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Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology

A procedure named CROPCLASS was developed to semi-automate census parcel crop assessment in any agricultural area using multitemporal remote images. For each area, CROPCLASS consists of a) a definition of census parcels through vector files in all of the images; b) the extraction of spectral bands (...

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Autores principales: García-Torres, Luis, Caballero-Novella, Juan J., Gómez-Candón, David, Peña, José Manuel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4331289/
https://www.ncbi.nlm.nih.gov/pubmed/25689830
http://dx.doi.org/10.1371/journal.pone.0117551
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author García-Torres, Luis
Caballero-Novella, Juan J.
Gómez-Candón, David
Peña, José Manuel
author_facet García-Torres, Luis
Caballero-Novella, Juan J.
Gómez-Candón, David
Peña, José Manuel
author_sort García-Torres, Luis
collection PubMed
description A procedure named CROPCLASS was developed to semi-automate census parcel crop assessment in any agricultural area using multitemporal remote images. For each area, CROPCLASS consists of a) a definition of census parcels through vector files in all of the images; b) the extraction of spectral bands (SB) and key vegetation index (VI) average values for each parcel and image; c) the conformation of a matrix data (MD) of the extracted information; d) the classification of MD decision trees (DT) and Structured Query Language (SQL) crop predictive model definition also based on preliminary land-use ground-truth work in a reduced number of parcels; and e) the implementation of predictive models to classify unidentified parcels land uses. The software named CROPCLASS-2.0 was developed to semi-automatically perform the described procedure in an economically feasible manner. The CROPCLASS methodology was validated using seven GeoEye-1 satellite images that were taken over the LaVentilla area (Southern Spain) from April to October 2010 at 3- to 4-week intervals. The studied region was visited every 3 weeks, identifying 12 crops and others land uses in 311 parcels. The DT training models for each cropping system were assessed at a 95% to 100% overall accuracy (OA) for each crop within its corresponding cropping systems. The DT training models that were used to directly identify the individual crops were assessed with 80.7% OA, with a user accuracy of approximately 80% or higher for most crops. Generally, the DT model accuracy was similar using the seven images that were taken at approximately one-month intervals or a set of three images that were taken during early spring, summer and autumn, or set of two images that were taken at about 2 to 3 months interval. The classification of the unidentified parcels for the individual crops was achieved with an OA of 79.5%.
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spelling pubmed-43312892015-02-24 Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology García-Torres, Luis Caballero-Novella, Juan J. Gómez-Candón, David Peña, José Manuel PLoS One Research Article A procedure named CROPCLASS was developed to semi-automate census parcel crop assessment in any agricultural area using multitemporal remote images. For each area, CROPCLASS consists of a) a definition of census parcels through vector files in all of the images; b) the extraction of spectral bands (SB) and key vegetation index (VI) average values for each parcel and image; c) the conformation of a matrix data (MD) of the extracted information; d) the classification of MD decision trees (DT) and Structured Query Language (SQL) crop predictive model definition also based on preliminary land-use ground-truth work in a reduced number of parcels; and e) the implementation of predictive models to classify unidentified parcels land uses. The software named CROPCLASS-2.0 was developed to semi-automatically perform the described procedure in an economically feasible manner. The CROPCLASS methodology was validated using seven GeoEye-1 satellite images that were taken over the LaVentilla area (Southern Spain) from April to October 2010 at 3- to 4-week intervals. The studied region was visited every 3 weeks, identifying 12 crops and others land uses in 311 parcels. The DT training models for each cropping system were assessed at a 95% to 100% overall accuracy (OA) for each crop within its corresponding cropping systems. The DT training models that were used to directly identify the individual crops were assessed with 80.7% OA, with a user accuracy of approximately 80% or higher for most crops. Generally, the DT model accuracy was similar using the seven images that were taken at approximately one-month intervals or a set of three images that were taken during early spring, summer and autumn, or set of two images that were taken at about 2 to 3 months interval. The classification of the unidentified parcels for the individual crops was achieved with an OA of 79.5%. Public Library of Science 2015-02-17 /pmc/articles/PMC4331289/ /pubmed/25689830 http://dx.doi.org/10.1371/journal.pone.0117551 Text en © 2015 García-Torres et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
García-Torres, Luis
Caballero-Novella, Juan J.
Gómez-Candón, David
Peña, José Manuel
Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title_full Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title_fullStr Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title_full_unstemmed Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title_short Census Parcels Cropping System Classification from Multitemporal Remote Imagery: A Proposed Universal Methodology
title_sort census parcels cropping system classification from multitemporal remote imagery: a proposed universal methodology
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4331289/
https://www.ncbi.nlm.nih.gov/pubmed/25689830
http://dx.doi.org/10.1371/journal.pone.0117551
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