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Detection of Alternaria blight disease severity in mustard crops using ground-based hyperspectral remote sensing


Affiliations
1 ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India
2 Space Applications Centre, Indian Space Research Organisation, Ahmedabad 380 015, India

Alternaria blight is a destructive disease of mustard crops that causes significant economic loss and usually warrants extensive pesticide application. Characterization and estimation of pest severity for better management is the need of the hour to increase the scope of advisories to the farmers. In this study, statistical approaches like multiple stepwise linear regression, principal component regression and partial least square regression have been employed to detect the disease severity of Alternaria blight in mustard leaves using hyperspectral reflectance data. The predicted values of diseased leaves in all the regression models were significantly reduced vis-à-vis healthy mustard leaves. The results of this study indicate that it is possible to detect the disease severity of Alternaria blight in mustard crops using hyperspectral reflectance data

Keywords

Alternaria blight, disease severity, mustard, hyperspectral, remote sensing, surface reflectance.
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Abstract Views: 153




  • Detection of Alternaria blight disease severity in mustard crops using ground-based hyperspectral remote sensing

Abstract Views: 153  | 

Authors

Karunesh K. Shukla
ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India
Rahul Nigam
Space Applications Centre, Indian Space Research Organisation, Ahmedabad 380 015, India
Ajanta Birah
ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India
A. K. Kanojia
ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India
Mukesh Km Khokhar
ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India
Bimal K. Bhattacharya
Space Applications Centre, Indian Space Research Organisation, Ahmedabad 380 015, India
Subhash Chander
ICAR-National Research Centre for Integrated Pest Management, New Delhi 110 068, India

Abstract


Alternaria blight is a destructive disease of mustard crops that causes significant economic loss and usually warrants extensive pesticide application. Characterization and estimation of pest severity for better management is the need of the hour to increase the scope of advisories to the farmers. In this study, statistical approaches like multiple stepwise linear regression, principal component regression and partial least square regression have been employed to detect the disease severity of Alternaria blight in mustard leaves using hyperspectral reflectance data. The predicted values of diseased leaves in all the regression models were significantly reduced vis-à-vis healthy mustard leaves. The results of this study indicate that it is possible to detect the disease severity of Alternaria blight in mustard crops using hyperspectral reflectance data

Keywords


Alternaria blight, disease severity, mustard, hyperspectral, remote sensing, surface reflectance.



DOI: https://doi.org/10.18520/cs%2Fv125%2Fi10%2F1099-1108