UAV time-series imagery show diversity treatment effects on cabbage growth

The demand for more sustainable farming is driving interest in alternative cropping systems, such as strip intercropping. In such systems, two or more crops are grown simultaneously on the same field, offering advantages such as increased biocontrol of weed, pest, diseases, and increasing productivity in resource-limited ecosystems. However, with strip intercropping, complexity increases and quantitative data to study the competition between plants are still limited due to the current manual process of acquiring data. While individual-plant data would facilitate this study, the manual acquisition is not feasible for large-scale experiments. Alternatively, unmanned aerial vehicles (UAV) equipped with high-resolution camera can cover large areas and estimate individual-plant growth from RGB imagery using automated image-processing methods. This study investigated its applicability to monitor the plant-height development of individual cabbage plants in space and time with sufficient accuracy and to identify the potential differences between strip intercropping treatments. Using RGB imagery and structure-from-motion analysis, a digital surface model (DSM) was created. Individual plant-height was calculated from the DSM by estimating the height of the vegetation and the height of the soil. Comparing the height estimations with ground-truth height measurements showed an overall root mean square error (RMSE) of 4.67 cm, which is in the same range as the 4 cm standard deviation between measurements of multiple observers. The UAV-based height estimation of individual plants was used not only to compare the development in a strip intercropping field to that in a monoculture but also to compare with various treatments in the strip intercropping system. The results show that the plants grew faster in intercropping conditions than in monocropping conditions, with a subtle difference between treatments. Our results illustrate that with a UAV-based imaging approach we can go beyond current experimental practice and collect vast amounts of data on individual plants with high spatial and temporal resolution with an accuracy similar to that of manual measurements.

Saved in:
Bibliographic Details
Main Authors: Jamil, Norazlida, Kootstra, Gert, van Apeldoorn, Dirk F., Van Henten, Eldert J., Kooistra, Lammert
Format: Article/Letter to editor biblioteca
Language:English
Subjects:Digital plant phenotyping, Individual plant monitoring, Plant-height, RGB imaging, Treatments effect, Unmanned aerial vehicle,
Online Access:https://research.wur.nl/en/publications/uav-time-series-imagery-show-diversity-treatment-effects-on-cabba
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-wur-nl-wurpubs-629412
record_format koha
spelling dig-wur-nl-wurpubs-6294122025-01-14 Jamil, Norazlida Kootstra, Gert van Apeldoorn, Dirk F. Van Henten, Eldert J. Kooistra, Lammert Article/Letter to editor Smart Agricultural Technology 8 (2024) ISSN: 2772-3755 UAV time-series imagery show diversity treatment effects on cabbage growth 2024 The demand for more sustainable farming is driving interest in alternative cropping systems, such as strip intercropping. In such systems, two or more crops are grown simultaneously on the same field, offering advantages such as increased biocontrol of weed, pest, diseases, and increasing productivity in resource-limited ecosystems. However, with strip intercropping, complexity increases and quantitative data to study the competition between plants are still limited due to the current manual process of acquiring data. While individual-plant data would facilitate this study, the manual acquisition is not feasible for large-scale experiments. Alternatively, unmanned aerial vehicles (UAV) equipped with high-resolution camera can cover large areas and estimate individual-plant growth from RGB imagery using automated image-processing methods. This study investigated its applicability to monitor the plant-height development of individual cabbage plants in space and time with sufficient accuracy and to identify the potential differences between strip intercropping treatments. Using RGB imagery and structure-from-motion analysis, a digital surface model (DSM) was created. Individual plant-height was calculated from the DSM by estimating the height of the vegetation and the height of the soil. Comparing the height estimations with ground-truth height measurements showed an overall root mean square error (RMSE) of 4.67 cm, which is in the same range as the 4 cm standard deviation between measurements of multiple observers. The UAV-based height estimation of individual plants was used not only to compare the development in a strip intercropping field to that in a monoculture but also to compare with various treatments in the strip intercropping system. The results show that the plants grew faster in intercropping conditions than in monocropping conditions, with a subtle difference between treatments. Our results illustrate that with a UAV-based imaging approach we can go beyond current experimental practice and collect vast amounts of data on individual plants with high spatial and temporal resolution with an accuracy similar to that of manual measurements. en application/pdf https://research.wur.nl/en/publications/uav-time-series-imagery-show-diversity-treatment-effects-on-cabba 10.1016/j.atech.2024.100443 https://edepot.wur.nl/656965 Digital plant phenotyping Individual plant monitoring Plant-height RGB imaging Treatments effect Unmanned aerial vehicle https://creativecommons.org/licenses/by/4.0/ 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 Digital plant phenotyping
Individual plant monitoring
Plant-height
RGB imaging
Treatments effect
Unmanned aerial vehicle
Digital plant phenotyping
Individual plant monitoring
Plant-height
RGB imaging
Treatments effect
Unmanned aerial vehicle
spellingShingle Digital plant phenotyping
Individual plant monitoring
Plant-height
RGB imaging
Treatments effect
Unmanned aerial vehicle
Digital plant phenotyping
Individual plant monitoring
Plant-height
RGB imaging
Treatments effect
Unmanned aerial vehicle
Jamil, Norazlida
Kootstra, Gert
van Apeldoorn, Dirk F.
