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An Adaptive Phase Optimization Algorithm for Distributed Scatterer Phase History Retrieval

机译:分布式散射阶段历史检索的自适应相优化算法

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摘要

The multitemporal interferometric synthetic aperture radar (InSAR) technique based on distributed scatterers (DSs) has been widely applied in high-precision deformation measurements, which compensates for the drawback that the persistent scatterer InSAR technique does not obtain sufficient monitoring points, especially in rural areas. Considering that DS pixels are susceptible to various decorrelation factors, it is necessary to retrieve the optimal phase series by phase optimization algorithms (POAs). However, conventional POAs rely on a sample covariance matrix or complex coherence matrix (CCM) derived by spatially averaging statistically homogeneous pixel neighborhoods, which may blur and destroy phase information, especially in dense fringe areas. To overcome this limitation, an adaptive POA is proposed in this article. The adaptive POA artificially constructs a superior CCM by the filtered interferometric phase, which is derived through spatial adaptive filtering approach fusion of principal phase component estimation and fast nonlocal means filtering, and an accurate coherence matrix determined via coherence estimation bias correction. Moreover, the modified eigen-decomposition-based maximum-likelihood-estimator of the interferometric phase (EMI) with coherence-power-weighting is proposed to further improve the estimation precision and computational efficiency. The estimated CCM is then processed with the modified coherence-power-weighted EMI algorithm, and the optimal phase history is retrieved. The experimental results validated against both simulated and Sentinel-1A data demonstrate the superior optimization performance and robustness of the adaptive POA over traditional POAs.
机译:基于分布式散射仪(DSS)的多型干涉性合成孔径雷达(INSAR)技术已广泛应用于高精度变形测量,这补偿了持久散射体INSAR技术未获得足够的监测点,特别是在农村地区的缺点。考虑到DS像素易于各种去序列因子,有必要通过相位优化算法(POAs)检索最佳相位系列。然而,传统的POA依赖于通过空间平均统计上均匀像素邻域来源的样本协方差矩阵或复杂的相干矩阵(CCM),其可以模糊和破坏相位信息,尤其是在致密的边缘区域中。为了克服这种限制,本文提出了一种自适应PoA。自适应POA通过滤波的干涉式相位人工构造优异的CCM,其通过主相组分估计和快速非局部意义滤波的空间自适应滤波方法融合来导出,以及通过相干估计偏压校正确定的精确相干矩阵。此外,提出了具有相干功率加权的干涉式相位(EMI)的改进的特征分解的最大似然估计,以进一步提高估计精度和计算效率。然后用修改的相干功率加权EMI算法处理估计的CCM,检索最佳相位历史。针对模拟和哨兵-1A数据验证的实验结果验证了传统POA的适应性POA的优化优化性能和鲁棒性。

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