Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest
Biomass and yield are key variables for assessing the production and performance of agricultural systems. Modeling and predicting the biomass and yield of individual plants at the farm scale represents a major challenge in precision agriculture, particularly when salinity and other abiotic stresses...
Main Authors: | , , , , , , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Frontiers Media S.A.
2020-05-01
|
Series: | Frontiers in Artificial Intelligence |
Subjects: | |
Online Access: | https://www.frontiersin.org/article/10.3389/frai.2020.00028/full |
id |
doaj-85accfd2aeb94fe187ccb8c45f756f7d |
---|---|
record_format |
Article |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kasper Johansen Mitchell J. L. Morton Yoann Malbeteau Bruno Aragon Samer Al-Mashharawi Matteo G. Ziliani Yoseline Angel Gabriele Fiene Sónia Negrão Sónia Negrão Magdi A. A. Mousa Magdi A. A. Mousa Mark A. Tester Matthew F. McCabe |
spellingShingle |
Kasper Johansen Mitchell J. L. Morton Yoann Malbeteau Bruno Aragon Samer Al-Mashharawi Matteo G. Ziliani Yoseline Angel Gabriele Fiene Sónia Negrão Sónia Negrão Magdi A. A. Mousa Magdi A. A. Mousa Mark A. Tester Matthew F. McCabe Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest Frontiers in Artificial Intelligence UAV yield biomass tomato plants salinity random forest |
author_facet |
Kasper Johansen Mitchell J. L. Morton Yoann Malbeteau Bruno Aragon Samer Al-Mashharawi Matteo G. Ziliani Yoseline Angel Gabriele Fiene Sónia Negrão Sónia Negrão Magdi A. A. Mousa Magdi A. A. Mousa Mark A. Tester Matthew F. McCabe |
author_sort |
Kasper Johansen |
title |
Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest |
title_short |
Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest |
title_full |
Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest |
title_fullStr |
Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest |
title_full_unstemmed |
Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random Forest |
title_sort |
predicting biomass and yield in a tomato phenotyping experiment using uav imagery and random forest |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Artificial Intelligence |
issn |
2624-8212 |
publishDate |
2020-05-01 |
description |
Biomass and yield are key variables for assessing the production and performance of agricultural systems. Modeling and predicting the biomass and yield of individual plants at the farm scale represents a major challenge in precision agriculture, particularly when salinity and other abiotic stresses may play a role. Here, we evaluate a diversity panel of the wild tomato species (Solanum pimpinellifolium) through both field and unmanned aerial vehicle (UAV)-based phenotyping of 600 control and 600 salt-treated plants. The study objective was to predict fresh shoot mass, tomato fruit numbers, and yield mass at harvest based on a range of variables derived from the UAV imagery. UAV-based red–green–blue (RGB) imageries collected 1, 2, 4, 6, 7, and 8 weeks before harvest were also used to determine if prediction accuracies varied between control and salt-treated plants. Multispectral UAV-based imagery was also collected 1 and 2 weeks prior to harvest to further explore predictive insights. In order to estimate the end of season biomass and yield, a random forest machine learning approach was implemented using UAV-imagery-derived predictors as input variables. Shape features derived from the UAV, such as plant area, border length, width, and length, were found to have the highest importance in the predictions, followed by vegetation indices and the entropy texture measure. The multispectral UAV imagery collected 2 weeks prior to harvest produced the highest explained variances for fresh shoot mass (87.95%), fruit numbers (63.88%), and yield mass per plant (66.51%). The RGB UAV imagery produced very similar results to those of the multispectral UAV dataset, with the explained variance reducing as a function of increasing time to harvest. The results showed that predicting the yield of salt-stressed plants produced higher accuracies when the models excluded control plants, whereas predicting the yield of control plants was not affected by the inclusion of salt-stressed plants within the models. This research demonstrates that it is possible to predict the average biomass and yield up to 8 weeks prior to harvest within 4.23% of field-based measurements and up to 4 weeks prior to harvest at the individual plant level. Results from this work may be useful in providing guidance for yield forecasting of healthy and salt-stressed tomato plants, which in turn may inform growing practices, logistical planning, and sales operations. |
topic |
UAV yield biomass tomato plants salinity random forest |
url |
https://www.frontiersin.org/article/10.3389/frai.2020.00028/full |
work_keys_str_mv |
