image is modeled as complex Laplace distribution to provide a sparse prior. The translational motion phase error compensation and cross-range MTRC correction are modeled as joint range-invariant and range-variant phase error corrections in the range-compressed phase history domain. Our proposed imaging approach is performed by a two-step process: 1) the range-invariant and range-variant phase error estimations using a metric of minimum entropy are employed and solved by using a coordinate descent method to realize a coarse phase error correction. Meanwhile, the rotational motion can be obtained from the estimation of range-variant phase errors, which is used for ISAR scaling in the cross-range dimension; 2) under a two-dimensional (2-D) Fourier-based dictionary by involving the slant-range MTRC, joint MTRC-corrected ISAR imaging and accurate phase adjustment are realized by solving the sparsity-driven optimization with SA data, where the residual phase errors are treated as model error and removed to achieve a fine correction. Finally, some experiments based on simulated and measured data are performed to confirm the effectiveness of the proposed algorithm.
机译:在高分辨率雷达成像中,目标的旋转运动通常会在反向合成孔径雷达(ISAR)图像中通过分辨率单元(MTRC)产生迁移。通常,在稀疏孔径(SA)数据上实现精确的MTRC校正是一项挑战,这往往会降低平移运动补偿和SA成像的性能。在本文中,我们提出了一种用于从SA数据进行高分辨率ISAR成像和缩放的新颖算法,该算法有效地整合了平移运动相位误差和MTRC校正。在此算法中,ISAR图像的形成通过最大后验(MAP)估计转换为稀疏驱动的优化,其中将ISAR图像的统计数据建模为复杂的Laplace分布以提供稀疏的先验。在范围压缩的相位历史域中,将平移运动相位误差补偿和跨范围MTRC校正建模为联合范围不变和范围可变相位误差校正。我们提出的成像方法是通过两步过程执行的:1)采用最小熵度量的距离不变和距离可变相位误差估计,并通过使用坐标下降法解决粗相位误差校正。同时,可以从范围可变相位误差的估计中获得旋转运动,该估计用于跨范围维度中的ISAR缩放; 2)在基于二维(2-D)傅立叶的字典中,通过涉及倾斜范围MTRC,通过解决SA数据的稀疏驱动优化来实现联合MTRC校正的ISAR成像和精确的相位调整,其中残留相位误差被视为模型误差,并被去除以进行精细校正。最后,基于仿真和实测数据进行了一些实验,以验证该算法的有效性。

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