Use of artificial neural networks and geographic objects for classifying remote sensing imagery

The aim of this study was to develop a methodology for mapping land use and land cover in the northern region of Minas Gerais state, where, in addition to agricultural land, the landscape is dominated by native cerrado, deciduous forests, and extensive areas of vereda. Using forest inventory data, as well as RapidEye, Landsat TM and MODIS imagery, three specific objectives were defined: 1) to test use of image segmentation techniques for an object-based classification encompassing spectral, spatial and temporal information, 2) to test use of high spatial resolution RapidEye imagery combined with Landsat TM time series imagery for capturing the effects of seasonality, and 3) to classify data using Artificial Neural Networks. Using MODIS time series and forest inventory data, time signatures were extracted from the dominant vegetation formations, enabling selection of the best periods of the year to be represented in the classification process. Objects created with the segmentation of RapidEye images, along with the Landsat TM time series images, were classified by ten different Multilayer Perceptron network architectures. Results showed that the methodology in question meets both the purposes of this study and the characteristics of the local plant life. With excellent accuracy values for native classes, the study showed the importance of a well-structured database for classification and the importance of suitable image segmentation to meet specific purposes.

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Main Authors: Silva,Pedro Resende, Acerbi Júnior,Fausto Weimar, Carvalho,Luis Marcelo Tavares de, Scolforo,José Roberto Soares
Format: Digital revista
Language:English
Published: UFLA - Universidade Federal de Lavras 2014
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0104-77602014000200013
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spelling oai:scielo:S0104-776020140002000132014-07-30Use of artificial neural networks and geographic objects for classifying remote sensing imagerySilva,Pedro ResendeAcerbi Júnior,Fausto WeimarCarvalho,Luis Marcelo Tavares deScolforo,José Roberto Soares image segmentation object-based classification time series The aim of this study was to develop a methodology for mapping land use and land cover in the northern region of Minas Gerais state, where, in addition to agricultural land, the landscape is dominated by native cerrado, deciduous forests, and extensive areas of vereda. Using forest inventory data, as well as RapidEye, Landsat TM and MODIS imagery, three specific objectives were defined: 1) to test use of image segmentation techniques for an object-based classification encompassing spectral, spatial and temporal information, 2) to test use of high spatial resolution RapidEye imagery combined with Landsat TM time series imagery for capturing the effects of seasonality, and 3) to classify data using Artificial Neural Networks. Using MODIS time series and forest inventory data, time signatures were extracted from the dominant vegetation formations, enabling selection of the best periods of the year to be represented in the classification process. Objects created with the segmentation of RapidEye images, along with the Landsat TM time series images, were classified by ten different Multilayer Perceptron network architectures. Results showed that the methodology in question meets both the purposes of this study and the characteristics of the local plant life. With excellent accuracy values for native classes, the study showed the importance of a well-structured database for classification and the importance of suitable image segmentation to meet specific purposes.info:eu-repo/semantics/openAccessUFLA - Universidade Federal de LavrasCERNE v.20 n.2 20142014-06-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0104-77602014000200013en10.1590/01047760.201420021615
institution SCIELO
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country Brasil
countrycode BR
component Revista
access En linea
databasecode rev-scielo-br
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region America del Sur
libraryname SciELO
language English
format Digital
author Silva,Pedro Resende
Acerbi Júnior,Fausto Weimar
Carvalho,Luis Marcelo Tavares de
Scolforo,José Roberto Soares
spellingShingle Silva,Pedro Resende
Acerbi Júnior,Fausto Weimar
Carvalho,Luis Marcelo Tavares de
Scolforo,José Roberto Soares
Use of artificial neural networks and geographic objects for classifying remote sensing imagery
author_facet Silva,Pedro Resende
Acerbi Júnior,Fausto Weimar
Carvalho,Luis Marcelo Tavares de
Scolforo,José Roberto Soares
author_sort Silva,Pedro Resende
title Use of artificial neural networks and geographic objects for classifying remote sensing imagery
title_short Use of artificial neural networks and geographic objects for classifying remote sensing imagery
title_full Use of artificial neural networks and geographic objects for classifying remote sensing imagery
title_fullStr Use of artificial neural networks and geographic objects for classifying remote sensing imagery
title_full_unstemmed Use of artificial neural networks and geographic objects for classifying remote sensing imagery
title_sort use of artificial neural networks and geographic objects for classifying remote sensing imagery
description The aim of this study was to develop a methodology for mapping land use and land cover in the northern region of Minas Gerais state, where, in addition to agricultural land, the landscape is dominated by native cerrado, deciduous forests, and extensive areas of vereda. Using forest inventory data, as well as RapidEye, Landsat TM and MODIS imagery, three specific objectives were defined: 1) to test use of image segmentation techniques for an object-based classification encompassing spectral, spatial and temporal information, 2) to test use of high spatial resolution RapidEye imagery combined with Landsat TM time series imagery for capturing the effects of seasonality, and 3) to classify data using Artificial Neural Networks. Using MODIS time series and forest inventory data, time signatures were extracted from the dominant vegetation formations, enabling selection of the best periods of the year to be represented in the classification process. Objects created with the segmentation of RapidEye images, along with the Landsat TM time series images, were classified by ten different Multilayer Perceptron network architectures. Results showed that the methodology in question meets both the purposes of this study and the characteristics of the local plant life. With excellent accuracy values for native classes, the study showed the importance of a well-structured database for classification and the importance of suitable image segmentation to meet specific purposes.
publisher UFLA - Universidade Federal de Lavras
publishDate 2014
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0104-77602014000200013
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