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Geo-Positioning Accuracy Improvement of Multi-Mode GF-3 Satellite SAR Imagery Based on Error Sources Analysis

机译:基于误差源分析的多模式GF-3卫星SAR图像地理定位精度提高

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摘要

The GaoFen-3 (GF-3) satellite is the only synthetic aperture radar (SAR) satellite in the High-Resolution Earth Observation System Project, which is the first C-band full-polarization SAR satellite in China. In this paper, we proposed some error sources-based weight strategies to improve the geometric performance of multi-mode GF-3 satellite SAR images without using ground control points (GCPs). To get enough tie points, a robust SAR image registration method and the SAR-features from accelerated segment test (SAR-FAST) method is used to achieve the image registration and tie point extraction. Then, the original position of these tie points in object-space is calculated with the help of the space intersection method. With the dataset clustered by the density-based spatial clustering of applications with noise (DBSCAN) algorithm, we undertake the block adjustment with a bias-compensated rational function model (RFM) aided to improve the geometric performance of these multi-mode GF-3 satellite SAR images. Different weight strategies are proposed to develop the normal equation matrix according to the error sources analysis of GF-3 satellite SAR images, and the preconditioned conjugate gradient (PCG) method is utilized to solve the normal equation. The experimental results indicate that our proposed method can improve the geometric positioning accuracy of GF-3 satellite SAR images within 2 pixels.
机译:高分3号(GF-3)卫星是高分辨率地球观测系统项目中唯一的合成孔径雷达(SAR)卫星,这是中国第一颗C波段全极化SAR卫星。在本文中,我们提出了一些基于误差源的权重策略,以在不使用地面控制点(GCP)的情况下改善多模式GF-3卫星SAR图像的几何性能。为了获得足够的联系点,使用了鲁棒的SAR图像配准方法和来自加速段测试的SAR特征(SAR-FAST)方法来实现图像配准和联系点提取。然后,借助空间相交方法计算这些联系点在对象空间中的原始位置。通过基于噪声的应用程序的基于密度的空间聚类(DBSCAN)算法对数据集进行聚类,我们使用偏置补偿有理函数模型(RFM)进行了块调整,以帮助改善这些多模GF-3的几何性能卫星SAR图像。针对GF-3卫星SAR图像的误差来源,提出了不同的权重策略来建立正则方程矩阵,并利用预处理共轭梯度法(PCG)求解了正则方程。实验结果表明,该方法可以提高GF-3卫星SAR图像2个像素以内的几何定位精度。

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