An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding

Perennial ryegrass (<i>Lolium perenne</i> L.) is one of the most important forage grass species in temperate regions of the world, but it is prone to having poor persistence due to the incidence of abiotic and biotic stresses. This creates a challenge for livestock producers to use their...

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Main Authors: Chinthaka Jayasinghe, Pieter Badenhorst, Junping Wang, Joe Jacobs, German Spangenberg, Kevin Smith
Format: Article
Language:English
Published: MDPI AG 2019-08-01
Series:Agronomy
Subjects:
Online Access:https://www.mdpi.com/2073-4395/9/9/501
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spelling doaj-710a4eebf5734d758279c2437288647b2021-04-02T14:53:12ZengMDPI AGAgronomy2073-43952019-08-019950110.3390/agronomy9090501agronomy9090501An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture BreedingChinthaka Jayasinghe0Pieter Badenhorst1Junping Wang2Joe Jacobs3German Spangenberg4Kevin Smith5Agriculture Victoria Research, Hamilton, Victoria 3300, AustraliaAgriculture Victoria Research, Hamilton, Victoria 3300, AustraliaAgriculture Victoria Research, Hamilton, Victoria 3300, AustraliaAgriculture Victoria Research, Ellinbank, Victoria 3821, AustraliaAgriculture Victoria Research, AgriBio, Centre for AgriBioscience, Bundoora, Victoria 3083, AustraliaAgriculture Victoria Research, Hamilton, Victoria 3300, AustraliaPerennial ryegrass (<i>Lolium perenne</i> L.) is one of the most important forage grass species in temperate regions of the world, but it is prone to having poor persistence due to the incidence of abiotic and biotic stresses. This creates a challenge for livestock producers to use their agricultural lands more productively and intensively within sustainable limits. Breeding perennial ryegrass cultivars that are both productive and persistent is a target of forage breeding programs and will allow farmers to select appropriate cultivars to deliver the highest profitability over the lifetime of a sward. Conventional methods for the estimation of pasture persistence depend on manual ground cover estimation or counting the number of surviving plants or tillers in a given area. Those methods are subjective, time-consuming and/or labour intensive. This study aimed to develop a phenomic method to evaluate the persistence of perennial ryegrass cultivars in field plots. Data acquisition was conducted three years after sowing to estimate the persistence of perennial ryegrass using high-resolution aerial-based multispectral and ground-based red, green and blue(RGB) sensors, and subsequent image analysis. There was a strong positive relationship between manual ground cover and sensor-based ground cover estimates (<i>p</i> &lt; 0.001). Although the manual plant count was positively correlated with sensor-based ground cover (<i>p</i> &lt; 0.001) intra-plot plant size variation influenced the strength of this relationship. We conclude that object-based ground cover estimation is most suitable for use in large-scale breeding programs due to its higher accuracy, efficiency and repeatability. With further development, this technique could be used to assess temporal changes of perennial ryegrass persistence in experimental studies and on a farm scale.https://www.mdpi.com/2073-4395/9/9/501perennial ryegrass persistenceground coverobject-based image analysis
collection DOAJ
language English
format Article
sources DOAJ
author Chinthaka Jayasinghe
Pieter Badenhorst
Junping Wang
Joe Jacobs
German Spangenberg
Kevin Smith
spellingShingle Chinthaka Jayasinghe
Pieter Badenhorst
Junping Wang
Joe Jacobs
German Spangenberg
Kevin Smith
An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
Agronomy
perennial ryegrass persistence
ground cover
object-based image analysis
author_facet Chinthaka Jayasinghe
Pieter Badenhorst
Junping Wang
Joe Jacobs
German Spangenberg
Kevin Smith
author_sort Chinthaka Jayasinghe
title An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
title_short An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
title_full An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
title_fullStr An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
title_full_unstemmed An Object-Based Image Analysis Approach to Assess Persistence of Perennial Ryegrass (<i>Lolium perenne</i> L.) in Pasture Breeding
title_sort object-based image analysis approach to assess persistence of perennial ryegrass (<i>lolium perenne</i> l.) in pasture breeding
publisher MDPI AG
series Agronomy
issn 2073-4395
publishDate 2019-08-01
description Perennial ryegrass (<i>Lolium perenne</i> L.) is one of the most important forage grass species in temperate regions of the world, but it is prone to having poor persistence due to the incidence of abiotic and biotic stresses. This creates a challenge for livestock producers to use their agricultural lands more productively and intensively within sustainable limits. Breeding perennial ryegrass cultivars that are both productive and persistent is a target of forage breeding programs and will allow farmers to select appropriate cultivars to deliver the highest profitability over the lifetime of a sward. Conventional methods for the estimation of pasture persistence depend on manual ground cover estimation or counting the number of surviving plants or tillers in a given area. Those methods are subjective, time-consuming and/or labour intensive. This study aimed to develop a phenomic method to evaluate the persistence of perennial ryegrass cultivars in field plots. Data acquisition was conducted three years after sowing to estimate the persistence of perennial ryegrass using high-resolution aerial-based multispectral and ground-based red, green and blue(RGB) sensors, and subsequent image analysis. There was a strong positive relationship between manual ground cover and sensor-based ground cover estimates (<i>p</i> &lt; 0.001). Although the manual plant count was positively correlated with sensor-based ground cover (<i>p</i> &lt; 0.001) intra-plot plant size variation influenced the strength of this relationship. We conclude that object-based ground cover estimation is most suitable for use in large-scale breeding programs due to its higher accuracy, efficiency and repeatability. With further development, this technique could be used to assess temporal changes of perennial ryegrass persistence in experimental studies and on a farm scale.
topic perennial ryegrass persistence
ground cover
object-based image analysis
url https://www.mdpi.com/2073-4395/9/9/501
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