Abstract Hyperspectral remote sensing is highly efficient in retrieving the leaf chlorophyll concentrations and its deficiency, which is manifested in the form of a spectral shift in reflectance. In the… Click to show full abstract
Abstract Hyperspectral remote sensing is highly efficient in retrieving the leaf chlorophyll concentrations and its deficiency, which is manifested in the form of a spectral shift in reflectance. In the present study, the detection of chlorosis in vegetation was assessed through spectral measures and Yellowness Index (YI) utilizing hyperspectral Airborne Visible Infrared Imaging Spectrometer-Next Generation (AVIRIS-NG) data in Sholayar reserve forest, Kerala. Chlorophyll concentration was spatially derived based on regression analysis between the field-based leaf chlorophyll concentration and hyperspectral narrowband indices. Various indices like enhanced vegetation index (EVI), Red-edge normalised difference vegetation index (RNDVI), atmospherically resistant vegetation index (ARVI) and Vogelmann red-edge index (VRI) were found to be highly sensitive towards leaf chlorophyll concentrations and exhibit good correlations (R2 = 0.6374, R2 = 0.5493, R2 = 0.5711 and R2 = 0.5003, respectively) with significant P-value (
               
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