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

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 b...

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Main Authors: Qian Qian, Bingnan Wang, Xiaoning Hu, Maosheng Xiang
Format: Article
Language:English
Published: MDPI AG 2020-03-01
Series:Sensors
Subjects:
dem
dsm
Online Access:https://www.mdpi.com/1424-8220/20/5/1414
id doaj-8fc8d652b19f42c7b0017bae4e5e8409
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spelling doaj-8fc8d652b19f42c7b0017bae4e5e84092020-11-25T03:02:16ZengMDPI AGSensors1424-82202020-03-01205141410.3390/s20051414s20051414Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM ReconstructionQian Qian0Bingnan Wang1Xiaoning Hu2Maosheng Xiang3National Key Laboratory of Microwave Imaging Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, ChinaNational Key Laboratory of Microwave Imaging Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, ChinaNational Key Laboratory of Microwave Imaging Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, ChinaNational Key Laboratory of Microwave Imaging Technology, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100190, ChinaA 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.https://www.mdpi.com/1424-8220/20/5/1414coherence coefficientdemdsmhierarchical adaptive surface fittinginsarmarkov random fieldresidue
collection DOAJ
language English
format Article
sources DOAJ
author Qian Qian
Bingnan Wang
Xiaoning Hu
Maosheng Xiang
spellingShingle Qian Qian
Bingnan Wang
Xiaoning Hu
Maosheng Xiang
Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
Sensors
coherence coefficient
dem
dsm
hierarchical adaptive surface fitting
insar
markov random field
residue
author_facet Qian Qian
Bingnan Wang
Xiaoning Hu
Maosheng Xiang
author_sort Qian Qian
title Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
title_short Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
title_full Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
title_fullStr Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
title_full_unstemmed Coherent Markov Random Field-Based Unreliable DSM Areas Segmentation and Hierarchical Adaptive Surface Fitting for InSAR DEM Reconstruction
title_sort coherent markov random field-based unreliable dsm areas segmentation and hierarchical adaptive surface fitting for insar dem reconstruction
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-03-01
description 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.
topic coherence coefficient
dem
dsm
hierarchical adaptive surface fitting
insar
markov random field
residue
url https://www.mdpi.com/1424-8220/20/5/1414
work_keys_str_mv AT qianqian coherentmarkovrandomfieldbasedunreliabledsmareassegmentationandhierarchicaladaptivesurfacefittingforinsardemreconstruction
AT bingnanwang coherentmarkovrandomfieldbasedunreliabledsmareassegmentationandhierarchicaladaptivesurfacefittingforinsardemreconstruction
AT xiaoninghu coherentmarkovrandomfieldbasedunreliabledsmareassegmentationandhierarchicaladaptivesurfacefittingforinsardemreconstruction
AT maoshengxiang coherentmarkovrandomfieldbasedunreliabledsmareassegmentationandhierarchicaladaptivesurfacefittingforinsardemreconstruction
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