Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop

The adoption of site-specific weed management (SSWM) technologies by farmers is not aligned with 25 the scientific achievements in this field. While scientists have demonstrated significant success in 26 real-time weed identification, phenotyping and accurate weed mapping by using various sensors and 27 platforms, the integration by farmers of SSWM and weed phenotyping tools into weed management 28 protocols is limited. This gap was therefore a central topic of discussion at the most recent workshop 29 of the SSWM Working Group arranged by the European Weed Research Society (EWRS). This 30 insight paper aims to summarize the presentations and discussions of some of the workshop panels 31 and to highlight different aspects of weed identification and spray application that were thought to 32 hinder SSWM adoption. It also aims to share views and thoughts regarding steps that can be taken to 33 facilitate future implementation of SSWM. 34 35

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Main Author: Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2
Format: artículo biblioteca
Published: 2021
Subjects:Actor network, Deep learning, Integrated weed management, Machine learning, Precision 36 agriculture, Phenotyping, Weed detection, Weed mapping,
Online Access:http://hdl.handle.net/10261/236612
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spelling dig-ica-es-10261-2366122021-08-31T06:43:06Z Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2 Actor network Deep learning Integrated weed management Machine learning Precision 36 agriculture Phenotyping Weed detection Weed mapping The adoption of site-specific weed management (SSWM) technologies by farmers is not aligned with 25 the scientific achievements in this field. While scientists have demonstrated significant success in 26 real-time weed identification, phenotyping and accurate weed mapping by using various sensors and 27 platforms, the integration by farmers of SSWM and weed phenotyping tools into weed management 28 protocols is limited. This gap was therefore a central topic of discussion at the most recent workshop 29 of the SSWM Working Group arranged by the European Weed Research Society (EWRS). This 30 insight paper aims to summarize the presentations and discussions of some of the workshop panels 31 and to highlight different aspects of weed identification and spray application that were thought to 32 hinder SSWM adoption. It also aims to share views and thoughts regarding steps that can be taken to 33 facilitate future implementation of SSWM. 34 35 Peer reviewed 2021-04-02T07:22:15Z 2021-04-02T07:22:15Z 2021 artículo http://purl.org/coar/resource_type/c_6501 Weed Research 61(3): 147-153 (2021) http://hdl.handle.net/10261/236612 10.1111/wre.12469 http://doi.org/10.1111/wre.12469 Sí open
institution ICA ES
collection DSpace
country España
countrycode ES
component Bibliográfico
access En linea
databasecode dig-ica-es
tag biblioteca
region Europa del Sur
libraryname Biblioteca del ICA España
topic Actor network
Deep learning
Integrated weed management
Machine learning
Precision 36 agriculture
Phenotyping
Weed detection
Weed mapping
Actor network
Deep learning
Integrated weed management
Machine learning
Precision 36 agriculture
Phenotyping
Weed detection
Weed mapping
spellingShingle Actor network
Deep learning
Integrated weed management
Machine learning
Precision 36 agriculture
Phenotyping
Weed detection
Weed mapping
Actor network
Deep learning
Integrated weed management
Machine learning
Precision 36 agriculture
Phenotyping
Weed detection
Weed mapping
Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2
Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
description The adoption of site-specific weed management (SSWM) technologies by farmers is not aligned with 25 the scientific achievements in this field. While scientists have demonstrated significant success in 26 real-time weed identification, phenotyping and accurate weed mapping by using various sensors and 27 platforms, the integration by farmers of SSWM and weed phenotyping tools into weed management 28 protocols is limited. This gap was therefore a central topic of discussion at the most recent workshop 29 of the SSWM Working Group arranged by the European Weed Research Society (EWRS). This 30 insight paper aims to summarize the presentations and discussions of some of the workshop panels 31 and to highlight different aspects of weed identification and spray application that were thought to 32 hinder SSWM adoption. It also aims to share views and thoughts regarding steps that can be taken to 33 facilitate future implementation of SSWM. 34 35
format artículo
topic_facet Actor network
Deep learning
Integrated weed management
Machine learning
Precision 36 agriculture
Phenotyping
Weed detection
Weed mapping
author Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2
author_facet Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2
author_sort Ran Nisim Lati1,*, Jesper Rasmussen2,**, Dionisio Andujar3, Jose Dorado4, Therese W. Berge5, 4 Christina Wellhausen6, Michael Pflanz6,7, Henning Nordmeyer6, Michael Schirrmann7, Hanan 5 Eizenberg1, Paul Neve8, Rasmus Nyholm Jørgensen9 and Svend Christensen2
title Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
title_short Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
title_full Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
title_fullStr Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
title_full_unstemmed Site-specific weed management—constraints and opportunities for the weed research 1 community. Insights from a workshop
title_sort site-specific weed management—constraints and opportunities for the weed research 1 community. insights from a workshop
publishDate 2021
url http://hdl.handle.net/10261/236612
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