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Detection of rice leaf folder, Cnaphalocrocis medinalis (Guenée) (Lepidoptera: Crambidae) infestation using ground-based hyperspectral radiometry


Affiliations
1 ICAR-National Rice Research Institute, Cuttack 753 006, India; Odisha University of Agriculture and Technology, Bhubaneswar 751 003, India, India
2 ICAR-National Rice Research Institute, Cuttack 753 006, India, India
3 Odisha University of Agriculture and Technology, Bhubaneswar 751 003, India, India
4 Space Application Centre, Indian Space Research Organisation, Ahmedabad 380 015, India, India
 

Hyperspectral remote sensing is a useful technique for detecting spatio-temporal changes in crop morphological and physiological health. In order to identify the pest-sensitive bands for rice leaf folder (RLF), the ground-based hyperspectral data were recorded at varying damage levels. The first- and second-order derivatives were correlated with correlation coefficient r and per cent leaf damage. The common region identified were recognized as sensitive regions (508–529, 671–680, 721–759, 779–786 and 804–820 nm). The absorption dips were also found using Sensitivity and Continuum Removal Analysis. Combining all, a total of nine spectral bands (518, 549, 661, 674, 678, 731, 789, 816 and 898 nm) were identified as pest-sensitive bands for RLF. The feature-selection method was employed using RELIEFF algorithm to find out the band combinations and bands 518, 661 and 731 nm yielded maximum accuracy of 81.67%

Keywords

Hyperspectral sensing, rice leaf folder, sen-sitive spectral bands, spectroradiometer.
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  • Detection of rice leaf folder, Cnaphalocrocis medinalis (Guenée) (Lepidoptera: Crambidae) infestation using ground-based hyperspectral radiometry

Abstract Views: 126  |  PDF Views: 73

Authors

Bhubanananda Adhikari
ICAR-National Rice Research Institute, Cuttack 753 006, India; Odisha University of Agriculture and Technology, Bhubaneswar 751 003, India, India
Radhakrushna Senapati
ICAR-National Rice Research Institute, Cuttack 753 006, India, India
Minati Mohapatra
Odisha University of Agriculture and Technology, Bhubaneswar 751 003, India, India
Laxminarayan Mohapatra
Odisha University of Agriculture and Technology, Bhubaneswar 751 003, India, India
Rahul Nigam
Space Application Centre, Indian Space Research Organisation, Ahmedabad 380 015, India, India
Shyamaranjan Das Mohapatra
ICAR-National Rice Research Institute, Cuttack 753 006, India, India

Abstract


Hyperspectral remote sensing is a useful technique for detecting spatio-temporal changes in crop morphological and physiological health. In order to identify the pest-sensitive bands for rice leaf folder (RLF), the ground-based hyperspectral data were recorded at varying damage levels. The first- and second-order derivatives were correlated with correlation coefficient r and per cent leaf damage. The common region identified were recognized as sensitive regions (508–529, 671–680, 721–759, 779–786 and 804–820 nm). The absorption dips were also found using Sensitivity and Continuum Removal Analysis. Combining all, a total of nine spectral bands (518, 549, 661, 674, 678, 731, 789, 816 and 898 nm) were identified as pest-sensitive bands for RLF. The feature-selection method was employed using RELIEFF algorithm to find out the band combinations and bands 518, 661 and 731 nm yielded maximum accuracy of 81.67%

Keywords


Hyperspectral sensing, rice leaf folder, sen-sitive spectral bands, spectroradiometer.

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DOI: https://doi.org/10.18520/cs%2Fv124%2Fi8%2F964-975