次采样对SAR成像距离偏移校正的初步结果

K. Windham, N. Goodman
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引用次数: 0

摘要

压缩感知(CS)正在成为一种流行的数据采集和图像重建技术。然而,稀疏重建往往涉及到大型方程组的迭代反演。研究了慢时子采样对合成孔径雷达距离偏移算法的影响。目标是考虑将传统的图像形成步骤(如距离曲率校正)与CS方法合并用于稀疏重建的方法。如果高阶相位补偿仍然可以通过现有算法执行,那么可能通过一组并行的减小尺寸的稀疏重建而不是一个大的重建来执行图像形成。我们研究了距离偏移校正,并评估了分布在整个视场和不同压缩水平下的散射体的成像函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary results on subsampling effects on range migration correction in SAR imaging
Compressive sensing (CS) is becoming a popular technique for data acquisition and image reconstruction. However, sparse reconstruction often involves iterative inversion of a large system of equations. This paper explores the effects of slow-time subsampling on the Range Migration Algorithm (RMA) for Synthetic Aperture Radar (SAR). The objective is to consider methods of merging traditional image formation steps, such as range curvature correction, with CS methods for sparse reconstruction. If higher-order phase compensations can still be performed via existing algorithms, then it may be possible to perform image formation via a parallel set of reduced-size sparse reconstructions rather than one large reconstruction. We study range migration correction and evaluate the imaging function for scatterers distributed across the field of view and for various compression levels.
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