Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis

The objectives of the study are to integrate the conditional Latin Hypercube Sampling (cLHS), sequential Gaussian simulation (SGS) and spatial analysis in remotely sensed images, to monitor the effects of large chronological disturbances on spatial characteristics of landscape changes including spat...

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Main Authors: Hone-Jay Chu, Yu-Pin Lin, Yu-Long Huang, Yung-Chieh Wang
Format: Article
Language:English
Published: MDPI AG 2009-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/9/9/6670/
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spelling doaj-16f056f8f89642ac9f54d3f726c942862020-11-25T01:26:16ZengMDPI AGSensors1424-82202009-08-01996670670010.3390/s90906670Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial AnalysisHone-Jay ChuYu-Pin LinYu-Long HuangYung-Chieh WangThe objectives of the study are to integrate the conditional Latin Hypercube Sampling (cLHS), sequential Gaussian simulation (SGS) and spatial analysis in remotely sensed images, to monitor the effects of large chronological disturbances on spatial characteristics of landscape changes including spatial heterogeneity and variability. The multiple NDVI images demonstrate that spatial patterns of disturbed landscapes were successfully delineated by spatial analysis such as variogram, Moran’I and landscape metrics in the study area. The hybrid method delineates the spatial patterns and spatial variability of landscapes caused by these large disturbances. The cLHS approach is applied to select samples from Normalized Difference Vegetation Index (NDVI) images from SPOT HRV images in the Chenyulan watershed of Taiwan, and then SGS with sufficient samples is used to generate maps of NDVI images. In final, the NDVI simulated maps are verified using indexes such as the correlation coefficient and mean absolute error (MAE). Therefore, the statistics and spatial structures of multiple NDVI images present a very robust behavior, which advocates the use of the index for the quantification of the landscape spatial patterns and land cover change. In addition, the results transferred by Open Geospatial techniques can be accessed from web-based and end-user applications of the watershed management. http://www.mdpi.com/1424-8220/9/9/6670/spatial analysisLatin hypercube samplingconditional simulationlandscape metricsland cover changeremotely sensed imagesgeostatisticsGoogle Earth
collection DOAJ
language English
format Article
sources DOAJ
author Hone-Jay Chu
Yu-Pin Lin
Yu-Long Huang
Yung-Chieh Wang
spellingShingle Hone-Jay Chu
Yu-Pin Lin
Yu-Long Huang
Yung-Chieh Wang
Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
Sensors
spatial analysis
Latin hypercube sampling
conditional simulation
landscape metrics
land cover change
remotely sensed images
geostatistics
Google Earth
author_facet Hone-Jay Chu
Yu-Pin Lin
Yu-Long Huang
Yung-Chieh Wang
author_sort Hone-Jay Chu
title Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
title_short Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
title_full Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
title_fullStr Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
title_full_unstemmed Detecting the Land-Cover Changes Induced by Large-Physical Disturbances Using Landscape Metrics, Spatial Sampling, Simulation and Spatial Analysis
title_sort detecting the land-cover changes induced by large-physical disturbances using landscape metrics, spatial sampling, simulation and spatial analysis
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2009-08-01
description The objectives of the study are to integrate the conditional Latin Hypercube Sampling (cLHS), sequential Gaussian simulation (SGS) and spatial analysis in remotely sensed images, to monitor the effects of large chronological disturbances on spatial characteristics of landscape changes including spatial heterogeneity and variability. The multiple NDVI images demonstrate that spatial patterns of disturbed landscapes were successfully delineated by spatial analysis such as variogram, Moran’I and landscape metrics in the study area. The hybrid method delineates the spatial patterns and spatial variability of landscapes caused by these large disturbances. The cLHS approach is applied to select samples from Normalized Difference Vegetation Index (NDVI) images from SPOT HRV images in the Chenyulan watershed of Taiwan, and then SGS with sufficient samples is used to generate maps of NDVI images. In final, the NDVI simulated maps are verified using indexes such as the correlation coefficient and mean absolute error (MAE). Therefore, the statistics and spatial structures of multiple NDVI images present a very robust behavior, which advocates the use of the index for the quantification of the landscape spatial patterns and land cover change. In addition, the results transferred by Open Geospatial techniques can be accessed from web-based and end-user applications of the watershed management.
topic spatial analysis
Latin hypercube sampling
conditional simulation
landscape metrics
land cover change
remotely sensed images
geostatistics
Google Earth
url http://www.mdpi.com/1424-8220/9/9/6670/
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