Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.

Floods in the Pantanal affect the fish production and influence the dynamics of vegetation, also changing the meat production. The understanding of floods dynamics is crucial to infer the level of flooding, once it promotes changes in the whole plain. The understanding of floods dynamics is crucial to infer the level of flooding. MODIS (Moderate Resolution Imaging Spectroradiometer) images provide wide coverage of the Earthís surface with high temporal resolution, which are important features for flood monitoring. However, its moderate spatial resolution may cause the spectral mixing of different land cover classes within a single pixel. In this context, the objective of this study was to apply a methodology for sub-pixel classification using MODIS time-series data, in order to quantify the flooded areas in the Pantanal. Data from the mid-infrared channel of MODIS sensor allowed the monitoring of flood prone areas in the Pantanal during the 2008/2009 and 2007/2008 hydrological years. The drought and flood periods are quite variable, occurring from North to South and from East to West. The sub-pixel classification models, generated from Fuzzy ARTMAP neural network, demonstrated excellent suitability for the mapping and quantification of flooded areas of the Pantanal based on the Commitment measure.

Saved in:
Bibliographic Details
Main Authors: ANTUNES, J. F. G., ESQUERDO, J. C. D. M.
Other Authors: JOÃO FRANCISCO GONÇALVES ANTUNES, CNPTIA; JÚLIO CÉSAR DALLA MORA ESQUERDO, CNPTIA.
Format: Artigo de periódico biblioteca
Language:English
eng
Published: 2016-02-02
Subjects:Áreas úmidas, Processamento de imagem, Reconhecimento de padrões, Redes neurais, Lógica difusa, Redes neuro-fuzzy, Pattern recognition, Neuro-fuzzy networks, Sensoriamento remoto, Remote sensing, Image analysis, Wetlands, Fuzzy logic, Neural networks,
Online Access:http://www.alice.cnptia.embrapa.br/alice/handle/doc/1035883
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-alice-doc-1035883
record_format koha
spelling dig-alice-doc-10358832017-08-16T03:39:09Z Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data. ANTUNES, J. F. G. ESQUERDO, J. C. D. M. JOÃO FRANCISCO GONÇALVES ANTUNES, CNPTIA; JÚLIO CÉSAR DALLA MORA ESQUERDO, CNPTIA. Áreas úmidas Processamento de imagem Reconhecimento de padrões Redes neurais Lógica difusa Redes neuro-fuzzy Pattern recognition Neuro-fuzzy networks Sensoriamento remoto Remote sensing Image analysis Wetlands Fuzzy logic Neural networks Floods in the Pantanal affect the fish production and influence the dynamics of vegetation, also changing the meat production. The understanding of floods dynamics is crucial to infer the level of flooding, once it promotes changes in the whole plain. The understanding of floods dynamics is crucial to infer the level of flooding. MODIS (Moderate Resolution Imaging Spectroradiometer) images provide wide coverage of the Earthís surface with high temporal resolution, which are important features for flood monitoring. However, its moderate spatial resolution may cause the spectral mixing of different land cover classes within a single pixel. In this context, the objective of this study was to apply a methodology for sub-pixel classification using MODIS time-series data, in order to quantify the flooded areas in the Pantanal. Data from the mid-infrared channel of MODIS sensor allowed the monitoring of flood prone areas in the Pantanal during the 2008/2009 and 2007/2008 hydrological years. The drought and flood periods are quite variable, occurring from North to South and from East to West. The sub-pixel classification models, generated from Fuzzy ARTMAP neural network, demonstrated excellent suitability for the mapping and quantification of flooded areas of the Pantanal based on the Commitment measure. Número especial. 2016-02-02T11:11:11Z 2016-02-02T11:11:11Z 2016-02-02 2015 2016-02-03T11:11:11Z Artigo de periódico Geografia, Rio Claro, v. 40, p. 39-53, ago. 2015. http://www.alice.cnptia.embrapa.br/alice/handle/doc/1035883 en eng openAccess
