Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon

This study is focused on the assessment of the potential of Sentinel-2 satellite images and the Random Forest classifier for mapping forest cover and forest types in northwest Gabon. The main goal was to investigate the impact of various spectral bands collected by the Sentinel-2 satellite, normaliz...

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Main Authors: Adam Waśniewski, Agata Hościło, Bogdan Zagajewski, Dieudonné Moukétou-Tarazewicz
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Forests
Subjects:
Online Access:https://www.mdpi.com/1999-4907/11/9/941
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spelling doaj-55c3869c931e4b58be3fcdd289874ea62020-11-25T03:38:29ZengMDPI AGForests1999-49072020-08-011194194110.3390/f11090941Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in GabonAdam Waśniewski0Agata Hościło1Bogdan Zagajewski2Dieudonné Moukétou-Tarazewicz3Chair of Geomatics and Information Systems, Cartography and Remote Sensing, Department of Geoinformatics, University of Warsaw, Faculty of Geography and Regional Studies, Krakowskie Przedmieście 30, 00-927 Warsaw, PolandCentre of Applied Geomatics, Institute of Geodesy and Cartography, Modzelewskiego 27, 02-679 Warsaw, PolandChair of Geomatics and Information Systems, Cartography and Remote Sensing, Department of Geoinformatics, University of Warsaw, Faculty of Geography and Regional Studies, Krakowskie Przedmieście 30, 00-927 Warsaw, PolandChair of Geomatics and Information Systems, Cartography and Remote Sensing, Department of Geoinformatics, University of Warsaw, Faculty of Geography and Regional Studies, Krakowskie Przedmieście 30, 00-927 Warsaw, PolandThis study is focused on the assessment of the potential of Sentinel-2 satellite images and the Random Forest classifier for mapping forest cover and forest types in northwest Gabon. The main goal was to investigate the impact of various spectral bands collected by the Sentinel-2 satellite, normalized difference vegetation index (NDVI) and digital elevation model (DEM), and their combination on the accuracy of the classification of forest cover and forest type. Within the study area, five classes of forest type were delineated: semi-evergreen moist forest, lowland forest, freshwater swamp forest, mangroves, and disturbed natural forest. The classification was performed using the Random Forest (RF) classifier. The overall accuracy for the forest cover ranged between 92.6% and 98.5%, whereas for forest type, the accuracy was 83.4 to 97.4%. The highest accuracy for forest cover and forest type classifications were obtained using a combination of spectral bands at spatial resolutions of 10 m and 20 m and DEM. In both cases, the use of the NDVI did not increase the classification accuracy. The DEM was shown to be the most important variable in distinguishing the forest type. Among the Sentinel-2 spectral bands, the red-edge followed by the SWIR contributed the most to the accuracy of the forest type classification. Additionally, the Random Forest model for forest cover classification was successfully transferred from one master image to other images. In contrast, the transferability of the forest type model was more complex, because of the heterogeneity of the forest type and environmental conditions across the study area.https://www.mdpi.com/1999-4907/11/9/941Sentinel-2random forestGabonforest typetropical forestforest cover
collection DOAJ
language English
format Article
sources DOAJ
author Adam Waśniewski
Agata Hościło
Bogdan Zagajewski
Dieudonné Moukétou-Tarazewicz
spellingShingle Adam Waśniewski
Agata Hościło
Bogdan Zagajewski
Dieudonné Moukétou-Tarazewicz
Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
Forests
Sentinel-2
random forest
Gabon
forest type
tropical forest
forest cover
author_facet Adam Waśniewski
Agata Hościło
Bogdan Zagajewski
Dieudonné Moukétou-Tarazewicz
author_sort Adam Waśniewski
title Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
title_short Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
title_full Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
title_fullStr Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
title_full_unstemmed Assessment of Sentinel-2 Satellite Images and Random Forest Classifier for Rainforest Mapping in Gabon
title_sort assessment of sentinel-2 satellite images and random forest classifier for rainforest mapping in gabon
publisher MDPI AG
series Forests
issn 1999-4907
publishDate 2020-08-01
description This study is focused on the assessment of the potential of Sentinel-2 satellite images and the Random Forest classifier for mapping forest cover and forest types in northwest Gabon. The main goal was to investigate the impact of various spectral bands collected by the Sentinel-2 satellite, normalized difference vegetation index (NDVI) and digital elevation model (DEM), and their combination on the accuracy of the classification of forest cover and forest type. Within the study area, five classes of forest type were delineated: semi-evergreen moist forest, lowland forest, freshwater swamp forest, mangroves, and disturbed natural forest. The classification was performed using the Random Forest (RF) classifier. The overall accuracy for the forest cover ranged between 92.6% and 98.5%, whereas for forest type, the accuracy was 83.4 to 97.4%. The highest accuracy for forest cover and forest type classifications were obtained using a combination of spectral bands at spatial resolutions of 10 m and 20 m and DEM. In both cases, the use of the NDVI did not increase the classification accuracy. The DEM was shown to be the most important variable in distinguishing the forest type. Among the Sentinel-2 spectral bands, the red-edge followed by the SWIR contributed the most to the accuracy of the forest type classification. Additionally, the Random Forest model for forest cover classification was successfully transferred from one master image to other images. In contrast, the transferability of the forest type model was more complex, because of the heterogeneity of the forest type and environmental conditions across the study area.
topic Sentinel-2
random forest
Gabon
forest type
tropical forest
forest cover
url https://www.mdpi.com/1999-4907/11/9/941
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