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Improved remote sensing detection of wheat powdery mildew using dual-green vegetation indices
Authors:Wei Feng  Wenying Shen  Li He  Jianzhao Duan  Binbin Guo  Yingxue Li  Chenyang Wang  Tiancai Guo
Affiliation:1.National Engineering Research Centre for Wheat, State Key Laboratory of Wheat and Maize Crop Science,Henan Agricultural University,Zhengzhou,People’s Republic of China;2.Collaborative Innovation Center of Henan Grain Crops,Henan Agricultural University,Zhengzhou,People’s Republic of China;3.College of Applied Meteorology,Nanjing University of Information Science & Technology,Nanjing,People’s Republic of China
Abstract:In this study, we investigated the possibility of using ground-based remote sensing technology to estimate powdery mildew disease severity in winter wheat. Using artificially inoculated fields, potted plants, and disease nursery tests, we measured the powdery mildew canopy spectra of varieties of wheat at different levels of incidence and growth stages to investigate the disease severity. The results showed that the powdery mildew sensitive bands were between 580 and 710 nm. The best two-band vegetation index that correlated with wheat powdery mildew between 400 and 1000 nm wavelength were the normalized spectrum 570–590 and 536–566 nm bands for the ratio index, and 568–592 and 528–570 nm for the normalized difference index. The coefficients of determination (R 2) for both were almost the same. The optimum dual-green vegetation index was constructed based on a calculation of the ratio and normalized difference between the normalized spectrum within the two green bands. The coefficients of determination (R 2) of DGSR (584, 550) (dual-green simple ratio) and DGND (584, 550) (dual-green normalized difference) were both 0.845. The inverse models of disease severity performed well in the test process at the canopy scale, and indicated that, compared with the traditional vegetation indices of Lwidth, mND705, ND (SDr, SDb), SIPI, and GNDVI, the novel dual-green indices greatly improved the remote sensing detection of wheat powdery mildew disease. Following these results, combined disease severity and canopy spectra were shown to be of enormous value when applied to the accurate monitoring, prevention, and control of crop diseases.
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