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Assessment of soybean injury from glyphosate using airborne multispectral remote sensing
Author(s) -
Huang Yanbo,
Reddy Krish,
Thomson Steven J,
Yao Haibo
Publication year - 2015
Publication title -
pest management science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.296
H-Index - 125
eISSN - 1526-4998
pISSN - 1526-498X
DOI - 10.1002/ps.3839
Subject(s) - glyphosate , normalized difference vegetation index , multispectral image , vegetation (pathology) , pesticide , vegetation index , shoot , yield (engineering) , agronomy , chlorophyll , crop , horticulture , biology , environmental science , leaf area index , remote sensing , geography , medicine , materials science , pathology , metallurgy
Abstract BACKGROUND Glyphosate drift onto off‐target sensitive crops can reduce growth and yield and is of great concern to growers and pesticide applicators. Detection of herbicide injury using biological responses is tedious, so more convenient and rapid detection methods are needed. The objective of this research was to determine the effects of glyphosate on biological responses of non‐glyphosate‐resistant (non‐ GR ) soybean and to correlate vegetation indices ( VIs ) derived from aerial multispectral imagery. RESULTS Plant height, shoot dry weight and chlorophyll ( CHL ) content decreased gradually with increasing glyphosate rate, regardless of weeks after application ( WAA ). Accordingly, soybean yield decreased by 25% with increased rate from 0 to 0.866 kg AI ha −1 . Similarly to biological responses, the VIs derived from aerial imagery – normalized difference vegetation index, soil adjusted vegetation index, ratio vegetation index and green NDVI – also decreased gradually with increasing glyphosate rate, regardless of WAA . CONCLUSION The VIs were highly correlated with plant height and yield but poorly correlated with CHL , regardless of WAA . This indicated that indices could be used to determine soybean injury from glyphosate, as indicated by the difference in plant height, and to predict the yield reduction due to crop injury from glyphosate. Published2014.Thisarticle is a U.S.Government work and is in the public domainin the USA.