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Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images

Image analysis methods for measuring crop phenotypes may replace traditional measurements if they more efficiently and reliably capture similar or superior information. This study used a recreational-grade unmanned aerial vehicle carrying a spectrally-modified consumer-grade camera to collect images...

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Autores principales: Wu, Guosheng, Miller, Nathan D., de Leon, Natalia, Kaeppler, Shawn M., Spalding, Edgar P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6797588/
https://www.ncbi.nlm.nih.gov/pubmed/31681364
http://dx.doi.org/10.3389/fpls.2019.01251
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author Wu, Guosheng
Miller, Nathan D.
de Leon, Natalia
Kaeppler, Shawn M.
Spalding, Edgar P.
author_facet Wu, Guosheng
Miller, Nathan D.
de Leon, Natalia
Kaeppler, Shawn M.
Spalding, Edgar P.
author_sort Wu, Guosheng
collection PubMed
description Image analysis methods for measuring crop phenotypes may replace traditional measurements if they more efficiently and reliably capture similar or superior information. This study used a recreational-grade unmanned aerial vehicle carrying a spectrally-modified consumer-grade camera to collect images in which each pixel value is a vegetation index based on the normalized difference between the blue and near infrared wavelength bands (BNDVI). The subjects of the study were Zea mays hybrids with good yield potential grown in 4-row plots. Flights were conducted at least once per week during three successive growing seasons in south-central Wisconsin. Average BNDVI for each plot (genotype) rose steadily through June, peaked in July, and then declined as plants matured. BNDVI histograms changed shape over the season as the canopy concealed soil, became more uniformly green, then senesced. Principal Components Analysis (PCA) captured the change in histogram shape. PC1 represented canopy closure. PC2 represented the mean of the BNDVI distribution. PC3 represented the spread of the distribution. Correlation analysis showed that flowering time correlated with PC2 and PC3 best (r ≈ 0.5) a few days before the event (day in which 50% of the plants exhibited tassels). Three ears were picked from each plot to quantify kernel dimensions by image analysis before each plot was mechanically harvested to determine grain weight per plot. Correlations between this measurement of yield and PC2 were low in June but exceeded 0.4 within 10 days after flowering. Kernel length correlated similarly with PC2. The correlation between PC2 and kernel thickness displayed a similar but inverted time course. These results indicate that greater mid-season BNDVI values correlate positively with yield comprised of tall, thin kernels. Partial least squares regression performed on the BNDVI time courses predicted flowering time (r = 0.54–0.79) and yield (r = 0.4–0.69). This three-year experiment demonstrated that readily available hardware and software can create a phenotyping platform capable of predicting maize flowering time, yield, and kernel dimensions to a useful degree.
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spelling pubmed-67975882019-11-01 Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images Wu, Guosheng Miller, Nathan D. de Leon, Natalia Kaeppler, Shawn M. Spalding, Edgar P. Front Plant Sci Plant Science Image analysis methods for measuring crop phenotypes may replace traditional measurements if they more efficiently and reliably capture similar or superior information. This study used a recreational-grade unmanned aerial vehicle carrying a spectrally-modified consumer-grade camera to collect images in which each pixel value is a vegetation index based on the normalized difference between the blue and near infrared wavelength bands (BNDVI). The subjects of the study were Zea mays hybrids with good yield potential grown in 4-row plots. Flights were conducted at least once per week during three successive growing seasons in south-central Wisconsin. Average BNDVI for each plot (genotype) rose steadily through June, peaked in July, and then declined as plants matured. BNDVI histograms changed shape over the season as the canopy concealed soil, became more uniformly green, then senesced. Principal Components Analysis (PCA) captured the change in histogram shape. PC1 represented canopy closure. PC2 represented the mean of the BNDVI distribution. PC3 represented the spread of the distribution. Correlation analysis showed that flowering time correlated with PC2 and PC3 best (r ≈ 0.5) a few days before the event (day in which 50% of the plants exhibited tassels). Three ears were picked from each plot to quantify kernel dimensions by image analysis before each plot was mechanically harvested to determine grain weight per plot. Correlations between this measurement of yield and PC2 were low in June but exceeded 0.4 within 10 days after flowering. Kernel length correlated similarly with PC2. The correlation between PC2 and kernel thickness displayed a similar but inverted time course. These results indicate that greater mid-season BNDVI values correlate positively with yield comprised of tall, thin kernels. Partial least squares regression performed on the BNDVI time courses predicted flowering time (r = 0.54–0.79) and yield (r = 0.4–0.69). This three-year experiment demonstrated that readily available hardware and software can create a phenotyping platform capable of predicting maize flowering time, yield, and kernel dimensions to a useful degree. Frontiers Media S.A. 2019-10-11 /pmc/articles/PMC6797588/ /pubmed/31681364 http://dx.doi.org/10.3389/fpls.2019.01251 Text en Copyright © 2019 Wu, Miller, de Leon, Kaeppler and Spalding http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
Wu, Guosheng
Miller, Nathan D.
de Leon, Natalia
Kaeppler, Shawn M.
Spalding, Edgar P.
Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title_full Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title_fullStr Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title_full_unstemmed Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title_short Predicting Zea mays Flowering Time, Yield, and Kernel Dimensions by Analyzing Aerial Images
title_sort predicting zea mays flowering time, yield, and kernel dimensions by analyzing aerial images
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6797588/
https://www.ncbi.nlm.nih.gov/pubmed/31681364
http://dx.doi.org/10.3389/fpls.2019.01251
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