Application-specific evaluation of a weed-detection algorithm for plant-specific spraying

Robotic plant-specific spraying can reduce herbicide usage in agriculture while minimizing labor costs and maximizing yield. Weed detection is a crucial step in automated weeding. Currently, weed detection algorithms are always evaluated at the image level, using conventional image metrics. However, these metrics do not consider the full pipeline connecting image acquisition to the site-specific operation of the spraying nozzles, which is vital for an accurate evaluation of the system. Therefore, we propose a novel application-specific image-evaluation method, which analyses the weed detections on the plant level and in the light of the spraying decision made by the robot. In this paper, a spraying robot is evaluated on three levels: (1) On image-level, using conventional image metrics, (2) on application-level, using our novel application-specific image-evaluation method, and (3) on field level, in which the weed-detection algorithm is implemented on an autonomous spraying robot and tested in the field. On image level, our detection system achieved a recall of 57% and a precision of 84%, which is a lower performance than detection systems reported in literature. However, integrated on an autonomous volunteer-potato sprayer-system we outperformed the state-of-the-art, effectively controlling 96% of the weeds while terminating only 3% of the crops. Using the application-level evaluation, an accurate indication of the field performance of the weed-detection algorithm prior to the field test was given and the type of errors produced by the spraying system was correctly predicted.

Saved in:
Bibliographic Details
Main Authors: Ruigrok, Thijs, van Henten, Eldert, Booij, Johan, van Boheemen, Koen, Kootstra, Gert
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Agricultural robotics, Deep learning, Field test, Weed detection, Weed removal,
Online Access:https://research.wur.nl/en/publications/application-specific-evaluation-of-a-weed-detection-algorithm-for
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-wur-nl-wurpubs-576021
record_format koha
spelling dig-wur-nl-wurpubs-5760212024-12-04 Ruigrok, Thijs van Henten, Eldert Booij, Johan van Boheemen, Koen Kootstra, Gert Article/Letter to editor Sensors (Switzerland) 20 (2020) 24 ISSN: 1424-8220 Application-specific evaluation of a weed-detection algorithm for plant-specific spraying 2020 Robotic plant-specific spraying can reduce herbicide usage in agriculture while minimizing labor costs and maximizing yield. Weed detection is a crucial step in automated weeding. Currently, weed detection algorithms are always evaluated at the image level, using conventional image metrics. However, these metrics do not consider the full pipeline connecting image acquisition to the site-specific operation of the spraying nozzles, which is vital for an accurate evaluation of the system. Therefore, we propose a novel application-specific image-evaluation method, which analyses the weed detections on the plant level and in the light of the spraying decision made by the robot. In this paper, a spraying robot is evaluated on three levels: (1) On image-level, using conventional image metrics, (2) on application-level, using our novel application-specific image-evaluation method, and (3) on field level, in which the weed-detection algorithm is implemented on an autonomous spraying robot and tested in the field. On image level, our detection system achieved a recall of 57% and a precision of 84%, which is a lower performance than detection systems reported in literature. However, integrated on an autonomous volunteer-potato sprayer-system we outperformed the state-of-the-art, effectively controlling 96% of the weeds while terminating only 3% of the crops. Using the application-level evaluation, an accurate indication of the field performance of the weed-detection algorithm prior to the field test was given and the type of errors produced by the spraying system was correctly predicted. en text/html https://research.wur.nl/en/publications/application-specific-evaluation-of-a-weed-detection-algorithm-for 10.3390/s20247262 https://edepot.wur.nl/538666 Agricultural robotics Deep learning Field test Weed detection Weed removal https://creativecommons.org/licenses/by/4.0/ Wageningen University & Research
institution WUR NL
collection DSpace
country Países bajos
countrycode NL
component Bibliográfico
access En linea
databasecode dig-wur-nl
tag biblioteca
region Europa del Oeste
libraryname WUR Library Netherlands
language English
topic Agricultural robotics
Deep learning
Field test
Weed detection
Weed removal
Agricultural robotics
Deep learning
Field test
Weed detection
Weed removal
spellingShingle Agricultural robotics
Deep learning
Field test
Weed detection
Weed removal
Agricultural robotics
Deep learning
Field test
Weed detection
Weed removal
Ruigrok, Thijs
van Henten, Eldert
Booij, Johan
van Boheemen, Koen
Kootstra, Gert
Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
description Robotic plant-specific spraying can reduce herbicide usage in agriculture while minimizing labor costs and maximizing yield. Weed detection is a crucial step in automated weeding. Currently, weed detection algorithms are always evaluated at the image level, using conventional image metrics. However, these metrics do not consider the full pipeline connecting image acquisition to the site-specific operation of the spraying nozzles, which is vital for an accurate evaluation of the system. Therefore, we propose a novel application-specific image-evaluation method, which analyses the weed detections on the plant level and in the light of the spraying decision made by the robot. In this paper, a spraying robot is evaluated on three levels: (1) On image-level, using conventional image metrics, (2) on application-level, using our novel application-specific image-evaluation method, and (3) on field level, in which the weed-detection algorithm is implemented on an autonomous spraying robot and tested in the field. On image level, our detection system achieved a recall of 57% and a precision of 84%, which is a lower performance than detection systems reported in literature. However, integrated on an autonomous volunteer-potato sprayer-system we outperformed the state-of-the-art, effectively controlling 96% of the weeds while terminating only 3% of the crops. Using the application-level evaluation, an accurate indication of the field performance of the weed-detection algorithm prior to the field test was given and the type of errors produced by the spraying system was correctly predicted.
format Article/Letter to editor
topic_facet Agricultural robotics
Deep learning
Field test
Weed detection
Weed removal
author Ruigrok, Thijs
van Henten, Eldert
Booij, Johan
van Boheemen, Koen
Kootstra, Gert
author_facet Ruigrok, Thijs
van Henten, Eldert
Booij, Johan
van Boheemen, Koen
Kootstra, Gert
author_sort Ruigrok, Thijs
title Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
title_short Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
title_full Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
title_fullStr Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
title_full_unstemmed Application-specific evaluation of a weed-detection algorithm for plant-specific spraying
title_sort application-specific evaluation of a weed-detection algorithm for plant-specific spraying
url https://research.wur.nl/en/publications/application-specific-evaluation-of-a-weed-detection-algorithm-for
work_keys_str_mv AT ruigrokthijs applicationspecificevaluationofaweeddetectionalgorithmforplantspecificspraying
AT vanhenteneldert applicationspecificevaluationofaweeddetectionalgorithmforplantspecificspraying
AT booijjohan applicationspecificevaluationofaweeddetectionalgorithmforplantspecificspraying
AT vanboheemenkoen applicationspecificevaluationofaweeddetectionalgorithmforplantspecificspraying
AT kootstragert applicationspecificevaluationofaweeddetectionalgorithmforplantspecificspraying
_version_ 1819145378691284992