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A Fast Offset Estimation Approach for InSAR Image Subpixel Registration

机译:InSAR图像亚像素配准的快速偏移估计方法

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摘要

A fast offset estimation approach for interferometric synthetic aperture radar (InSAR) image pair subpixel registration is proposed for cases of relatively gentle topography and/or short baseline. A coarse-to-fine registration strategy is taken. The pixel-level offset is estimated in the coarse registration step by a fast feature-based estimation, which uses the speeded up robust feature operator and fast least trimmed squares (Fast-LTS) estimator to accelerate the feature extraction and parameter estimation. A fine registration is performed subsequently. The conventional normalized cross-correlation algorithm (NCCA) searches for the optimal subpixel offset by oversampling either the coarse cross correlation or the InSAR image patch pair. The offset estimation accuracy is restricted by the oversampling rate, and the computational burden is heavy when high accuracy is demanded. In this letter, we transform the oversampling and correlation searching process of NCCA into a nonlinear optimization problem, which takes the maximization of the coherent cross correlation as the objective function; by solving it, the subpixel offset can be fast and exactly obtained without any image oversampling. The final registration parameters are inverted by Fast-LTS fitting of a series of subpixel tie point correspondences which can be constructed after applying the approach to several image patch pairs. RadarSat-2 data are used to test the approach, and the results show that it performs very well not only on the speed but also on the accuracy.
机译:针对地形相对较缓和/或基线较短的情况,提出了一种用于干涉式合成孔径雷达(InSAR)图像对子像素配准的快速偏移估计方法。采取从粗到精的注册策略。通过基于快速特征的估计,在粗配准步骤中估计像素级偏移,该估计使用加速的鲁棒特征算子和快速最小修整平方(Fast-LTS)估计器来加速特征提取和参数估计。随后执行精细注册。常规归一化互相关算法(NCCA)通过对粗互相关或InSAR图像补丁对进行过采样来搜索最佳子像素偏移。偏移估计精度受到过采样率的限制,并且在要求高精度时计算量很大。在本文中,我们将NCCA的过采样和相关搜索过程转换为非线性优化问题,该问题以相干互相关的最大化为目标函数。通过解决这个问题,可以快速准确地获得亚像素偏移,而无需任何图像过采样。通过一系列子像素联系点对应关系的Fast-LTS拟合,可以反转最终配准参数,可以在将方法应用到多个图像补丁对之后构造这些子对应关系点。 RadarSat-2数据用于测试该方法,结果表明它不仅在速度上而且在精度上都表现出色。

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