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Empirical Modelling for Retrieval of Foliar Traits in Cotton Crop using Spatial Data
The present study conducted in cotton fields of Vadodara district, Gujarat, India during kharif season of 2009-10, aimed at assessing foliar traits, in particular crop leaf area index (LAI) and chlorophyll content (CC) from space-borne optical LANDSAT 5 TM and IRS LISS-IV satellite data. Field measurements of these foliar traits coinciding with the dates of the satellite data for cotton were used for validation of RSbased VI-LAI and VI-CC empirical models developed in the present study. These models developed for LAI estimation in cotton crop showed good correlation with R2 varying from 0.592 to 0.805, and CC between 0.585 and 0.746 with P at 0.01 level in both cases. It has been observed that the potential of NDVI-LAI and NDVI-CC empirical models was better compared to RVI-LAI and RVI-CC models. The VI-LAI and VI-CC models derived from LISS-IV data were better estimators of LAI compared to LANDSAT. A high R2 value between ground-measured foliar traits and those predicted using empirical models complemented the validation.
Keywords
Cotton Crop, Empirical Models, Foliar Trait, Spatial Data.
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