AT kasperjohansen predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT mitchelljlmorton predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT yoannmalbeteau predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT brunoaragon predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT sameralmashharawi predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT matteogziliani predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT yoselineangel predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT gabrielefiene predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT sonianegrao predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT sonianegrao predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT magdiaamousa predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT magdiaamousa predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT markatester predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest AT matthewfmccabe predictingbiomassandyieldinatomatophenotypingexperimentusinguavimageryandrandomforest |
_version_ |
1724938475152605184 |
spelling |
doaj-85accfd2aeb94fe187ccb8c45f756f7d2020-11-25T02:05:21ZengFrontiers Media S.A.Frontiers in Artificial Intelligence2624-82122020-05-01310.3389/frai.2020.00028520685Predicting Biomass and Yield in a Tomato Phenotyping Experiment Using UAV Imagery and Random ForestKasper Johansen0Mitchell J. L. Morton1Yoann Malbeteau2Bruno Aragon3Samer Al-Mashharawi4Matteo G. Ziliani5Yoseline Angel6Gabriele Fiene7Sónia Negrão8Sónia Negrão9Magdi A. A. Mousa10Magdi A. A. Mousa11Mark A. Tester12Matthew F. McCabe13Water Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaCenter for Desert Agriculture, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaCenter for Desert Agriculture, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaCenter for Desert Agriculture, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaSchool of Biology and Environmental Science, University College Dublin, Dublin, IrelandDepartment of Arid Land Agriculture, Faculty of Meteorology, Environment and Arid Land Agriculture, King Abdulaziz University, Jeddah, Saudi ArabiaDepartment of Vegetables, Faculty of Agriculture, Assiut University, Assiut, EgyptCenter for Desert Agriculture, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaWater Desalination and Reuse Center, King Abdullah University of Science and Technology, Thuwal, Saudi ArabiaBiomass and yield are key variables for assessing the production and performance of agricultural systems. Modeling and predicting the biomass and yield of individual plants at the farm scale represents a major challenge in precision agriculture, particularly when salinity and other abiotic stresses may play a role. Here, we evaluate a diversity panel of the wild tomato species (Solanum pimpinellifolium) through both field and unmanned aerial vehicle (UAV)-based phenotyping of 600 control and 600 salt-treated plants. The study objective was to predict fresh shoot mass, tomato fruit numbers, and yield mass at harvest based on a range of variables derived from the UAV imagery. UAV-based red–green–blue (RGB) imageries collected 1, 2, 4, 6, 7, and 8 weeks before harvest were also used to determine if prediction accuracies varied between control and salt-treated plants. Multispectral UAV-based imagery was also collected 1 and 2 weeks prior to harvest to further explore predictive insights. In order to estimate the end of season biomass and yield, a random forest machine learning approach was implemented using UAV-imagery-derived predictors as input variables. Shape features derived from the UAV, such as plant area, border length, width, and length, were found to have the highest importance in the predictions, followed by vegetation indices and the entropy texture measure. The multispectral UAV imagery collected 2 weeks prior to harvest produced the highest explained variances for fresh shoot mass (87.95%), fruit numbers (63.88%), and yield mass per plant (66.51%). The RGB UAV imagery produced very similar results to those of the multispectral UAV dataset, with the explained variance reducing as a function of increasing time to harvest. The results showed that predicting the yield of salt-stressed plants produced higher accuracies when the models excluded control plants, whereas predicting the yield of control plants was not affected by the inclusion of salt-stressed plants within the models. This research demonstrates that it is possible to predict the average biomass and yield up to 8 weeks prior to harvest within 4.23% of field-based measurements and up to 4 weeks prior to harvest at the individual plant level. Results from this work may be useful in providing guidance for yield forecasting of healthy and salt-stressed tomato plants, which in turn may inform growing practices, logistical planning, and sales operations.https://www.frontiersin.org/article/10.3389/frai.2020.00028/fullUAVyieldbiomasstomato plantssalinityrandom forest |