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Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction

机译:基于相干马尔可夫随机场的不可靠DSM区域分割和InSAR DEM重构的分层自适应曲面拟合

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摘要

A digital elevation model (DEM) can be obtained by removing ground objects, such as buildings, in a digital surface model (DSM) generated by the interferometric synthetic aperture radar (InSAR) system. However, the imaging mechanism will cause unreliable DSM areas such as layover and shadow in the building areas, which seriously affect the elevation accuracy of the DEM generated from the DSM. Driven by above problem, this paper proposed a novel DEM reconstruction method. Coherent Markov random field (CMRF) was first used to segment unreliable DSM areas. With the help of coherence coefficients and residue information provided by the InSAR system, CMRF has shown better segmentation results than traditional traditional Markov random field (MRF) which only use fixed parameters to determine the neighborhood energy. Based on segmentation results, the hierarchical adaptive surface fitting (with gradually changing the grid size and adaptive threshold) was set up to locate the non-ground points. The adaptive surface fitting was superior to the surface fitting-based method with fixed grid size and threshold of height differences. Finally, interpolation based on an inverse distance weighted (IDW) algorithm combining coherence coefficient was performed to reconstruct a DEM. The airborne InSAR data from the Institute of Electronics, Chinese Academy of Sciences has been researched, and the experimental results show that our method can filter out buildings and identify natural terrain effectively while retaining most of the terrain features.
机译:可以通过在干涉合成孔径雷达(InSAR)系统生成的数字表面模型(DSM)中移除地面对象(例如建筑物)来获得数字高程模型(DEM)。但是,成像机制将在建筑物区域中引起不可靠的DSM区域,例如中转和阴影,严重影响从DSM生成的DEM的高程精度。在上述问题的驱动下,提出了一种新的DEM重建方法。相干马尔可夫随机场(CMRF)首先用于分割不可靠的DSM区域。借助InSAR系统提供的相干系数和残差信息,与仅使用固定参数确定邻域能量的传统传统马尔可夫随机场(MRF)相比,CMRF表现出更好的分割结果。根据分割结果,建立分层自适应曲面拟合(逐渐改变网格大小和自适应阈值)以定位非地面点。自适应曲面拟合优于固定网格大小和高度差阈值的基于曲面拟合的方法。最后,基于结合相干系数的逆距离加权(IDW)算法进行插值,以重建DEM。对来自中国科学院电子学研究所的机载InSAR数据进行了研究,实验结果表明,我们的方法可以在保留大多数地形特征的同时,有效过滤建筑物并识别自然地形。

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