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Autofocus algorithm for radar/sonar imaging by exploiting the continuity structure

机译:利用连续性结构的雷达/声纳成像自动聚焦算法

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In this paper, a sparsity-driven auto-focus technique is developed for radar/sonar imaging by exploiting the continuity structure of the target scene under Bayesian framework. After range compression, structured sparse prior is imposed in a statistical manner on each range cell to encourage the continuities in cross-range domain by clustering the scatterers with nonzero magnitudes. Based on a statistical framework, the proposed algorithm can simultaneously cope with structured sparse recovery and phase error correction problem. Focused high-resolution radar image can be obtained by iteratively estimating scattering coefficients and phase error. Compared to previous sparsity-driven auto-focus approaches, the proposed algorithm can desirably preserve the target region, alleviate over-shrinkage problem and consequently yield more accurate phase error estimate due to the structured sparse constraint. The simulation results demonstrate that the proposed algorithm can obtain more concentrated images within a small number of iterations, particularly in low SNR and heavily smeared scenarios.
机译:在本文中,利用贝叶斯框架下目标场景的连续性结构,开发了一种稀疏驱动的自动聚焦技术,用于雷达/声纳成像。范围压缩后,以统计方式将结构化稀疏先验强加于每个范围单元,以通过将散射体与非零大小进行聚类来鼓励跨范围域的连续性。该算法基于统计框架,可以同时解决结构化稀疏恢复和相位误差校正问题。可以通过迭代估计散射系数和相位误差来获得聚焦的高分辨率雷达图像。与以前的稀疏驱动自动聚焦方法相比,该算法可理想地保留目标区域,减轻过度收缩的问题,并由于结构化的稀疏约束而产生更准确的相位误差估计。仿真结果表明,所提出的算法可以在少量迭代中获得更集中的图像,尤其是在低SNR和严重拖尾的情况下。

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