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Sequential application of hyperspectral indices for delineation of stripe rust infection and nitrogen deficiency in wheat
Authors
A Gitelson
A Gitelson
+44 more
A Young
AA Gitelson
B Jensen
C Bravo
CH Bock
CJ Tucker
CJ Tucker
D Haboudane
D Moshou
D. Backhouse
D. W. Lamb
DH Zhao
DL Danial
GA Blackburn
GJ Ash
GM Trotter
H Nicolas
I Filella
J Gao
J Penuelas
J Penuelas
J Penuelas
JA Gamon
JB Campbell
K Diker
K Snowball
L Tarpley
M Zhao
MJ Gooding
MN Merzlyak
N Aparicio
OP Caviglia
PL Hatfield
PM Hansen
R Devadas
R Devadas
R. Devadas
RJ Aspinall
RJ Bryson
RK Gupta
S Muurinen
S. Simpfendorfer
W Huang
Z Qin
Publication date
22 September 2015
Publisher
'Springer Science and Business Media LLC'
Doi
Abstract
© 2015, Springer Science+Business Media New York. Nitrogen (N) fertilization is crucial for the growth and development of wheat crops, and yet increased use of N can also result in increased stripe rust severity. Stripe rust infection and N deficiency both cause changes in foliar physiological activity and reduction in plant pigments that result in chlorosis. Furthermore, stripe rust produce pustules on the leaf surface which similar to chlorotic regions have a yellow color. Quantifying the severity of each factor is critical for adopting appropriate management practices. Eleven widely-used vegetation indices, based on mathematic combinations of narrow-band optical reflectance measurements in the visible/near infrared wavelength range were evaluated for their ability to discriminate and quantify stripe rust severity and N deficiency in a rust-susceptible wheat variety (H45) under varying conditions of nitrogen status. The physiological reflectance index (PhRI) and leaf and canopy chlorophyll index (LCCI) provided the strongest correlation with levels of rust infection and N-deficiency, respectively. When PhRI and LCCI were used in a sequence, both N deficiency and rust infection levels were correctly classified in 82.5 and 55 % of the plots at Zadoks growth stage 47 and 75, respectively. In misclassified plots, an overestimation of N deficiency was accompanied by an underestimation of the rust infection level or vice versa. In 18 % of the plots, there was a tendency to underestimate the severity of stripe rust infection even though the N-deficiency level was correctly predicted. The contrasting responses of the PhRI and LCCI to stripe rust infection and N deficiency, respectively, and the relative insensitivity of these indices to the other parameter makes their use in combination suitable for quantifying levels of stripe rust infection and N deficiency in wheat crops under field conditions
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Research UNE
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oai:rune.une.edu.au:1959.11/17...
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OPUS - University of Technology Sydney
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