Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study

The European Commission introduces the Control by Monitoring through new technologies to manage Common Agricultural Policy funds through the Regulation 2018/746. The advances in remote sensing have been considered one of these new technologies, mainly since the European Space Agency designed the Cop...

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Main Authors: Francisco Javier López-Andreu, Manuel Erena, Jose Antonio Dominguez-Gómez, Juan Antonio López-Morales
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Agronomy
Subjects:
Online Access:https://www.mdpi.com/2073-4395/11/4/621
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spelling doaj-2de767b02589467a9872cc87964b66572021-03-26T00:05:26ZengMDPI AGAgronomy2073-43952021-03-011162162110.3390/agronomy11040621Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case StudyFrancisco Javier López-Andreu0Manuel Erena1Jose Antonio Dominguez-Gómez2Juan Antonio López-Morales3Institute of Agricultural and Food Research and Development of Murcia-IMIDA, Mayor Street, La Alberca, 30150 Murcia, SpainInstitute of Agricultural and Food Research and Development of Murcia-IMIDA, Mayor Street, La Alberca, 30150 Murcia, SpainInstitute of Agricultural and Food Research and Development of Murcia-IMIDA, Mayor Street, La Alberca, 30150 Murcia, SpainInstitute of Agricultural and Food Research and Development of Murcia-IMIDA, Mayor Street, La Alberca, 30150 Murcia, SpainThe European Commission introduces the Control by Monitoring through new technologies to manage Common Agricultural Policy funds through the Regulation 2018/746. The advances in remote sensing have been considered one of these new technologies, mainly since the European Space Agency designed the Copernicus Programme. The Sentinel-1 (radar range) and Sentinel-2 (optical range) satellites have been designed for monitoring agricultural problems based on the characteristics they provide. The data provided by the Sentinel 2 missions, together with the emergence of different scientific disciplines in artificial intelligence —especially machine learning— offer the perfect basis for identifying and classifying any crop and its phenological state. Our research is based on developing and evaluating a pixel-based supervised classification scheme to produce accurate rice crop mapping in a smallholder agricultural zone in Calasparra, Murcia, Spain. Several models are considered to obtain the most suitable model for each element of the time series used; pixel-based classification is performed and finished with a statistical treatment. The highly accurate results obtained, especially across the most significant vegetative development dates, indicate the benefits of using Sentinel-2 data combined with Machine Learning techniques to identify rice crops. It should be noted that it was possible to locate rice crop areas with an overall accuracy of 94% and standard deviation of 1%, which could be increased to 96% (±1%) if we focus on the months of the crop’s highest development state. Thanks to the proposed methodology, the on-site inspections carried out, 5% of the files, have been replaced by remote sensing evaluations of 100% of the analyzed season files. Besides, by adjusting the model input data, it is possible to detect unproductive or abandoned plots.https://www.mdpi.com/2073-4395/11/4/621multispectral remote sensingCopernicussentinelimage processingmachine learningagriculture
collection DOAJ
language English
format Article
sources DOAJ
author Francisco Javier López-Andreu
Manuel Erena
Jose Antonio Dominguez-Gómez
Juan Antonio López-Morales
spellingShingle Francisco Javier López-Andreu
Manuel Erena
Jose Antonio Dominguez-Gómez
Juan Antonio López-Morales
Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
Agronomy
multispectral remote sensing
Copernicus
sentinel
image processing
machine learning
agriculture
author_facet Francisco Javier López-Andreu
Manuel Erena
Jose Antonio Dominguez-Gómez
Juan Antonio López-Morales
author_sort Francisco Javier López-Andreu
title Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
title_short Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
title_full Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
title_fullStr Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
title_full_unstemmed Sentinel-2 Images and Machine Learning as Tool for Monitoring of the Common Agricultural Policy: Calasparra Rice as a Case Study
title_sort sentinel-2 images and machine learning as tool for monitoring of the common agricultural policy: calasparra rice as a case study
publisher MDPI AG
series Agronomy
issn 2073-4395
publishDate 2021-03-01
description The European Commission introduces the Control by Monitoring through new technologies to manage Common Agricultural Policy funds through the Regulation 2018/746. The advances in remote sensing have been considered one of these new technologies, mainly since the European Space Agency designed the Copernicus Programme. The Sentinel-1 (radar range) and Sentinel-2 (optical range) satellites have been designed for monitoring agricultural problems based on the characteristics they provide. The data provided by the Sentinel 2 missions, together with the emergence of different scientific disciplines in artificial intelligence —especially machine learning— offer the perfect basis for identifying and classifying any crop and its phenological state. Our research is based on developing and evaluating a pixel-based supervised classification scheme to produce accurate rice crop mapping in a smallholder agricultural zone in Calasparra, Murcia, Spain. Several models are considered to obtain the most suitable model for each element of the time series used; pixel-based classification is performed and finished with a statistical treatment. The highly accurate results obtained, especially across the most significant vegetative development dates, indicate the benefits of using Sentinel-2 data combined with Machine Learning techniques to identify rice crops. It should be noted that it was possible to locate rice crop areas with an overall accuracy of 94% and standard deviation of 1%, which could be increased to 96% (±1%) if we focus on the months of the crop’s highest development state. Thanks to the proposed methodology, the on-site inspections carried out, 5% of the files, have been replaced by remote sensing evaluations of 100% of the analyzed season files. Besides, by adjusting the model input data, it is possible to detect unproductive or abandoned plots.
topic multispectral remote sensing
Copernicus
sentinel
image processing
machine learning
agriculture
url https://www.mdpi.com/2073-4395/11/4/621
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