Indian Journal of Agricultural Research
SCOPUSWeb of Science
  • Year: 2026
  • Volume: 59
  • Issue: 7

Spatial Chlorophyll Estimation from Rice Field using Dronederived Spectral Indices

  • Author:
  • R. Tamilmounika1, D. Muthumanickam1*, S. Pazhanivelan2, K.P. Ragunath2, R. Kumaraperumal1, A.P. Sivamurugan2, R. Raja3
  • Total Page Count: 7
  • Page Number: 1068 to 1074

1Department of Remote Sensing and GIS, Tamil Nadu Agricultural University, Coimbatore-641 003, Tamil Nadu, India.

2Centre for Water and Geospatial Studies, Tamil Nadu Agricultural University, Coimbatore-641 003, Tamil Nadu, India.

3ICAR-Central Institute for Cotton Research, Regional Research Station, Coimbatore-641 003, Tamil Nadu, India.

Corresponding Author: D. Muthumanickam, Department of Remote Sensing and GIS, Tamil Nadu Agricultural University, Coimbatore-641 003, Tamil Nadu, India. Email: muthutnausac@gmail.com

Abstract

Precision farming has significantly advanced the agricultural sector by enabling real-time canopy monitoring and crop condition evaluation, thus facilitating precise management strategies to enhance yields. This study investigated the use of drone- derived vegetation indices (VIs) for assessing spatial variability in crop conditions, offering a more cost effective and practical alternative to satellite data.

The field experiment was conducted during the Kuruvai season (July - November 2023) on a short-duration rice variety CO 55. Several vegetation indices viz., BGI, CI, EVI, GNDVI, MCARI, MSAVI, NDRE and NDVI were calculated to predict chlorophyll content and correlated with the measured SPAD values.

The results showed that indices like MCARI, GNDVI and NDVI had strong positive correlations with SPAD values, with MCARI exhibiting the highest correlation (R= 0.914) and an R2 value of 0.836. The findings underscore the effectiveness of using drone- derived indices for precise chlorophyll estimation, which is crucial for variable rate fertilizer application in precision agriculture.

Keywords

Chlorophyll, Precision farming, Rice, Vegetation indices