Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application

Wheat, Triticum durum L, is a major cereal crop in Spain with over five million ha grown annually. Wild oat, Avena sterilis L., and canary grass, Phalaris spp., are distributed only in patches in wheat fields but herbicides are applied over entire fields, thus leading to over-application and unnecessary pollution. To reduce herbicide application, site-specific management techniques based on weed maps are being developed to treat only weed patches. Intensive weed scouting from the ground is time-consuming and expensive, and it relies on estimates of weeds at unsampled points. Remote sensing of weed canopies has been shown to be a more efficient alternative. The principle of weed remote sensing is that there are differences in the spectral reflectance between weeds and crops. To test this principle, we studied spectral signatures taken on the ground in the visible and near-infrared windows for discriminating wheat, wild oat and canary grass at their last phenological stages. Late-season phenological stages included initial seed maturation through advanced maturation for weeds, and initial senescence to senescent for wheat. Spectral signatures were collected on eight sampling dates from April 28 through May 26 using a handheld field spectroradiometer. A stepwise discriminant analysis was used to detect differences in reflectance and to determine the accuracy performance for a species classification as affected by their phenological stage. Four scenarios or classification sets were considered: wheat-wild oat-canary grass, with each species represented by a different group of spectra; wheat and grass weeds, combining the two weed species into one spectral group; wheat and wild oat with each represented as a single group, and finally, wheat and canary grass. Our analysis achieved 100% classification accuracy at the phenological stages of initial seed maturation, and green and advanced seed maturation and partly green for weeds and wheat, respectively, between the dates of April 28 and May 6. Furthermore, we reduced the number of hyperspectral wavelengths to thirteen out of 50. Multispectral analysis also showed that broad wavebands corresponding to those of QuickBird satellite imagery discriminated wild oat, canary grass and wheat at the same phenological stages and dates. Our findings are very useful for determining the timeframe during which future multispectral QuickBird satellite images will be obtained and the concrete wavelengths that should be used in case of using airborne hyperspectral imaging. Accurate and timely mapping of the spatial distribution of weeds is a key element in achieving site-specific herbicide applications for reducing spraying volume of herbicides and costs. © 2010 INRA, EDP Sciences.

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Main Authors: Gómez-Casero, M. Teresa, Castillejo González, Isabel L., García-Ferrer, Alfonso, Peña Barragán, José Manuel, Jurado-Expósito, Montserrat, García Torres, Luis, López Granados, Francisca
Format: artículo biblioteca
Published: EDP Sciences 2010-09
Subjects:Multispectral, Remote late-season weed detection, Precision agriculture, Vegetation indices, Hyperspectral,
Online Access:http://hdl.handle.net/10261/92458
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spelling dig-ias-es-10261-924582020-05-27T13:50:27Z Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application Gómez-Casero, M. Teresa Castillejo González, Isabel L. García-Ferrer, Alfonso Peña Barragán, José Manuel Jurado-Expósito, Montserrat García Torres, Luis López Granados, Francisca Multispectral Remote late-season weed detection Precision agriculture Vegetation indices Hyperspectral Wheat, Triticum durum L, is a major cereal crop in Spain with over five million ha grown annually. Wild oat, Avena sterilis L., and canary grass, Phalaris spp., are distributed only in patches in wheat fields but herbicides are applied over entire fields, thus leading to over-application and unnecessary pollution. To reduce herbicide application, site-specific management techniques based on weed maps are being developed to treat only weed patches. Intensive weed scouting from the ground is time-consuming and expensive, and it relies on estimates of weeds at unsampled points. Remote sensing of weed canopies has been shown to be a more efficient alternative. The principle of weed remote sensing is that there are differences in the spectral reflectance between weeds and crops. To test this principle, we studied spectral signatures taken on the ground in the visible and near-infrared windows for discriminating wheat, wild oat and canary grass at their last phenological stages. Late-season phenological stages included initial seed maturation through advanced maturation for weeds, and initial senescence to senescent for wheat. Spectral signatures were collected on eight sampling dates from April 28 through May 26 using a handheld field spectroradiometer. A stepwise discriminant analysis was used to detect differences in reflectance and to determine the accuracy performance for a species classification as affected by their phenological stage. Four scenarios or classification sets were considered: wheat-wild oat-canary grass, with each species represented by a different group of spectra; wheat and grass weeds, combining the two weed species into one spectral group; wheat and wild oat with each represented as a single group, and finally, wheat and canary grass. Our analysis achieved 100% classification accuracy at the phenological stages of initial seed maturation, and green and advanced seed maturation and partly green for weeds and wheat, respectively, between the dates of April 28 and May 6. Furthermore, we reduced the number of hyperspectral wavelengths to thirteen out of 50. Multispectral