Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.

Bibliographic Details
Main Author: Victorino, Gonçalo
Publication Date: 2023
Other Authors: Lopes, Carlos M.
Language: eng
Source: Repositórios Científicos de Acesso Aberto de Portugal (RCAAP)
Download full: http://hdl.handle.net/10400.5/31286
Summary: Context and purpose of the study - Vineyard yield estimation brings several advantages to the entire wine industry. It can provide useful information to support decision making regarding bunch thinning practices, harvest logistics and marketing strategies, as well as to manage stored wine and cellar tanks allocation. Today, this estimation is performed mainly using manual methods based on destructive bunch sampling. Yield estimation using image analysis has the potential to perform this task extensively, automatically and non-invasively. However, bunch occlusion, caused mainly by leaves, presents a great challenge to this approach. This occlusion is highly dependent on canopy porosity, which in turn is affected by factors such as vigor, shoot density and leaf area, water availability, biotic and abiotic stresses, among others. In this work, the results of an image-based yield estimation method that estimates bunch occlusion by leaves using canopy porosity data, are compared with a manual approach. Material and methods - The trial was carried out in two vineyards located within Lisbon winegrowing region, over four years (2018-21). Spur pruned vines trained on a vertical shoot positioning trellis system were used. In a first step, an empirical model was computed to estimate the fraction of bunches occluded by leaves based on the proven assumption in the literature that there is a relationship between canopy porosity and the fraction of exposed bunches. For this, images were captured from 1 m segments at two phenological stages (veraison and full maturation) in non-defoliated and partially defoliated vines of three grape varieties. This model was then used, in a second step, along with other image-based predictors of bunch weight, to estimate grapevine yield. The developed approach included image-based variables related to the visible bunch area and perimeter, berry number and bunch compactness, while considering canopy porosity to estimate the fraction of occluded bunch area. Results were compared to a manual method based on bunch counts and historical bunch weight, on six grape varieties, at veraison. All vine images were collected from a perspective perpendicular to the vine rows, by a static commercial RGB camera or a RGB camera installed on a terrestrial robot. Results - The yield estimated with the developed algorithm showed a high correlation with the actual yield (R2 = 0.86), with estimation errors ranging between -0.1% and 20.8%, depending on the variety and the year. In most cases, the proposed algorithm outperformed the manual method which was mostly impaired by variations of bunch weight that were not considered by historical data. The proposed image-based approach seems to be an accurate alternative to conventional yield estimation methods. It can be carried out using different image collection setups and has the advantage of being independent of historical data and able to be applied to much larger samples than those used in manual methods. Even though the occlusion estimation method worked well for most cases, further research is needed for modeling non-visible bunches in very dense canopies.
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spelling Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.Grapevine yield predictionBunch occlusionProximal sensingCanopy porosityBunch pixelsContext and purpose of the study - Vineyard yield estimation brings several advantages to the entire wine industry. It can provide useful information to support decision making regarding bunch thinning practices, harvest logistics and marketing strategies, as well as to manage stored wine and cellar tanks allocation. Today, this estimation is performed mainly using manual methods based on destructive bunch sampling. Yield estimation using image analysis has the potential to perform this task extensively, automatically and non-invasively. However, bunch occlusion, caused mainly by leaves, presents a great challenge to this approach. This occlusion is highly dependent on canopy porosity, which in turn is affected by factors such as vigor, shoot density and leaf area, water availability, biotic and abiotic stresses, among others. In this work, the results of an image-based yield estimation method that estimates bunch occlusion by leaves using canopy porosity data, are compared with a manual approach. Material and methods - The trial was carried out in two vineyards located within Lisbon winegrowing region, over four years (2018-21). Spur pruned vines trained on a vertical shoot positioning trellis system were used. In a first step, an empirical model was computed to estimate the fraction of bunches occluded by leaves based on the proven assumption in the literature that there is a relationship between canopy porosity and the fraction of exposed bunches. For this, images were captured from 1 m segments at two phenological stages (veraison and full maturation) in non-defoliated and partially defoliated vines of three grape varieties. This model was then used, in a second step, along with other image-based predictors of bunch weight, to estimate grapevine yield. The developed approach included image-based variables related to the visible bunch area and perimeter, berry number and bunch compactness, while considering canopy porosity to estimate the fraction of occluded bunch area. Results were compared to a manual method based on bunch counts and historical bunch weight, on six grape varieties, at veraison. All vine images were collected from a perspective perpendicular to the vine rows, by a static commercial RGB camera or a RGB camera installed on a terrestrial robot. Results - The yield estimated with the developed algorithm showed a high correlation with the actual yield (R2 = 0.86), with estimation errors ranging between -0.1% and 20.8%, depending on the variety and the year. In most cases, the proposed algorithm outperformed the manual method which was mostly impaired by variations of bunch weight that were not considered by historical data. The proposed image-based approach seems to be an accurate alternative to conventional yield estimation methods. It can be carried out using different image collection setups and has the advantage of being independent of historical data and able to be applied to much larger samples than those used in manual methods. Even though the occlusion estimation method worked well for most cases, further research is needed for modeling non-visible bunches in very dense canopies.GIESCORepositório da Universidade de LisboaVictorino, GonçaloLopes, Carlos M.2024-07-12T15:26:41Z20232023-01-01T00:00:00Zconference objectinfo:eu-repo/semantics/publishedVersionapplication/pdfhttp://hdl.handle.net/10400.5/31286engVictorino G & Lopes CM (2023). Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves. IVES Conference Series, GiESCO 2023.info:eu-repo/semantics/openAccessreponame:Repositórios Científicos de Acesso Aberto de Portugal (RCAAP)instname:FCCN, serviços digitais da FCT – Fundação para a Ciência e a Tecnologiainstacron:RCAAP2025-03-17T16:10:49Zoai:repositorio.ulisboa.pt:10400.5/31286Portal AgregadorONGhttps://www.rcaap.pt/oai/openaireinfo@rcaap.ptopendoar:https://opendoar.ac.uk/repository/71602025-05-29T04:05:02.652361Repositórios Científicos de Acesso Aberto de Portugal (RCAAP) - FCCN, serviços digitais da FCT – Fundação para a Ciência e a Tecnologiafalse
dc.title.none.fl_str_mv Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
title Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
spellingShingle Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
Victorino, Gonçalo
Grapevine yield prediction
Bunch occlusion
Proximal sensing
Canopy porosity
Bunch pixels
title_short Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
title_full Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
title_fullStr Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
title_full_unstemmed Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
title_sort Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves.
