Identifying cropped areas in small growers agricultural regions using data mining for food security

The present study aimed at testing the potential of the future mission SENTINEL-2 (European Copernicus program) to map croplands in a region of Madagascar characterized by small size fields and frequent cloud covering. Two approaches were tested and compared : i) a classical remote sensing method (RS) using image object-based analysis, expert rules and supervised classification, and ii) a data mining (DM) approach consisting of the extraction of frequent patterns from the database and the use of these patterns in different algorithms (Naive Bayes, Random Forest, Decision Tree and Support Vector Machine) to build classification rules. Both methods used SPOT images and a ground data set of 324 GPS waypoints collected during the 2012-2013 cropping season. The remote sensing and data mining approaches showed equivalent overall accuracies (82% vs 84% for RS and DM methods respectively). However, the DM approach showed its ability to handle a large volume of data and to do so in a time manner. This approach has also the advantage to extract all the information at its disposal, even temporal behaviors, unlike the object-based RS approach which requires significant participation of the expert. Data mining tools are thus recommended for their considerable potential for the classification without a priori of remotely sensed data, mixing multisource information and consequent time series, especially for the upcoming Sentinel-2 images that are expected to generate a large volume of data to store and process.

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Main Authors: Vintrou, Elodie, Lebourgeois, Valentine, Bégué, Agnès, Ienco, Dino, Teisseire, Maguelonne, Dupuy, Stéphane, Andriandrahona Fidiniaina, Ramahandry
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Language:eng
Published: s.n.
Subjects:U30 - Méthodes de recherche, E90 - Structure agraire, E80 - Économie familiale et artisanale, S01 - Nutrition humaine - Considérations générales,
Online Access:http://agritrop.cirad.fr/574632/
http://agritrop.cirad.fr/574632/1/document_574632.pdf
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spelling dig-cirad-fr-5746322022-04-15T09:19:52Z http://agritrop.cirad.fr/574632/ http://agritrop.cirad.fr/574632/ Identifying cropped areas in small growers agricultural regions using data mining for food security. Vintrou Elodie, Lebourgeois Valentine, Bégué Agnès, Ienco Dino, Teisseire Maguelonne, Dupuy Stéphane, Andriandrahona Fidiniaina Ramahandry. 2014. In : SENTINEL-2 for Science Workshop, Frascati, Italy, 20-22 May 2014. ESA. s.l. : s.n., Diaporama, 8 p. SENTINEL-2 for Science Workshop, Frascati, Italie, 20 Mai 2014/22 Mai 2014. Researchers Identifying cropped areas in small growers agricultural regions using data mining for food security Vintrou, Elodie Lebourgeois, Valentine Bégué, Agnès Ienco, Dino Teisseire, Maguelonne Dupuy, Stéphane Andriandrahona Fidiniaina, Ramahandry eng 2014 s.n. SENTINEL-2 for Science Workshop, Frascati, Italy, 20-22 May 2014 U30 - Méthodes de recherche E90 - Structure agraire E80 - Économie familiale et artisanale S01 - Nutrition humaine - Considérations générales The present study aimed at testing the potential of the future mission SENTINEL-2 (European Copernicus program) to map croplands in a region of Madagascar characterized by small size fields and frequent cloud covering. Two approaches were tested and compared : i) a classical remote sensing method (RS) using image object-based analysis, expert rules and supervised classification, and ii) a data mining (DM) approach consisting of the extraction of frequent patterns from the database and the use of these patterns in different algorithms (Naive Bayes, Random Forest, Decision Tree and Support Vector Machine) to build classification rules. Both methods used SPOT images and a ground data set of 324 GPS waypoints collected during the 2012-2013 cropping season. The remote sensing and data mining approaches showed equivalent overall accuracies (82% vs 84% for RS and DM methods respectively). However, the DM approach showed its ability to handle a large volume of data and to do so in a time manner. This approach has also the advantage to extract all the information at its disposal, even temporal behaviors, unlike the object-based RS approach which requires significant participation of the expert. Data mining tools are thus recommended for their considerable potential for the classification without a priori of remotely sensed data, mixing multisource information and consequent time series, especially for the upcoming Sentinel-2 images that are expected to generate a large volume of data to store and process. conference_item info:eu-repo/semantics/conferenceObject Conference info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/574632/1/document_574632.pdf application/pdf Cirad license info:eu-repo/semantics/openAccess https://agritrop.cirad.fr/mention_legale.html
