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A Machine Learning Approach for Mapping Forest Vegetation in Riparian Zones in an Atlantic Biome Environment Using Sentinel-2 Imagery
by
Furuya, Michelle Taís Garcia
, Gonçalves, Wesley Nunes
, Prado Osco, Lucas
, Marcato Junior, José
, Estrabis, Nayara V.
, Furuya, Danielle Elis Garcia
, Pinheiro, Mayara Maezano Faita
, Pereira, Danillo Roberto
, Aguiar, João Alex Floriano
, Liesenberg, Veraldo
, Li, Jonathan
, Ramos, Ana Paula Marques
in
Accuracy
/ Algorithms
/ area
/ Bayesian analysis
/ Brazil
/ Classification
/ data collection
/ decision support systems
/ decision tree
/ Decision trees
/ ecosystems
/ environment
/ Environmental planning
/ forest vegetation mapping
/ forests
/ image classification
/ Imagery
/ information
/ Information processing
/ Learning algorithms
/ Machine learning
/ Mapping
/ multispectral imagery
/ planning
/ Principal components analysis
/ Remote sensing
/ riparian areas
/ Riparian environments
/ Riparian forests
/ Riparian land
/ Riparian vegetation
/ Rivers
/ Sensors
/ sentinel images
/ Software
/ Support vector machines
/ Unmanned aerial vehicles
/ Variables
/ Vegetation
/ Vegetation mapping
/ Vegetation surveys
/ Water quality
/ Water resources
2020
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A Machine Learning Approach for Mapping Forest Vegetation in Riparian Zones in an Atlantic Biome Environment Using Sentinel-2 Imagery
by
Furuya, Michelle Taís Garcia
, Gonçalves, Wesley Nunes
, Prado Osco, Lucas
, Marcato Junior, José
, Estrabis, Nayara V.
, Furuya, Danielle Elis Garcia
, Pinheiro, Mayara Maezano Faita
, Pereira, Danillo Roberto
, Aguiar, João Alex Floriano
, Liesenberg, Veraldo
, Li, Jonathan
, Ramos, Ana Paula Marques
in
Accuracy
/ Algorithms
/ area
/ Bayesian analysis
/ Brazil
/ Classification
/ data collection
/ decision support systems
/ decision tree
/ Decision trees
/ ecosystems
/ environment
/ Environmental planning
/ forest vegetation mapping
/ forests
/ image classification
/ Imagery
/ information
/ Information processing
/ Learning algorithms
/ Machine learning
/ Mapping
/ multispectral imagery
/ planning
/ Principal components analysis
/ Remote sensing
/ riparian areas
/ Riparian environments
/ Riparian forests
/ Riparian land
/ Riparian vegetation
/ Rivers
/ Sensors
/ sentinel images
/ Software
/ Support vector machines
/ Unmanned aerial vehicles
/ Variables
/ Vegetation
/ Vegetation mapping
/ Vegetation surveys
/ Water quality
/ Water resources
2020
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A Machine Learning Approach for Mapping Forest Vegetation in Riparian Zones in an Atlantic Biome Environment Using Sentinel-2 Imagery
by
Furuya, Michelle Taís Garcia
, Gonçalves, Wesley Nunes
, Prado Osco, Lucas
, Marcato Junior, José
, Estrabis, Nayara V.
, Furuya, Danielle Elis Garcia
, Pinheiro, Mayara Maezano Faita
, Pereira, Danillo Roberto
, Aguiar, João Alex Floriano
, Liesenberg, Veraldo
, Li, Jonathan
, Ramos, Ana Paula Marques
in
Accuracy
/ Algorithms
/ area
/ Bayesian analysis
/ Brazil
/ Classification
/ data collection
/ decision support systems
/ decision tree
/ Decision trees
/ ecosystems
/ environment
/ Environmental planning
/ forest vegetation mapping
/ forests
/ image classification
/ Imagery
/ information
/ Information processing
/ Learning algorithms
/ Machine learning
/ Mapping
/ multispectral imagery
/ planning
/ Principal components analysis
/ Remote sensing
/ riparian areas
/ Riparian environments
/ Riparian forests
/ Riparian land
/ Riparian vegetation
/ Rivers
/ Sensors
/ sentinel images
/ Software
/ Support vector machines
/ Unmanned aerial vehicles
/ Variables
/ Vegetation
/ Vegetation mapping
/ Vegetation surveys
/ Water quality
/ Water resources
2020
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A Machine Learning Approach for Mapping Forest Vegetation in Riparian Zones in an Atlantic Biome Environment Using Sentinel-2 Imagery
Journal Article
A Machine Learning Approach for Mapping Forest Vegetation in Riparian Zones in an Atlantic Biome Environment Using Sentinel-2 Imagery
2020
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Overview
Riparian zones consist of important environmental regions, specifically to maintain the quality of water resources. Accurately mapping forest vegetation in riparian zones is an important issue, since it may provide information about numerous surface processes that occur in these areas. Recently, machine learning algorithms have gained attention as an innovative approach to extract information from remote sensing imagery, including to support the mapping task of vegetation areas. Nonetheless, studies related to machine learning application for forest vegetation mapping in the riparian zones exclusively is still limited. Therefore, this paper presents a framework for forest vegetation mapping in riparian zones based on machine learning models using orbital multispectral images. A total of 14 Sentinel-2 images registered throughout the year, covering a large riparian zone of a portion of a wide river in the Pontal do Paranapanema region, São Paulo state, Brazil, was adopted as the dataset. This area is mainly composed of the Atlantic Biome vegetation, and it is near to the last primary fragment of its biome, being an important region from the environmental planning point of view. We compared the performance of multiple machine learning algorithms like decision tree (DT), random forest (RF), support vector machine (SVM), and normal Bayes (NB). We evaluated different dates and locations with all models. Our results demonstrated that the DT learner has, overall, the highest accuracy in this task. The DT algorithm also showed high accuracy when applied on different dates and in the riparian zone of another river. We conclude that the proposed approach is appropriated to accurately map forest vegetation in riparian zones, including temporal context.
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