author Victorino, Gonçalo
author_facet Victorino, Gonçalo
Lopes, Carlos M.
author_role author
author2 Lopes, Carlos M.
author2_role author
dc.contributor.none.fl_str_mv Repositório da Universidade de Lisboa
dc.contributor.author.fl_str_mv Victorino, Gonçalo
Lopes, Carlos M.
dc.subject.por.fl_str_mv Grapevine yield prediction
Bunch occlusion
Proximal sensing
Canopy porosity
Bunch pixels
topic Grapevine yield prediction
Bunch occlusion
Proximal sensing
Canopy porosity
Bunch pixels
description Context and purpose of the study - Vineyard yield estimation brings several advantages to the entire wine industry. It can provide useful information to support decision making regarding bunch thinning practices, harvest logistics and marketing strategies, as well as to manage stored wine and cellar tanks allocation. Today, this estimation is performed mainly using manual methods based on destructive bunch sampling. Yield estimation using image analysis has the potential to perform this task extensively, automatically and non-invasively. However, bunch occlusion, caused mainly by leaves, presents a great challenge to this approach. This occlusion is highly dependent on canopy porosity, which in turn is affected by factors such as vigor, shoot density and leaf area, water availability, biotic and abiotic stresses, among others. In this work, the results of an image-based yield estimation method that estimates bunch occlusion by leaves using canopy porosity data, are compared with a manual approach. Material and methods - The trial was carried out in two vineyards located within Lisbon winegrowing region, over four years (2018-21). Spur pruned vines trained on a vertical shoot positioning trellis system were used. In a first step, an empirical model was computed to estimate the fraction of bunches occluded by leaves based on the proven assumption in the literature that there is a relationship between canopy porosity and the fraction of exposed bunches. For this, images were captured from 1 m segments at two phenological stages (veraison and full maturation) in non-defoliated and partially defoliated vines of three grape varieties. This model was then used, in a second step, along with other image-based predictors of bunch weight, to estimate grapevine yield. The developed approach included image-based variables related to the visible bunch area and perimeter, berry number and bunch compactness, while considering canopy porosity to estimate the fraction of occluded bunch area. Results were compared to a manual method based on bunch counts and historical bunch weight, on six grape varieties, at veraison. All vine images were collected from a perspective perpendicular to the vine rows, by a static commercial RGB camera or a RGB camera installed on a terrestrial robot. Results - The yield estimated with the developed algorithm showed a high correlation with the actual yield (R2 = 0.86), with estimation errors ranging between -0.1% and 20.8%, depending on the variety and the year. In most cases, the proposed algorithm outperformed the manual method which was mostly impaired by variations of bunch weight that were not considered by historical data. The proposed image-based approach seems to be an accurate alternative to conventional yield estimation methods. It can be carried out using different image collection setups and has the advantage of being independent of historical data and able to be applied to much larger samples than those used in manual methods. Even though the occlusion estimation method worked well for most cases, further research is needed for modeling non-visible bunches in very dense canopies.
publishDate 2023
dc.date.none.fl_str_mv 2023
2023-01-01T00:00:00Z
2024-07-12T15:26:41Z
dc.type.driver.fl_str_mv conference object
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dc.identifier.uri.fl_str_mv http://hdl.handle.net/10400.5/31286
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dc.language.iso.fl_str_mv eng
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dc.relation.none.fl_str_mv Victorino G & Lopes CM (2023). Image based vineyard yield prediction using empirical models to estimate bunch occlusion by leaves. IVES Conference Series, GiESCO 2023.
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eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv GIESCO
publisher.none.fl_str_mv GIESCO
dc.source.none.fl_str_mv reponame:Repositórios Científicos de Acesso Aberto de Portugal (RCAAP)
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