Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks

The demand for new tools for mass remote sensing of crops, combined with the open and free availability of satellite imagery, has prompted the development of new methods for crop classification. Because this classification is frequently required to be completed within a specific time frame, performa...

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Published in:Remote Sensing
Main Authors: Guillermo Siesto, Marcos Fernández-Sellers, Adolfo Lozano-Tello
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/17/3378
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author Guillermo Siesto
Marcos Fernández-Sellers
Adolfo Lozano-Tello
author_facet Guillermo Siesto
Marcos Fernández-Sellers
Adolfo Lozano-Tello
author_sort Guillermo Siesto
collection DOAJ
container_title Remote Sensing
description The demand for new tools for mass remote sensing of crops, combined with the open and free availability of satellite imagery, has prompted the development of new methods for crop classification. Because this classification is frequently required to be completed within a specific time frame, performance is also essential. In this work, we propose a new method that creates synthetic images by extracting satellite data at the pixel level, processing all available bands, as well as their data distributed over time considering images from multiple dates. With this approach, data from images of Sentinel-2 are used by a deep convolutional network system, which will extract the necessary information to discern between different types of crops over a year after being trained with data from previous years. Following the proposed methodology, it is possible to classify crops and distinguish between several crop classes while also being computationally low-cost. A software system that implements this method has been used in an area of Extremadura (Spain) as a complementary monitoring tool for the subsidies supported by the Common Agricultural Policy of the European Union.
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spelling doaj-art-1da4f04dfc7b45fe8e4e71c54a0ec5062025-08-19T22:40:53ZengMDPI AGRemote Sensing2072-42922021-08-011317337810.3390/rs13173378Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural NetworksGuillermo Siesto0Marcos Fernández-Sellers1Adolfo Lozano-Tello2Quercus Software Engineering Group, Universidad de Extremadura, 10003 Cáceres, SpainQuercus Software Engineering Group, Universidad de Extremadura, 10003 Cáceres, SpainQuercus Software Engineering Group, Universidad de Extremadura, 10003 Cáceres, SpainThe demand for new tools for mass remote sensing of crops, combined with the open and free availability of satellite imagery, has prompted the development of new methods for crop classification. Because this classification is frequently required to be completed within a specific time frame, performance is also essential. In this work, we propose a new method that creates synthetic images by extracting satellite data at the pixel level, processing all available bands, as well as their data distributed over time considering images from multiple dates. With this approach, data from images of Sentinel-2 are used by a deep convolutional network system, which will extract the necessary information to discern between different types of crops over a year after being trained with data from previous years. Following the proposed methodology, it is possible to classify crops and distinguish between several crop classes while also being computationally low-cost. A software system that implements this method has been used in an area of Extremadura (Spain) as a complementary monitoring tool for the subsidies supported by the Common Agricultural Policy of the European Union.https://www.mdpi.com/2072-4292/13/17/3378remote sensingcrop classificationconvolutional neural networkssentinel-2satellite imagerymulti-spectral
spellingShingle Guillermo Siesto
Marcos Fernández-Sellers
Adolfo Lozano-Tello
Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
remote sensing
crop classification
convolutional neural networks
sentinel-2
satellite imagery
multi-spectral
title Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
title_full Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
title_fullStr Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
title_full_unstemmed Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
title_short Crop Classification of Satellite Imagery Using Synthetic Multitemporal and Multispectral Images in Convolutional Neural Networks
title_sort crop classification of satellite imagery using synthetic multitemporal and multispectral images in convolutional neural networks
topic remote sensing
crop classification
convolutional neural networks
sentinel-2
satellite imagery
multi-spectral
url https://www.mdpi.com/2072-4292/13/17/3378
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AT marcosfernandezsellers cropclassificationofsatelliteimageryusingsyntheticmultitemporalandmultispectralimagesinconvolutionalneuralnetworks
AT adolfolozanotello cropclassificationofsatelliteimageryusingsyntheticmultitemporalandmultispectralimagesinconvolutionalneuralnetworks