Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images

As demonstrated in prior studies, InSAR holds great potential for land cover classification, especially considering its wide coverage and transparency to climatic conditions. In addition to features such as backscattering coefficient and phase coherence, the temporal migration in InSAR signatures pr...

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Main Authors: Hye-Won Yun, Jung-Rack Kim, Yun-Soo Choi, Shih-Yuan Lin
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/12/2830
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spelling doaj-249e852a259847b68b63612865bc3f922020-11-25T01:40:07ZengMDPI AGSensors1424-82202019-06-011912283010.3390/s19122830s19122830Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR ImagesHye-Won Yun0Jung-Rack Kim1Yun-Soo Choi2Shih-Yuan Lin3Department of Geoinformatics, University of Seoul, Seoulsiripdaero 163, Dongdaemum-gu, Seoul 02504, KoreaDepartment of Geoinformatics, University of Seoul, Seoulsiripdaero 163, Dongdaemum-gu, Seoul 02504, KoreaDepartment of Geoinformatics, University of Seoul, Seoulsiripdaero 163, Dongdaemum-gu, Seoul 02504, KoreaDepartment of Land Economics, National Chengchi University, No. 64, Sec. 2, Zhinan Road, Wenshan District, Taipei 116, TaiwanAs demonstrated in prior studies, InSAR holds great potential for land cover classification, especially considering its wide coverage and transparency to climatic conditions. In addition to features such as backscattering coefficient and phase coherence, the temporal migration in InSAR signatures provides information that is capable of discriminating types of land cover in target area. The exploitation of InSAR signatures was expected to provide merits to trace land cover change in extensive areas; however, the extraction of suitable features from InSAR signatures was a challenging task. Combining time series amplitudes and phase coherences through linear and nonlinear compressions, we showed that the InSAR signatures could be extracted and transformed into reliable classification features for interpreting land cover types. The prototype was tested in mountainous areas that were covered with a dense vegetation canopy. It was demonstrated that InSAR time series signature analyses reliably identified land cover types and also recognized tracing of temporal land cover change. Based on the robustness of the developed scheme against the temporal noise components and the availability of advanced spatial and temporal resolution SAR data, classification of finer land cover types and identification of stable scatterers for InSAR time series techniques can be expected. The advanced spatial and temporal resolution of future SAR assets combining the scheme in this study can be applicable for various important applications including global land cover changes monitoring.https://www.mdpi.com/1424-8220/19/12/2830InSARtime seriesland cover classification
collection DOAJ
language English
format Article
sources DOAJ
author Hye-Won Yun
Jung-Rack Kim
Yun-Soo Choi
Shih-Yuan Lin
spellingShingle Hye-Won Yun
Jung-Rack Kim
Yun-Soo Choi
Shih-Yuan Lin
Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
Sensors
InSAR
time series
land cover classification
author_facet Hye-Won Yun
Jung-Rack Kim
Yun-Soo Choi
Shih-Yuan Lin
author_sort Hye-Won Yun
title Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
title_short Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
title_full Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
title_fullStr Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
title_full_unstemmed Analyses of Time Series InSAR Signatures for Land Cover Classification: Case Studies over Dense Forestry Areas with L-Band SAR Images
title_sort analyses of time series insar signatures for land cover classification: case studies over dense forestry areas with l-band sar images
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-06-01
description As demonstrated in prior studies, InSAR holds great potential for land cover classification, especially considering its wide coverage and transparency to climatic conditions. In addition to features such as backscattering coefficient and phase coherence, the temporal migration in InSAR signatures provides information that is capable of discriminating types of land cover in target area. The exploitation of InSAR signatures was expected to provide merits to trace land cover change in extensive areas; however, the extraction of suitable features from InSAR signatures was a challenging task. Combining time series amplitudes and phase coherences through linear and nonlinear compressions, we showed that the InSAR signatures could be extracted and transformed into reliable classification features for interpreting land cover types. The prototype was tested in mountainous areas that were covered with a dense vegetation canopy. It was demonstrated that InSAR time series signature analyses reliably identified land cover types and also recognized tracing of temporal land cover change. Based on the robustness of the developed scheme against the temporal noise components and the availability of advanced spatial and temporal resolution SAR data, classification of finer land cover types and identification of stable scatterers for InSAR time series techniques can be expected. The advanced spatial and temporal resolution of future SAR assets combining the scheme in this study can be applicable for various important applications including global land cover changes monitoring.
topic InSAR
time series
land cover classification
url https://www.mdpi.com/1424-8220/19/12/2830
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AT yunsoochoi analysesoftimeseriesinsarsignaturesforlandcoverclassificationcasestudiesoverdenseforestryareaswithlbandsarimages
AT shihyuanlin analysesoftimeseriesinsarsignaturesforlandcoverclassificationcasestudiesoverdenseforestryareaswithlbandsarimages
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