Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images

[Background], The number of ears per unit ground area (ear density) is one of the main agronomic yield components in determining grain yield in wheat. A fast evaluation of this attribute may contribute to monitoring the efficiency of crop management practices, to an early prediction of grain yield or as a phenotyping trait in breeding programs. Currently the number of ears is counted manually, which is time consuming. Moreover, there is no single standardized protocol for counting the ears. An automatic ear-counting algorithm is proposed to estimate ear density under field conditions based on zenithal color digital images taken from above the crop in natural light conditions. Field trials were carried out at two sites in Spain during the 2014/2015 crop season on a set of 24 varieties of durum wheat with two growing conditions per site. The algorithm for counting uses three steps: (1) a Laplacian frequency filter chosen to remove low and high frequency elements appearing in an image, (2) a Median filter to reduce high noise still present around the ears and (3) segmentation using Find Maxima to segment local peaks and determine the ear count within the image. [Results], The results demonstrate high success rate (higher than 90%) between the algorithm counts and the manual (image-based) ear counts, and precision, with a low standard deviation (around 5%). The relationships between algorithm ear counts and grain yield was also significant and greater than the correlation with manual (field-based) ear counts. In this approach, results demonstrate that automatic ear counting performed on data captured around anthesis correlated better with grain yield than with images captured at later stages when the low performance of ear counting at late grain filling stages was associated with the loss of contrast between canopy and ears. [Conclusions], Developing robust, low-cost and efficient field methods to assess wheat ear density, as a major agronomic component of yield, is highly relevant for phenotyping efforts towards increases in grain yield. Although the phenological stage of measurements is important, the robust image analysis algorithm presented here appears to be amenable from aerial or other automated platforms.

Saved in:
Bibliographic Details
Main Authors: Fernandez-Gallego, J. A., Kefauver, S. C., Gutiérrez, N. A., Nieto-Taladriz García, María Teresa, Araus, J. L.
Format: artículo biblioteca
Language:English
Published: BioMed Central 2018
Subjects:Digital image processin, Ear counting, Field phenotyping, Laplacian frequency flter, Median flter, Find maxima, Wheat,
Online Access:http://hdl.handle.net/20.500.12792/961
http://hdl.handle.net/10261/290636
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-inia-es-10261-290636
record_format koha
spelling dig-inia-es-10261-2906362023-02-17T12:27:51Z Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images Fernandez-Gallego, J. A. Kefauver, S. C. Gutiérrez, N. A. Nieto-Taladriz García, María Teresa Araus, J. L. Digital image processin Ear counting Field phenotyping Laplacian frequency flter Median flter Find maxima Wheat [Background], The number of ears per unit ground area (ear density) is one of the main agronomic yield components in determining grain yield in wheat. A fast evaluation of this attribute may contribute to monitoring the efficiency of crop management practices, to an early prediction of grain yield or as a phenotyping trait in breeding programs. Currently the number of ears is counted manually, which is time consuming. Moreover, there is no single standardized protocol for counting the ears. An automatic ear-counting algorithm is proposed to estimate ear density under field conditions based on zenithal color digital images taken from above the crop in natural light conditions. Field trials were carried out at two sites in Spain during the 2014/2015 crop season on a set of 24 varieties of durum wheat with two growing conditions per site. The algorithm for counting uses three steps: (1) a Laplacian frequency filter chosen to remove low and high frequency elements appearing in an image, (2) a Median filter to reduce high noise still present around the ears and (3) segmentation using Find Maxima to segment local peaks and determine the ear count within the image. [Results], The results demonstrate high success rate (higher than 90%) between the algorithm counts and the manual (image-based) ear counts, and precision, with a low standard deviation (around 5%). The relationships between algorithm ear counts and grain yield was also significant and greater than the correlation with manual (field-based) ear counts. In this approach, results demonstrate that automatic ear counting performed on data captured around anthesis correlated better with grain yield than with images captured at later stages when the low performance of ear counting at late grain filling stages was associated with the loss of contrast between canopy and ears. [Conclusions], Developing robust, low-cost and efficient field methods to assess wheat ear density, as a major agronomic component of yield, is highly relevant for phenotyping efforts towards increases in grain yield. Although the phenological stage of measurements is important, the robust image analysis algorithm presented here appears to be amenable from aerial or other automated platforms. 2023-02-17T12:27:50Z 2023-02-17T12:27:50Z 2018 artículo Plant Methods 14: e22 (2018) http://hdl.handle.net/20.500.12792/961 http://hdl.handle.net/10261/290636 10.1186/s13007-018-0289-4 1746-4811 en open BioMed Central
institution INIA ES
collection DSpace
country España
countrycode ES
component Bibliográfico
access En linea
databasecode dig-inia-es
tag biblioteca
region Europa del Sur
libraryname Biblioteca del INIA España
language English
topic Digital image processin
Ear counting
Field phenotyping
Laplacian frequency flter
Median flter
Find maxima
Wheat
Digital image processin
Ear counting
Field phenotyping
Laplacian frequency flter
Median flter
Find maxima
Wheat
spellingShingle Digital image processin
Ear counting
Field phenotyping
Laplacian frequency flter
Median flter
Find maxima
Wheat
Digital image processin
Ear counting
Field phenotyping
Laplacian frequency flter
Median flter
Find maxima
Wheat
Fernandez-Gallego, J. A.