analysis also showed that broad wavebands corresponding to those of QuickBird satellite imagery discriminated wild oat, canary grass and wheat at the same phenological stages and dates. Our findings are very useful for determining the timeframe during which future multispectral QuickBird satellite images will be obtained and the concrete wavelengths that should be used in case of using airborne hyperspectral imaging. Accurate and timely mapping of the spatial distribution of weeds is a key element in achieving site-specific herbicide applications for reducing spraying volume of herbicides and costs. © 2010 INRA, EDP Sciences. This research was partially funded by the Spanish Ministry of Science and Innovation through the projects CSIC-PIE200740/008 and AGL-2008-04670-CO3-03. Peer Reviewed 2014-02-25T11:05:36Z 2014-02-25T11:05:36Z 2010-09 2014-02-25T11:05:36Z artículo http://purl.org/coar/resource_type/c_6501 doi: 10.1051/agro/2009052 issn: 1774-0746 e-issn: 1773-0155 Agronomy for Sustainable Development 30(3): 689-699 (2010) http://hdl.handle.net/10261/92458 10.1051/agro/2009052 none EDP Sciences
institution IAS ES
collection DSpace
country España
countrycode ES
component Bibliográfico
access En linea
databasecode dig-ias-es
tag biblioteca
region Europa del Sur
libraryname Biblioteca del IAS España
topic Multispectral
Remote late-season weed detection
Precision agriculture
Vegetation indices
Hyperspectral
Multispectral
Remote late-season weed detection
Precision agriculture
Vegetation indices
Hyperspectral
spellingShingle Multispectral
Remote late-season weed detection
Precision agriculture
Vegetation indices
Hyperspectral
Multispectral
Remote late-season weed detection
Precision agriculture
Vegetation indices
Hyperspectral
Gómez-Casero, M. Teresa
Castillejo González, Isabel L.
García-Ferrer, Alfonso
Peña Barragán, José Manuel
Jurado-Expósito, Montserrat
García Torres, Luis
López Granados, Francisca
Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
description Wheat, Triticum durum L, is a major cereal crop in Spain with over five million ha grown annually. Wild oat, Avena sterilis L., and canary grass, Phalaris spp., are distributed only in patches in wheat fields but herbicides are applied over entire fields, thus leading to over-application and unnecessary pollution. To reduce herbicide application, site-specific management techniques based on weed maps are being developed to treat only weed patches. Intensive weed scouting from the ground is time-consuming and expensive, and it relies on estimates of weeds at unsampled points. Remote sensing of weed canopies has been shown to be a more efficient alternative. The principle of weed remote sensing is that there are differences in the spectral reflectance between weeds and crops. To test this principle, we studied spectral signatures taken on the ground in the visible and near-infrared windows for discriminating wheat, wild oat and canary grass at their last phenological stages. Late-season phenological stages included initial seed maturation through advanced maturation for weeds, and initial senescence to senescent for wheat. Spectral signatures were collected on eight sampling dates from April 28 through May 26 using a handheld field spectroradiometer. A stepwise discriminant analysis was used to detect differences in reflectance and to determine the accuracy performance for a species classification as affected by their phenological stage. Four scenarios or classification sets were considered: wheat-wild oat-canary grass, with each species represented by a different group of spectra; wheat and grass weeds, combining the two weed species into one spectral group; wheat and wild oat with each represented as a single group, and finally, wheat and canary grass. Our analysis achieved 100% classification accuracy at the phenological stages of initial seed maturation, and green and advanced seed maturation and partly green for weeds and wheat, respectively, between the dates of April 28 and May 6. Furthermore, we reduced the number of hyperspectral wavelengths to thirteen out of 50. Multispectral analysis also showed that broad wavebands corresponding to those of QuickBird satellite imagery discriminated wild oat, canary grass and wheat at the same phenological stages and dates. Our findings are very useful for determining the timeframe during which future multispectral QuickBird satellite images will be obtained and the concrete wavelengths that should be used in case of using airborne hyperspectral imaging. Accurate and timely mapping of the spatial distribution of weeds is a key element in achieving site-specific herbicide applications for reducing spraying volume of herbicides and costs. © 2010 INRA, EDP Sciences.
format artículo
topic_facet Multispectral
Remote late-season weed detection
Precision agriculture
Vegetation indices
Hyperspectral
author Gómez-Casero, M. Teresa
Castillejo González, Isabel L.
García-Ferrer, Alfonso
Peña Barragán, José Manuel
Jurado-Expósito, Montserrat
García Torres, Luis
López Granados, Francisca
author_facet Gómez-Casero, M. Teresa
Castillejo González, Isabel L.
García-Ferrer, Alfonso
Peña Barragán, José Manuel
Jurado-Expósito, Montserrat
García Torres, Luis
López Granados, Francisca
author_sort Gómez-Casero, M. Teresa
title Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
title_short Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
title_full Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
title_fullStr Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
title_full_unstemmed Spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
title_sort spectral discrimination of wild oat and canary grass in wheat fields for less herbicide application
publisher EDP Sciences
publishDate 2010-09
url http://hdl.handle.net/10261/92458
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