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country Francia
countrycode FR
component Bibliográfico
access En linea
databasecode dig-cirad-fr
tag biblioteca
region Europa del Oeste
libraryname Biblioteca del CIRAD Francia
language eng
topic U30 - Méthodes de recherche
E90 - Structure agraire
E80 - Économie familiale et artisanale
S01 - Nutrition humaine - Considérations générales
U30 - Méthodes de recherche
E90 - Structure agraire
E80 - Économie familiale et artisanale
S01 - Nutrition humaine - Considérations générales
spellingShingle U30 - Méthodes de recherche
E90 - Structure agraire
E80 - Économie familiale et artisanale
S01 - Nutrition humaine - Considérations générales
U30 - Méthodes de recherche
E90 - Structure agraire
E80 - Économie familiale et artisanale
S01 - Nutrition humaine - Considérations générales
Vintrou, Elodie
Lebourgeois, Valentine
Bégué, Agnès
Ienco, Dino
Teisseire, Maguelonne
Dupuy, Stéphane
Andriandrahona Fidiniaina, Ramahandry
Identifying cropped areas in small growers agricultural regions using data mining for food security
description The present study aimed at testing the potential of the future mission SENTINEL-2 (European Copernicus program) to map croplands in a region of Madagascar characterized by small size fields and frequent cloud covering. Two approaches were tested and compared : i) a classical remote sensing method (RS) using image object-based analysis, expert rules and supervised classification, and ii) a data mining (DM) approach consisting of the extraction of frequent patterns from the database and the use of these patterns in different algorithms (Naive Bayes, Random Forest, Decision Tree and Support Vector Machine) to build classification rules. Both methods used SPOT images and a ground data set of 324 GPS waypoints collected during the 2012-2013 cropping season. The remote sensing and data mining approaches showed equivalent overall accuracies (82% vs 84% for RS and DM methods respectively). However, the DM approach showed its ability to handle a large volume of data and to do so in a time manner. This approach has also the advantage to extract all the information at its disposal, even temporal behaviors, unlike the object-based RS approach which requires significant participation of the expert. Data mining tools are thus recommended for their considerable potential for the classification without a priori of remotely sensed data, mixing multisource information and consequent time series, especially for the upcoming Sentinel-2 images that are expected to generate a large volume of data to store and process.
format conference_item
topic_facet U30 - Méthodes de recherche
E90 - Structure agraire
E80 - Économie familiale et artisanale
S01 - Nutrition humaine - Considérations générales
author Vintrou, Elodie
Lebourgeois, Valentine
Bégué, Agnès
Ienco, Dino
Teisseire, Maguelonne
Dupuy, Stéphane
Andriandrahona Fidiniaina, Ramahandry
author_facet Vintrou, Elodie
Lebourgeois, Valentine
Bégué, Agnès
Ienco, Dino
Teisseire, Maguelonne
Dupuy, Stéphane
Andriandrahona Fidiniaina, Ramahandry
author_sort Vintrou, Elodie
title Identifying cropped areas in small growers agricultural regions using data mining for food security
title_short Identifying cropped areas in small growers agricultural regions using data mining for food security
title_full Identifying cropped areas in small growers agricultural regions using data mining for food security
title_fullStr Identifying cropped areas in small growers agricultural regions using data mining for food security
title_full_unstemmed Identifying cropped areas in small growers agricultural regions using data mining for food security
title_sort identifying cropped areas in small growers agricultural regions using data mining for food security
publisher s.n.
url http://agritrop.cirad.fr/574632/
http://agritrop.cirad.fr/574632/1/document_574632.pdf
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