Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV
Yield estimation in vineyards is an essential issue for performing cropping practices to reach the desired production quality or quantity. Sporadic manual measurements have been traditionally made. In the last decade, vegetation indices (VIs) and geometric parameters obtained from unmanned aerial vehicle (UAV) imagery have been related to different vine biophysical features. This research aimed to evaluate the potential of VIs and green canopy cover (GCC; as a measure of plant vigour) obtained from conventional (or red, green, blue; RGB) and multispectral sensors that monitor spatial intraplot variability for yield predictions. The yield components traditionally sampled in an early growth cycle stage (pea berry size) were combined with UAV imagery-based products. The proposed methodology was applied to a vineyard in southeastern Spain during the 2019 and 2020 growing seasons. Rain-fed and irrigated treatments were implemented. Flights were performed throughout the growth cycle using RGB and multispectral cameras mounted on a UAV. Orthoimages were generated. Computer vision techniques were used to segment these orthoimages to obtain vegetation-only masks. Simple and multiple linear regression techniques were evaluated by using VIs alone, VIs combined with GCC and yield components as predictors. The RMSE values ranged from 0.21 kg vine to 0.39 kg vine when yield components, RGB or multispectral VIs were employed. Therefore, with all the advantages that their use entails, RGB and multispectral sensors are a good option for estimating the final yield of vineyards despite calibration being required for each season and grapevine plot.
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Elsevier
2022-12
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Subjects: | Multispectral images, RGB images, Unmanned aerial vehicle, Precision viticulture, Yield estimations, |
Online Access: | http://hdl.handle.net/10261/303679 |
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dig-cide-es-10261-3036792023-03-21T12:15:24Z Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV López-García, Patricia Ortega, J. F. Pérez-Álvarez, Eva Pilar Moreno, Miguel A. Ramírez-Cuesta, Juan Miguel Intrigliolo, Diego S. Ballesteros, R. Ministerio de Ciencia, Innovación y Universidades (España) Agencia Estatal de Investigación (España) Junta de Comunidades de Castilla-La Mancha European Commission Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations Yield estimation in vineyards is an essential issue for performing cropping practices to reach the desired production quality or quantity. Sporadic manual measurements have been traditionally made. In the last decade, vegetation indices (VIs) and geometric parameters obtained from unmanned aerial vehicle (UAV) imagery have been related to different vine biophysical features. This research aimed to evaluate the potential of VIs and green canopy cover (GCC; as a measure of plant vigour) obtained from conventional (or red, green, blue; RGB) and multispectral sensors that monitor spatial intraplot variability for yield predictions. The yield components traditionally sampled in an early growth cycle stage (pea berry size) were combined with UAV imagery-based products. The proposed methodology was applied to a vineyard in southeastern Spain during the 2019 and 2020 growing seasons. Rain-fed and irrigated treatments were implemented. Flights were performed throughout the growth cycle using RGB and multispectral cameras mounted on a UAV. Orthoimages were generated. Computer vision techniques were used to segment these orthoimages to obtain vegetation-only masks. Simple and multiple linear regression techniques were evaluated by using VIs alone, VIs combined with GCC and yield components as predictors. The RMSE values ranged from 0.21 kg vine to 0.39 kg vine when yield components, RGB or multispectral VIs were employed. Therefore, with all the advantages that their use entails, RGB and multispectral sensors are a good option for estimating the final yield of vineyards despite calibration being required for each season and grapevine plot. This work was supported by the Ministry of Science, Innovation and Universities, grant numbers RTC-2017-6365-2 and PID2020-115998RB-C22; by the Government of Castilla-La Mancha, grant number SBPLY/17/180501/000251; and by FEDER funds. 2023-03-21T09:23:29Z 2023-03-21T09:23:29Z 2022-12 2023-03-21T09:23:30Z artículo doi: 10.1016/j.biosystemseng.2022.10.015 issn: 1537-5110 e-issn: 1537-5129 Biosystems Engineering 224: 227-245 (2022) http://hdl.handle.net/10261/303679 #PLACEHOLDER_PARENT_METADATA_VALUE# #PLACEHOLDER_PARENT_METADATA_VALUE# info:eu-repo/grantAgreement/AEI//RTC-2017-6365-2 info:eu-repo/grantAgreement/AEI/Plan Estatal de Investigación Científica y Técnica y de Innovación 2017-2020/PID2020-115998RB-C22/ES/FERTIRRIEGO DE PRECISION Y SECUESTRO DE CARBONO: POTENCIANDO EL PAPEL DEL RIEGO EN LA NEUTRALIDAD DE CARBONO/ http://dx.doi.org/10.1016/j.biosystemseng.2022.10.015 Sí none Elsevier |
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Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations |
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Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations López-García, Patricia Ortega, J. F. Pérez-Álvarez, Eva Pilar Moreno, Miguel A. Ramírez-Cuesta, Juan Miguel Intrigliolo, Diego S. Ballesteros, R. Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
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Yield estimation in vineyards is an essential issue for performing cropping practices to reach the desired production quality or quantity. Sporadic manual measurements have been traditionally made. In the last decade, vegetation indices (VIs) and geometric parameters obtained from unmanned aerial vehicle (UAV) imagery have been related to different vine biophysical features. This research aimed to evaluate the potential of VIs and green canopy cover (GCC; as a measure of plant vigour) obtained from conventional (or red, green, blue; RGB) and multispectral sensors that monitor spatial intraplot variability for yield predictions. The yield components traditionally sampled in an early growth cycle stage (pea berry size) were combined with UAV imagery-based products. The proposed methodology was applied to a vineyard in southeastern Spain during the 2019 and 2020 growing seasons. Rain-fed and irrigated treatments were implemented. Flights were performed throughout the growth cycle using RGB and multispectral cameras mounted on a UAV. Orthoimages were generated. Computer vision techniques were used to segment these orthoimages to obtain vegetation-only masks. Simple and multiple linear regression techniques were evaluated by using VIs alone, VIs combined with GCC and yield components as predictors. The RMSE values ranged from 0.21 kg vine to 0.39 kg vine when yield components, RGB or multispectral VIs were employed. Therefore, with all the advantages that their use entails, RGB and multispectral sensors are a good option for estimating the final yield of vineyards despite calibration being required for each season and grapevine plot. |
author2 |
Ministerio de Ciencia, Innovación y Universidades (España) |
author_facet |
Ministerio de Ciencia, Innovación y Universidades (España) López-García, Patricia Ortega, J. F. Pérez-Álvarez, Eva Pilar Moreno, Miguel A. Ramírez-Cuesta, Juan Miguel Intrigliolo, Diego S. Ballesteros, R. |
format |
artículo |
topic_facet |
Multispectral images RGB images Unmanned aerial vehicle Precision viticulture Yield estimations |
author |
López-García, Patricia Ortega, J. F. Pérez-Álvarez, Eva Pilar Moreno, Miguel A. Ramírez-Cuesta, Juan Miguel Intrigliolo, Diego S. Ballesteros, R. |
author_sort |
López-García, Patricia |
title |
Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
title_short |
Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
title_full |
Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
title_fullStr |
Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
title_full_unstemmed |
Yield estimations in a vineyard based on high-resolution spatial imagery acquired by a UAV |
title_sort |
yield estimations in a vineyard based on high-resolution spatial imagery acquired by a uav |
publisher |
Elsevier |
publishDate |
2022-12 |
url |
http://hdl.handle.net/10261/303679 |
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