Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil

Development of efficient methodologies for mapping wetland vegetation is of key importance to wetland conservation. Here we propose the integration of a number of statistical techniques, in particular cluster analysis, universal kriging and error propagation modelling, to integrate observations from...

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Main Authors: J. Arieira, D. Karssenberg, S. M. de Jong, E. A. Addink, E. G. Couto, C. Nunes da Cunha, J. O. Skøien
Format: Article
Language:English
Published: Copernicus Publications 2011-03-01
Series:Biogeosciences
Online Access:http://www.biogeosciences.net/8/667/2011/bg-8-667-2011.pdf
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spelling doaj-fe9394ad51cb46eb8e2ba7f4cf5968bf2020-11-25T01:41:22ZengCopernicus PublicationsBiogeosciences1726-41701726-41892011-03-018366768610.5194/bg-8-667-2011Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, BrazilJ. ArieiraD. KarssenbergS. M. de JongE. A. AddinkE. G. CoutoC. Nunes da CunhaJ. O. SkøienDevelopment of efficient methodologies for mapping wetland vegetation is of key importance to wetland conservation. Here we propose the integration of a number of statistical techniques, in particular cluster analysis, universal kriging and error propagation modelling, to integrate observations from remote sensing and field sampling for mapping vegetation communities and estimating uncertainty. The approach results in seven vegetation communities with a known floral composition that can be mapped over large areas using remotely sensed data. The relationship between remotely sensed data and vegetation patterns, captured in four factorial axes, were described using multiple linear regression models. There were then used in a universal kriging procedure to reduce the mapping uncertainty. Cross-validation procedures and Monte Carlo simulations were used to quantify the uncertainty in the resulting map. Cross-validation showed that accuracy in classification varies according with the community type, as a result of sampling density and configuration. A map of uncertainty derived from Monte Carlo simulations revealed significant spatial variation in classification, but this had little impact on the proportion and arrangement of the communities observed. These results suggested that mapping improvement could be achieved by increasing the number of field observations of those communities with a scattered and small patch size distribution; or by including a larger number of digital images as explanatory variables in the model. Comparison of the resulting plant community map with a flood duration map, revealed that flooding duration is an important driver of vegetation zonation. This mapping approach is able to integrate field point data and high-resolution remote-sensing images, providing a new basis to map wetland vegetation and allow its future application in habitat management, conservation assessment and long-term ecological monitoring in wetland landscapes.http://www.biogeosciences.net/8/667/2011/bg-8-667-2011.pdf
collection DOAJ
language English
format Article
sources DOAJ
author J. Arieira
D. Karssenberg
S. M. de Jong
E. A. Addink
E. G. Couto
C. Nunes da Cunha
J. O. Skøien
spellingShingle J. Arieira
D. Karssenberg
S. M. de Jong
E. A. Addink
E. G. Couto
C. Nunes da Cunha
J. O. Skøien
Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
Biogeosciences
author_facet J. Arieira
D. Karssenberg
S. M. de Jong
E. A. Addink
E. G. Couto
C. Nunes da Cunha
J. O. Skøien
author_sort J. Arieira
title Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
title_short Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
title_full Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
title_fullStr Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
title_full_unstemmed Integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the Pantanal, Brazil
title_sort integrating field sampling, geostatistics and remote sensing to map wetland vegetation in the pantanal, brazil
publisher Copernicus Publications
series Biogeosciences
issn 1726-4170
1726-4189
publishDate 2011-03-01
description Development of efficient methodologies for mapping wetland vegetation is of key importance to wetland conservation. Here we propose the integration of a number of statistical techniques, in particular cluster analysis, universal kriging and error propagation modelling, to integrate observations from remote sensing and field sampling for mapping vegetation communities and estimating uncertainty. The approach results in seven vegetation communities with a known floral composition that can be mapped over large areas using remotely sensed data. The relationship between remotely sensed data and vegetation patterns, captured in four factorial axes, were described using multiple linear regression models. There were then used in a universal kriging procedure to reduce the mapping uncertainty. Cross-validation procedures and Monte Carlo simulations were used to quantify the uncertainty in the resulting map. Cross-validation showed that accuracy in classification varies according with the community type, as a result of sampling density and configuration. A map of uncertainty derived from Monte Carlo simulations revealed significant spatial variation in classification, but this had little impact on the proportion and arrangement of the communities observed. These results suggested that mapping improvement could be achieved by increasing the number of field observations of those communities with a scattered and small patch size distribution; or by including a larger number of digital images as explanatory variables in the model. Comparison of the resulting plant community map with a flood duration map, revealed that flooding duration is an important driver of vegetation zonation. This mapping approach is able to integrate field point data and high-resolution remote-sensing images, providing a new basis to map wetland vegetation and allow its future application in habitat management, conservation assessment and long-term ecological monitoring in wetland landscapes.
url http://www.biogeosciences.net/8/667/2011/bg-8-667-2011.pdf
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