institution EMBRAPA
collection DSpace
country Brasil
countrycode BR
component Bibliográfico
access En linea
databasecode dig-alice
tag biblioteca
region America del Sur
libraryname Sistema de bibliotecas de EMBRAPA
language English
eng
topic Áreas úmidas
Processamento de imagem
Reconhecimento de padrões
Redes neurais
Lógica difusa
Redes neuro-fuzzy
Pattern recognition
Neuro-fuzzy networks
Sensoriamento remoto
Remote sensing
Image analysis
Wetlands
Fuzzy logic
Neural networks
Áreas úmidas
Processamento de imagem
Reconhecimento de padrões
Redes neurais
Lógica difusa
Redes neuro-fuzzy
Pattern recognition
Neuro-fuzzy networks
Sensoriamento remoto
Remote sensing
Image analysis
Wetlands
Fuzzy logic
Neural networks
spellingShingle Áreas úmidas
Processamento de imagem
Reconhecimento de padrões
Redes neurais
Lógica difusa
Redes neuro-fuzzy
Pattern recognition
Neuro-fuzzy networks
Sensoriamento remoto
Remote sensing
Image analysis
Wetlands
Fuzzy logic
Neural networks
Áreas úmidas
Processamento de imagem
Reconhecimento de padrões
Redes neurais
Lógica difusa
Redes neuro-fuzzy
Pattern recognition
Neuro-fuzzy networks
Sensoriamento remoto
Remote sensing
Image analysis
Wetlands
Fuzzy logic
Neural networks
ANTUNES, J. F. G.
ESQUERDO, J. C. D. M.
Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
description Floods in the Pantanal affect the fish production and influence the dynamics of vegetation, also changing the meat production. The understanding of floods dynamics is crucial to infer the level of flooding, once it promotes changes in the whole plain. The understanding of floods dynamics is crucial to infer the level of flooding. MODIS (Moderate Resolution Imaging Spectroradiometer) images provide wide coverage of the Earthís surface with high temporal resolution, which are important features for flood monitoring. However, its moderate spatial resolution may cause the spectral mixing of different land cover classes within a single pixel. In this context, the objective of this study was to apply a methodology for sub-pixel classification using MODIS time-series data, in order to quantify the flooded areas in the Pantanal. Data from the mid-infrared channel of MODIS sensor allowed the monitoring of flood prone areas in the Pantanal during the 2008/2009 and 2007/2008 hydrological years. The drought and flood periods are quite variable, occurring from North to South and from East to West. The sub-pixel classification models, generated from Fuzzy ARTMAP neural network, demonstrated excellent suitability for the mapping and quantification of flooded areas of the Pantanal based on the Commitment measure.
author2 JOÃO FRANCISCO GONÇALVES ANTUNES, CNPTIA; JÚLIO CÉSAR DALLA MORA ESQUERDO, CNPTIA.
author_facet JOÃO FRANCISCO GONÇALVES ANTUNES, CNPTIA; JÚLIO CÉSAR DALLA MORA ESQUERDO, CNPTIA.
ANTUNES, J. F. G.
ESQUERDO, J. C. D. M.
format Artigo de periódico
topic_facet Áreas úmidas
Processamento de imagem
Reconhecimento de padrões
Redes neurais
Lógica difusa
Redes neuro-fuzzy
Pattern recognition
Neuro-fuzzy networks
Sensoriamento remoto
Remote sensing
Image analysis
Wetlands
Fuzzy logic
Neural networks
author ANTUNES, J. F. G.
ESQUERDO, J. C. D. M.
author_sort ANTUNES, J. F. G.
title Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
title_short Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
title_full Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
title_fullStr Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
title_full_unstemmed Quantification of flooded areas of Pantanal by sub-pixel classification of modis time-series data.
title_sort quantification of flooded areas of pantanal by sub-pixel classification of modis time-series data.
publishDate 2016-02-02
url http://www.alice.cnptia.embrapa.br/alice/handle/doc/1035883
work_keys_str_mv AT antunesjfg quantificationoffloodedareasofpantanalbysubpixelclassificationofmodistimeseriesdata
AT esquerdojcdm quantificationoffloodedareasofpantanalbysubpixelclassificationofmodistimeseriesdata
_version_ 1756022001319804928