De-noising method of InSAR data based on empirical mode decomposition and land deformation monitoring application

L. Wang, Fu Chen, Zengke Li, Shaoliang Zhang
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引用次数: 1

Abstract

The applicable choice of filters for InSAR is one of the key procedures, which is associated with the quality of interferogram. The data of InSAR interferogram was decomposed by empirical mode decomposition (EMD). A given signal was decomposed into different Intrinsic Mode Functions (IMFs) filled with the condition. Further investigation of the algorithm is demonstrated below with regard to the multi-resolution standpoint. Empirical mode decomposition includes two operators. The IMF calculation operator and residual calculation operator define the process of similar to high frequency and low frequency filters. Then, the multi-solution structure is realized by decomposing the low frequency step by step. Therefore, the filtered noise-related IMFs together with the other IMFs can be used to restructure the denoised signal. The processing result has confirmed this method feasibility. Comparing the empirical mode decomposition with the general methods, such as median filter, Lee filter, Goldstein filter, using the quantitative evaluation index, i.e., standard deviation (STD) and equivalent number of looks (ENL), the result shows that empirical mode decomposition is powerful to interferogram speckle noise suppression and residues reduction, as well as it can be preserved details information. The method proposed can improve the accuracy of interferometric products.
基于经验模态分解的InSAR数据去噪方法及陆地变形监测应用
InSAR滤光片的选择是干涉图质量的关键环节之一。利用经验模态分解(EMD)对InSAR干涉图数据进行分解。将给定的信号分解成充满条件的不同的本征模态函数(IMFs)。下面将从多分辨率的角度进一步研究该算法。经验模态分解包括两个算子。IMF计算算子和残差计算算子定义了类似于高频滤波器和低频滤波器的过程。然后,通过逐步分解低频信号实现多解结构。因此,滤波后的与噪声相关的imf和其他imf可以用来重构去噪信号。加工结果证实了该方法的可行性。利用标准偏差(STD)和等效外观数(ENL)作为定量评价指标,将经验模态分解与中值滤波、Lee滤波、Goldstein滤波等常规方法进行比较,结果表明,经验模态分解对干涉图散斑噪声抑制和残差去除效果显著,且能保留细节信息。该方法可提高干涉测量产品的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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