Sparse Aperture Three-dimensional Reconstruction of Precession Target Based on Compressed Sensing

Xingyu He, W. Feng, Jun Li, Xiaoyue Ren
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Abstract

As a kind of high speed rotation object, precession target is faced with migration through resolution cell (MTRC) in long synthetic aperture while using translational inverse synthetic aperture radar (ISAR) imaging algorithm. Compressed sensing (CS), by which we can exact recovery sparse signal from very limited samples, suggests that sparse aperture imaging of precession target maybe achievable. A cyclic shift algorithm based on CS is proposed in this paper to exploit the sparse apertures data for high-resolution ISAR imaging. The sparse signal recovery and imaging of precession target is achieved coupled with FOCUSS (focal undetermined system solver) algorithm. A conventional ISAR imaging is a two-dimensional (2-D) range-Doppler projection of a target and does not provide three-dimensional (3-D) information which is more reliable. For missile shaped like a flat-bottom cone, multistatic ISAR geometry model is built, and a 3-D reconstruction method, which is featured with stable structure characteristics, is proposed based on multistatic ISAR images. Simulation and real data results verify the validity and superiority of the proposed method.
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基于压缩感知的进动目标稀疏孔径三维重建
旋进目标作为一种高速旋转目标,在采用平移逆合成孔径雷达(ISAR)成像算法时,面临着在大合成孔径下通过分辨单元(MTRC)进行偏移的问题。压缩感知(CS)可以从非常有限的样本中精确地恢复稀疏信号,这表明对进动目标进行稀疏孔径成像是可行的。为了利用稀疏孔径数据进行高分辨率ISAR成像,提出了一种基于CS的循环移位算法。结合FOCUSS (focal undetermined system solver)算法实现了进动目标的稀疏信号恢复和成像。传统的ISAR成像是目标的二维(2d)距离多普勒投影,不提供更可靠的三维(3d)信息。针对平面锥型导弹,建立了多基地ISAR几何模型,提出了一种基于多基地ISAR图像的具有稳定结构特征的三维重建方法。仿真和实际数据验证了该方法的有效性和优越性。
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