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Estimation of LAI and above-ground biomass in deciduous forests: Western Ghats of Karnataka, India
Authors:Rangaswamy Madugundu  Vyjayanthi Nizalapur  Chandra Shekhar Jha  
Institution:aForestry and Ecology Division, LRG, RS&GIS AA, National Remote Sensing Agency, Hyderabad, India
Abstract:This study demonstrates the potentials of IRS P6 LISS-IV high-resolution multispectral sensor (IGFOV not, vert, similar 6 m)-based estimation of biomass in the deciduous forests in the Western Ghats of Karnataka, India. Regression equations describing the relationship between IRS P6 LISS-IV data-based vegetation index (NDVI) and field measured leaf area index (ELAI) and estimated above-ground biomass (EAGB) were derived. Remote sensing (RS) data-based leaf area index (PLAI) image is generated using regression equation based on NDVI and ELAI (r2 = 0.68, p ≤ 0.05). RS-based above-ground biomass (PAGB) image was generated based on regression equation developed between PLAI and EAGB (r2 = 0.63, p ≤ 0.05). The mean value of estimated above-ground biomass and RS-based above-ground biomass in the study area are 280(±72.5) and 297.6(±55.2) Mg ha−1, respectively. The regression models generated in the study between NDVI and LAI; LAI and biomass can also help in generating spatial biomass map using RS data alone. LISS-IV-based estimation of biophysical parameters can also be used for the validation of various coarse resolution satellite products derived from the ground-based measurements alone.
Keywords:Deciduous forest  Leaf area index  IRS LISS-IV  Above-ground biomass
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