Estimation of crop plant density at early mixed growth stages using UAV imagery

Abstract Background Unmanned aerial vehicles (UAVs) equipped with lightweight sensors are making a significant impact in field-based crop phenotyping. UAV platforms have been successfully deployed to acquire phenotypic data in a precise and efficient manner that would otherwise be time-consuming and...

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Main Authors: Joshua C. O. Koh, Matthew Hayden, Hans Daetwyler, Surya Kant
Format: Article
Language:English
Published: BMC 2019-06-01
Series:Plant Methods
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13007-019-0449-1
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spelling doaj-527ac65f434542d58412c3e3db9f708b2020-11-25T03:47:03ZengBMCPlant Methods1746-48112019-06-011511910.1186/s13007-019-0449-1Estimation of crop plant density at early mixed growth stages using UAV imageryJoshua C. O. Koh0Matthew Hayden1Hans Daetwyler2Surya Kant3Agriculture Victoria, Grains Innovation ParkAgriculture Victoria, AgriBio, Centre for AgriBioscienceAgriculture Victoria, AgriBio, Centre for AgriBioscienceAgriculture Victoria, Grains Innovation ParkAbstract Background Unmanned aerial vehicles (UAVs) equipped with lightweight sensors are making a significant impact in field-based crop phenotyping. UAV platforms have been successfully deployed to acquire phenotypic data in a precise and efficient manner that would otherwise be time-consuming and costly to acquire when undertaken through manual assessment. One example is the estimation of plant density (or counts) in field experiments. Challenges posed to digital plant counting models are heterogenous germination and mixed growth stages that are present in field experiments with diverse genotypes. Here we describe, using safflower as an example, a method based on template matching for seedling count estimation at early mixed growth stages using UAV imagery. Results An object-based image analysis algorithm based on template matching was developed for safflower seedling detection at early mixed growth stages in field experiments conducted in 2017 and 2018. Seedling detection was successful when tested using a grouped template type with 10 subgroups representing safflower at 2–4 leaves growth stage in 100 selected plots from the 2017 field experiment. The algorithm was validated for 300 plots each from the 2017 and 2018 field experiments, where estimated seedling counts correlated closely with manual counting; R2 = 0.87, MAE = 8.18, RSME = 9.38 for 2017 field experiment and R2 = 0.86, MAE = 9.16, RSME = 10.51 for 2018. Conclusion A method for safflower seedling count at early mixed growth stages using UAV imagery was developed and validated. The model performed well across heterogenous growth stages and has the potential to be used for plant density estimation across various crop species.http://link.springer.com/article/10.1186/s13007-019-0449-1Object-based image analysisPlant phenotypingSafflowerSeedling countUnmanned aerial vehicle
collection DOAJ
language English
format Article
sources DOAJ
author Joshua C. O. Koh
Matthew Hayden
Hans Daetwyler
Surya Kant
spellingShingle Joshua C. O. Koh
Matthew Hayden
Hans Daetwyler
Surya Kant
Estimation of crop plant density at early mixed growth stages using UAV imagery
Plant Methods
Object-based image analysis
Plant phenotyping
Safflower
Seedling count
Unmanned aerial vehicle
author_facet Joshua C. O. Koh
Matthew Hayden
Hans Daetwyler
Surya Kant
author_sort Joshua C. O. Koh
title Estimation of crop plant density at early mixed growth stages using UAV imagery
title_short Estimation of crop plant density at early mixed growth stages using UAV imagery
title_full Estimation of crop plant density at early mixed growth stages using UAV imagery
title_fullStr Estimation of crop plant density at early mixed growth stages using UAV imagery
title_full_unstemmed Estimation of crop plant density at early mixed growth stages using UAV imagery
title_sort estimation of crop plant density at early mixed growth stages using uav imagery
publisher BMC
series Plant Methods
issn 1746-4811
publishDate 2019-06-01
description Abstract Background Unmanned aerial vehicles (UAVs) equipped with lightweight sensors are making a significant impact in field-based crop phenotyping. UAV platforms have been successfully deployed to acquire phenotypic data in a precise and efficient manner that would otherwise be time-consuming and costly to acquire when undertaken through manual assessment. One example is the estimation of plant density (or counts) in field experiments. Challenges posed to digital plant counting models are heterogenous germination and mixed growth stages that are present in field experiments with diverse genotypes. Here we describe, using safflower as an example, a method based on template matching for seedling count estimation at early mixed growth stages using UAV imagery. Results An object-based image analysis algorithm based on template matching was developed for safflower seedling detection at early mixed growth stages in field experiments conducted in 2017 and 2018. Seedling detection was successful when tested using a grouped template type with 10 subgroups representing safflower at 2–4 leaves growth stage in 100 selected plots from the 2017 field experiment. The algorithm was validated for 300 plots each from the 2017 and 2018 field experiments, where estimated seedling counts correlated closely with manual counting; R2 = 0.87, MAE = 8.18, RSME = 9.38 for 2017 field experiment and R2 = 0.86, MAE = 9.16, RSME = 10.51 for 2018. Conclusion A method for safflower seedling count at early mixed growth stages using UAV imagery was developed and validated. The model performed well across heterogenous growth stages and has the potential to be used for plant density estimation across various crop species.
topic Object-based image analysis
Plant phenotyping
Safflower
Seedling count
Unmanned aerial vehicle
url http://link.springer.com/article/10.1186/s13007-019-0449-1
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AT hansdaetwyler estimationofcropplantdensityatearlymixedgrowthstagesusinguavimagery
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