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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >High-Resolution ISAR Imaging and Motion Compensation With 2-D Joint Sparse Reconstruction
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High-Resolution ISAR Imaging and Motion Compensation With 2-D Joint Sparse Reconstruction

机译:高分辨率ISAR成像和2-D关节重建的运动补偿

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摘要

With regard to the multifunction radar transmitting sparse stepped-frequency-modulation (SSFM) signal for inverse synthetic aperture radar (ISAR) imaging, the received echo signal is usually sparse in two dimensions, i.e., sparse stepped-frequency-modulation and sparse aperture waveforms (SSFM-SAWs), and there are translational and rotational motion errors between subpulses. The two problems seriously challenge the feasibility of conventional 1-D sparse reconstruction algorithms. This article proposes a novel high-resolution ISAR imaging and motion compensation with the 2-D joint sparse reconstruction (2D-JSR) algorithm. In this technique, a 2D-JSR dictionary is established according to the SSFM-SAW signal model. Based on the Bayesian compressive sensing (BCS) theory, the 2D-JSR is then transformed into solving a sparsity-driven optimization problem with -norm constraint. With the accommodation of a modified quasi-Newton solver, the exact recovery of SSFM-SAW can be achieved. In addition, a new algorithm, named joint translational motion compensation and range spatial-variant autofocus (JTSVA) algorithm, is also developed to realize motion parameters by a two-step estimation. Integrating with 2-D coupling information of echo signal and the efficient and robust motion compensation algorithm, the accurate motion parameters together with well-focused and scaled high-resolution ISAR images can be obtained. Extensive experiments based on both simulated and real data demonstrate that the proposed algorithm is capable of the precise reconstruction of ISAR images and the effective suppression of both motion errors and noise.
机译:关于多功能雷达发送稀疏循环频率调制(SSFM)信号用于逆合成孔径雷达(ISAR)成像,所接收的回声信号通常稀疏,两维,即稀疏的阶梯式 - 频率调制和稀疏孔径波形(SSFM-SAWS),副之间存在平移和旋转运动误差。这两个问题严重挑战了传统的1-D稀疏重建算法的可行性。本文提出了一种新的高分辨率ISAR成像和与二维关节稀疏重建(2D-JSR)算法的运动补偿。在该技术中,根据SSFM-SAW信号模型建立2D-JSR字典。基于贝叶斯压缩传感(BCS)理论,然后将2D-JSR转换为求解稀疏性驱动的优化问题--norm约束。随着修改的准牛顿求解器的住宿,可以实现SSFM锯的精确恢复。另外,还开发了一种新的算法,命名联合转换运动补偿和范围空间变量自动对焦(JTSVA)算法以通过两步估计实现运动参数。集成与回声信号的2-D耦合信息和高效且鲁棒运动补偿算法,可以获得具有良好聚焦和缩放的高分辨率ISAR图像的精确运动参数。基于模拟和实数据的广泛实验表明,所提出的算法能够精确地重建ISAR图像和运动误差和噪声的有效抑制。

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