Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data

Detailed and accurate land cover and land cover change information is needed for South America because the continent is in constant flux, experiencing some of the highest rates of land cover change and forest loss in the world. The land cover data available for the entire continent are too coarse (2...

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Main Authors: Chandra Giri, Jordan Long
Format: Article
Language:English
Published: MDPI AG 2014-10-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/6/10/9494
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spelling doaj-f0ed0c547f5b43b69a7c54645178f83f2020-11-25T01:01:38ZengMDPI AGRemote Sensing2072-42922014-10-016109494951010.3390/rs6109494rs6109494Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite DataChandra Giri0Jordan Long1Geological Survey, Earth Resources Observation and Science (EROS) Center, Sioux Falls, SD 57198, USAInu Teq, Contractor to U.S. Geological Survey, Earth Resources Observation and Science (EROS) Center, Sioux Falls, SD 57198, USA. Work performed under USGS contract G13PC00028Detailed and accurate land cover and land cover change information is needed for South America because the continent is in constant flux, experiencing some of the highest rates of land cover change and forest loss in the world. The land cover data available for the entire continent are too coarse (250 m to 1 km) for resource managers, government and non-government organizations, and Earth scientists to develop conservation strategies, formulate resource management options, and monitor land cover dynamics. We used Landsat 30 m satellite data of 2010 and prepared the land cover database of South America using state-of-the-science remote sensing techniques. We produced regionally consistent and locally relevant land cover information by processing a large volume of data covering the entire continent. Our analysis revealed that in 2010, 50% of South America was covered by forests, 2.5% was covered by water, and 0.02% was covered by snow and ice. The percent forest area of South America varies from 9.5% in Uruguay to 96.5% in French Guiana. We used very high resolution (<5 m) satellite data to validate the land cover product. The overall accuracy of the 2010 South American 30-m land cover map is 89% with a Kappa coefficient of 79%. Accuracy of barren areas needs to improve possibly using multi-temporal Landsat data. An update of land cover and change database of South America with additional land cover classes is needed. The results from this study are useful for developing resource management strategies, formulating biodiversity conservation strategies, and regular land cover monitoring and forecasting.http://www.mdpi.com/2072-4292/6/10/9494land covermappingLandsatSouth Americaimage processingvalidation
collection DOAJ
language English
format Article
sources DOAJ
author Chandra Giri
Jordan Long
spellingShingle Chandra Giri
Jordan Long
Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
Remote Sensing
land cover
mapping
Landsat
South America
image processing
validation
author_facet Chandra Giri
Jordan Long
author_sort Chandra Giri
title Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
title_short Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
title_full Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
title_fullStr Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
title_full_unstemmed Land Cover Characterization and Mapping of South America for the Year 2010 Using Landsat 30 m Satellite Data
title_sort land cover characterization and mapping of south america for the year 2010 using landsat 30 m satellite data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2014-10-01
description Detailed and accurate land cover and land cover change information is needed for South America because the continent is in constant flux, experiencing some of the highest rates of land cover change and forest loss in the world. The land cover data available for the entire continent are too coarse (250 m to 1 km) for resource managers, government and non-government organizations, and Earth scientists to develop conservation strategies, formulate resource management options, and monitor land cover dynamics. We used Landsat 30 m satellite data of 2010 and prepared the land cover database of South America using state-of-the-science remote sensing techniques. We produced regionally consistent and locally relevant land cover information by processing a large volume of data covering the entire continent. Our analysis revealed that in 2010, 50% of South America was covered by forests, 2.5% was covered by water, and 0.02% was covered by snow and ice. The percent forest area of South America varies from 9.5% in Uruguay to 96.5% in French Guiana. We used very high resolution (<5 m) satellite data to validate the land cover product. The overall accuracy of the 2010 South American 30-m land cover map is 89% with a Kappa coefficient of 79%. Accuracy of barren areas needs to improve possibly using multi-temporal Landsat data. An update of land cover and change database of South America with additional land cover classes is needed. The results from this study are useful for developing resource management strategies, formulating biodiversity conservation strategies, and regular land cover monitoring and forecasting.
topic land cover
mapping
Landsat
South America
image processing
validation
url http://www.mdpi.com/2072-4292/6/10/9494
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