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Autofocus and analysis of geometrical errors within the framework of Fast Factorized Back-Projection

机译:快速分解反投影框架内的自动聚焦和几何误差分析

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This paper describes a Fast Factorized Back-Projection (FFBP) formulation that includes a fully integrated autofocus algorithm, i.e. the Factorized Geometrical Autofocus (FGA) algorithm. The base-two factorization is executed in a horizontal plane, using a Merging (M) and a Range History Preserving (RHP) transform. Six parameters are adopted for each sub-aperture pair, i.e. to establish the geometry stage-by-stage via triangles in 3-dimensional space. If the parameters are derived from navigation data, the algorithm is used as a conventional processing chain. If the parameters on the other hand are varied from a certain factorization step and forward, the algorithm is used as a joint image formation and autofocus strategy. By regulating the geometry at multiple resolution levels, challenging defocusing effects, e.g. residual space-variant Range Cell Migration (RCM), can be corrected. The new formulation also serves another important purpose, i.e. as a parameter characterization scheme. By using the FGA algorithm and its inverse, relations between two arbitrary geometries can be studied, in consequence, this makes it feasible to analyze how errors in navigation data, and topography, affect image focus. The versatility of the factorization procedure is demonstrated successfully on simulated Synthetic Aperture Radar (SAR) data. This is achieved by introducing different GPS/IMU errors and Focus Target Plane (FTP) deviations prior to processing. The characterization scheme is then employed to evaluate the sensitivity, to determine at what step the autofocus function should be activated, and to decide the number of necessary parameters at each step. Resulting FGA images are also compared to a reference image (processed without errors and autofocus) and to a defocused image (processed without autofocus), i.e. to validate the novel approach further.
机译:本文介绍了一种快速因子分解背投影(FFBP)公式,其中包括完全集成的自动聚焦算法,即因子分解几何自动聚焦(FGA)算法。使用合并(M)和范围历史保留(RHP)转换在水平面中执行基数二分解。每个子孔径对采用六个参数,即通过三维空间中的三角形逐步建立几何形状。如果参数是从导航数据派生的,则该算法将用作常规处理链。另一方面,如果参数从某个分解步骤向前变化,则该算法将用作联合图像形成和自动聚焦策略。通过在多个分辨率级别上调节几何形状,可以挑战散焦效果,例如可以纠正残留的空间变量距离单元迁移(RCM)。新配方还具有另一个重要目的,即作为参数表征方案。通过使用FGA算法及其逆函数,可以研究两个任意几何形状之间的关系,从而使分析导航数据和地形的误差如何影响图像聚焦成为可能。在模拟的合成孔径雷达(SAR)数据上已成功证明了分解过程的多功能性。这是通过在处理之前引入不同的GPS / IMU错误和聚焦目标平面(FTP)偏差来实现的。然后,采用表征方案来评估灵敏度,确定应在哪一步激活自动聚焦功能以及确定每一步所需参数的数量。还将得到的FGA图像与参考图像(没有错误和自动聚焦的处理)和散焦图像(没有自动聚焦的处理)进行比较,以进一步验证该新颖方法。

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