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UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †

Precision agriculture is considered to be a fundamental approach in pursuing a low-input, high-efficiency, and sustainable kind of agriculture when performing site-specific management practices. To achieve this objective, a reliable and updated description of the local status of crops is required. R...

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Autores principales: Mazzia, Vittorio, Comba, Lorenzo, Khaliq, Aleem, Chiaberge, Marcello, Gay, Paolo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7249115/
https://www.ncbi.nlm.nih.gov/pubmed/32365636
http://dx.doi.org/10.3390/s20092530
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author Mazzia, Vittorio
Comba, Lorenzo
Khaliq, Aleem
Chiaberge, Marcello
Gay, Paolo
author_facet Mazzia, Vittorio
Comba, Lorenzo
Khaliq, Aleem
Chiaberge, Marcello
Gay, Paolo
author_sort Mazzia, Vittorio
collection PubMed
description Precision agriculture is considered to be a fundamental approach in pursuing a low-input, high-efficiency, and sustainable kind of agriculture when performing site-specific management practices. To achieve this objective, a reliable and updated description of the local status of crops is required. Remote sensing, and in particular satellite-based imagery, proved to be a valuable tool in crop mapping, monitoring, and diseases assessment. However, freely available satellite imagery with low or moderate resolutions showed some limits in specific agricultural applications, e.g., where crops are grown by rows. Indeed, in this framework, the satellite’s output could be biased by intra-row covering, giving inaccurate information about crop status. This paper presents a novel satellite imagery refinement framework, based on a deep learning technique which exploits information properly derived from high resolution images acquired by unmanned aerial vehicle (UAV) airborne multispectral sensors. To train the convolutional neural network, only a single UAV-driven dataset is required, making the proposed approach simple and cost-effective. A vineyard in Serralunga d’Alba (Northern Italy) was chosen as a case study for validation purposes. Refined satellite-driven normalized difference vegetation index (NDVI) maps, acquired in four different periods during the vine growing season, were shown to better describe crop status with respect to raw datasets by correlation analysis and ANOVA. In addition, using a K-means based classifier, 3-class vineyard vigor maps were profitably derived from the NDVI maps, which are a valuable tool for growers.
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spelling pubmed-72491152020-06-10 UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture † Mazzia, Vittorio Comba, Lorenzo Khaliq, Aleem Chiaberge, Marcello Gay, Paolo Sensors (Basel) Article Precision agriculture is considered to be a fundamental approach in pursuing a low-input, high-efficiency, and sustainable kind of agriculture when performing site-specific management practices. To achieve this objective, a reliable and updated description of the local status of crops is required. Remote sensing, and in particular satellite-based imagery, proved to be a valuable tool in crop mapping, monitoring, and diseases assessment. However, freely available satellite imagery with low or moderate resolutions showed some limits in specific agricultural applications, e.g., where crops are grown by rows. Indeed, in this framework, the satellite’s output could be biased by intra-row covering, giving inaccurate information about crop status. This paper presents a novel satellite imagery refinement framework, based on a deep learning technique which exploits information properly derived from high resolution images acquired by unmanned aerial vehicle (UAV) airborne multispectral sensors. To train the convolutional neural network, only a single UAV-driven dataset is required, making the proposed approach simple and cost-effective. A vineyard in Serralunga d’Alba (Northern Italy) was chosen as a case study for validation purposes. Refined satellite-driven normalized difference vegetation index (NDVI) maps, acquired in four different periods during the vine growing season, were shown to better describe crop status with respect to raw datasets by correlation analysis and ANOVA. In addition, using a K-means based classifier, 3-class vineyard vigor maps were profitably derived from the NDVI maps, which are a valuable tool for growers. MDPI 2020-04-29 /pmc/articles/PMC7249115/ /pubmed/32365636 http://dx.doi.org/10.3390/s20092530 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Mazzia, Vittorio
Comba, Lorenzo
Khaliq, Aleem
Chiaberge, Marcello
Gay, Paolo
UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title_full UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title_fullStr UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title_full_unstemmed UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title_short UAV and Machine Learning Based Refinement of a Satellite-Driven Vegetation Index for Precision Agriculture †
title_sort uav and machine learning based refinement of a satellite-driven vegetation index for precision agriculture †
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7249115/
https://www.ncbi.nlm.nih.gov/pubmed/32365636
http://dx.doi.org/10.3390/s20092530
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