Kefauver, S. C.
Gutiérrez, N. A.
Nieto-Taladriz García, María Teresa
Araus, J. L.
Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
description [Background], The number of ears per unit ground area (ear density) is one of the main agronomic yield components in determining grain yield in wheat. A fast evaluation of this attribute may contribute to monitoring the efficiency of crop management practices, to an early prediction of grain yield or as a phenotyping trait in breeding programs. Currently the number of ears is counted manually, which is time consuming. Moreover, there is no single standardized protocol for counting the ears. An automatic ear-counting algorithm is proposed to estimate ear density under field conditions based on zenithal color digital images taken from above the crop in natural light conditions. Field trials were carried out at two sites in Spain during the 2014/2015 crop season on a set of 24 varieties of durum wheat with two growing conditions per site. The algorithm for counting uses three steps: (1) a Laplacian frequency filter chosen to remove low and high frequency elements appearing in an image, (2) a Median filter to reduce high noise still present around the ears and (3) segmentation using Find Maxima to segment local peaks and determine the ear count within the image. [Results], The results demonstrate high success rate (higher than 90%) between the algorithm counts and the manual (image-based) ear counts, and precision, with a low standard deviation (around 5%). The relationships between algorithm ear counts and grain yield was also significant and greater than the correlation with manual (field-based) ear counts. In this approach, results demonstrate that automatic ear counting performed on data captured around anthesis correlated better with grain yield than with images captured at later stages when the low performance of ear counting at late grain filling stages was associated with the loss of contrast between canopy and ears. [Conclusions], Developing robust, low-cost and efficient field methods to assess wheat ear density, as a major agronomic component of yield, is highly relevant for phenotyping efforts towards increases in grain yield. Although the phenological stage of measurements is important, the robust image analysis algorithm presented here appears to be amenable from aerial or other automated platforms.
format artículo
topic_facet Digital image processin
Ear counting
Field phenotyping
Laplacian frequency flter
Median flter
Find maxima
Wheat
author Fernandez-Gallego, J. A.
Kefauver, S. C.
Gutiérrez, N. A.
Nieto-Taladriz García, María Teresa
Araus, J. L.
author_facet Fernandez-Gallego, J. A.
Kefauver, S. C.
Gutiérrez, N. A.
Nieto-Taladriz García, María Teresa
Araus, J. L.
author_sort Fernandez-Gallego, J. A.
title Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
title_short Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
title_full Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
title_fullStr Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
title_full_unstemmed Wheat ear counting in-field conditions High throughput and low-cost approach using RGB images
title_sort wheat ear counting in-field conditions high throughput and low-cost approach using rgb images
publisher BioMed Central
publishDate 2018
url http://hdl.handle.net/20.500.12792/961
http://hdl.handle.net/10261/290636
work_keys_str_mv AT fernandezgallegoja wheatearcountinginfieldconditionshighthroughputandlowcostapproachusingrgbimages
AT kefauversc wheatearcountinginfieldconditionshighthroughputandlowcostapproachusingrgbimages
AT gutierrezna wheatearcountinginfieldconditionshighthroughputandlowcostapproachusingrgbimages
AT nietotaladrizgarciamariateresa wheatearcountinginfieldconditionshighthroughputandlowcostapproachusingrgbimages
AT arausjl wheatearcountinginfieldconditionshighthroughputandlowcostapproachusingrgbimages
_version_ 1767603113663922176