Van Henten, Eldert J.
Kooistra, Lammert
UAV time-series imagery show diversity treatment effects on cabbage growth
description The demand for more sustainable farming is driving interest in alternative cropping systems, such as strip intercropping. In such systems, two or more crops are grown simultaneously on the same field, offering advantages such as increased biocontrol of weed, pest, diseases, and increasing productivity in resource-limited ecosystems. However, with strip intercropping, complexity increases and quantitative data to study the competition between plants are still limited due to the current manual process of acquiring data. While individual-plant data would facilitate this study, the manual acquisition is not feasible for large-scale experiments. Alternatively, unmanned aerial vehicles (UAV) equipped with high-resolution camera can cover large areas and estimate individual-plant growth from RGB imagery using automated image-processing methods. This study investigated its applicability to monitor the plant-height development of individual cabbage plants in space and time with sufficient accuracy and to identify the potential differences between strip intercropping treatments. Using RGB imagery and structure-from-motion analysis, a digital surface model (DSM) was created. Individual plant-height was calculated from the DSM by estimating the height of the vegetation and the height of the soil. Comparing the height estimations with ground-truth height measurements showed an overall root mean square error (RMSE) of 4.67 cm, which is in the same range as the 4 cm standard deviation between measurements of multiple observers. The UAV-based height estimation of individual plants was used not only to compare the development in a strip intercropping field to that in a monoculture but also to compare with various treatments in the strip intercropping system. The results show that the plants grew faster in intercropping conditions than in monocropping conditions, with a subtle difference between treatments. Our results illustrate that with a UAV-based imaging approach we can go beyond current experimental practice and collect vast amounts of data on individual plants with high spatial and temporal resolution with an accuracy similar to that of manual measurements.
format Article/Letter to editor
topic_facet Digital plant phenotyping
Individual plant monitoring
Plant-height
RGB imaging
Treatments effect
Unmanned aerial vehicle
author Jamil, Norazlida
Kootstra, Gert
van Apeldoorn, Dirk F.
Van Henten, Eldert J.
Kooistra, Lammert
author_facet Jamil, Norazlida
Kootstra, Gert
van Apeldoorn, Dirk F.
Van Henten, Eldert J.
Kooistra, Lammert
author_sort Jamil, Norazlida
title UAV time-series imagery show diversity treatment effects on cabbage growth
title_short UAV time-series imagery show diversity treatment effects on cabbage growth
title_full UAV time-series imagery show diversity treatment effects on cabbage growth
title_fullStr UAV time-series imagery show diversity treatment effects on cabbage growth
title_full_unstemmed UAV time-series imagery show diversity treatment effects on cabbage growth
title_sort uav time-series imagery show diversity treatment effects on cabbage growth
url https://research.wur.nl/en/publications/uav-time-series-imagery-show-diversity-treatment-effects-on-cabba
work_keys_str_mv AT jamilnorazlida uavtimeseriesimageryshowdiversitytreatmenteffectsoncabbagegrowth
AT kootstragert uavtimeseriesimageryshowdiversitytreatmenteffectsoncabbagegrowth
AT vanapeldoorndirkf uavtimeseriesimageryshowdiversitytreatmenteffectsoncabbagegrowth
AT vanhenteneldertj uavtimeseriesimageryshowdiversitytreatmenteffectsoncabbagegrowth
AT kooistralammert uavtimeseriesimageryshowdiversitytreatmenteffectsoncabbagegrowth
_version_ 1822263144172486656