Hyperspectral Vegetation Indices for Arecanut Crop Monitoring
Date
2017
Authors
B. E, Bhojaraja
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Arecanut (Areca catechu L.) is one of the major profitable plantation crop grown in few
regions of the World. Karnataka state in India produces almost half of the world’s total
production, in that contribution from Shivamogga district and Coastal Karnataka is
significant. The production per unit area in Karnataka is considerably less. The major reasons
may be improper irrigation practices, poor soil maintenance, lack of technical knowledge on
irrigation water quality, quantity, fertilizers used and frequent occurrence of diseases, small
size and spatially scattered farms. These reasons were very typical in Chennagiri region of
Karnataka. Farmers’ practice adding tank silt lifted from nearby tanks to their farms followed
by drip irrigation in the form of flooding. In this region a typical disorder called crown choke
harmed an adult plant’s life. The objective of this research is: to explore the potential of
advanced tools for Arecanut crop monitoring and to demonstrate it on portion of Chennagiri
region of Karnataka.
Advanced technological tools used include GPS, Hyperspectral remote sensing data and GIS.
Hyperspectral remote sensing is one of the fastest growing techniques in the field of remote
sensing due to its vast applications with improved accuracy over conventional method.
Spectral library was built separately for different age group and stressed crops using
spectroradiometer. Care was taken to match field data with the Hyperion data acquisition
time. Hyperion hyperspectral data was classified into stressed versus healthy and different age
group crops using developed spectral library. Stressed versus healthy crop classification
revealed 10% crops were under stress in patches. To find a scientific reason for crown choke
disease affected crops inflated in study area, grid wise soil and water samples were collected,
and subjected to standard physico-chemical analysis.
Potential evapotranspiration (ETo) was computed using Normalized Difference Vegetation
Index (NDVI) based crop coefficient (Kc) method due to non-availability of weather
parameters. ETo, Integrated with Hargreaves Samani method was adopted to compute the crop
water requirement of different age crops.
Narrow bands in hyperspectral data facilitate computation of several spectral indices and can
facilitate improved classification accuracy. Indices developed being Disease Index (DI) to
identify disease severity in Arecanut crop, Age Index (AI) to segregate the Arecanut crops
into different age groups and Arecanut Crop Water Requirement Index (ACWRI) was built to
compute age based crop water requirement.ii
Important wavelengths were identified among the hundreds of bands to compute the crop
water requirement using statistical techniques. Stepwise Multi Linear Regression (SMLR),
Partial Least Square Regression (PLSR), and Variable Importance for Projection (VIP) were
the techniques of choice. These techniques also facilitated construction of simple models to
predict the Arecanut crop water requirement.
On the basis of diseased v/s healthy crop classification, it was inferred that more than 10% of
plantation under study was affected by crown choke disease. The physico-chemical analysis
revealed that improper soil management is the main cause for crown choke disorder. Soil
characterization and water quality analysis infers soil is poorly graded (82% of silt content)
with very low hydraulic conductivity of 3.2×10-7 cm/sec, and high bulk density of 2.12 g/cm3.
This impervious nature caused water logging and lead to salinity.
Age based classification results revealed Arecanut crop can be classified into different age
groups; below 3 years, 5 to 7 years, 8 to 15 years and above 25 years. And within class
classification accuracy of 72% was observed for Support Vector Machine (SVM)
classification with linear kernel.
Age based Arecanut crop water requirement map reveals that crop water requirement varies
with age of the crop, below 7 years of crop it is 19 and for above 15 years it is 25
liter/day/plant. The derived ACWRI, DI, AI indices to monitor Arecanut crop ranges from 0
to 1 to indicate the age based crop water requirement, disease severity, and age of crop
respectively. From the hyperspectral data significant wavelengths were identified: (i) to map
the stressed Arecanut crops (750, 550 and 675nm), (ii) Arecanut crop age predication (540,
680 and 780nm). (iii) And to predict the age wise crop water requirement using statistical
models: SMLR revealed that 681 and 721nm are significant. PLSR also in agreement with
SMLR i.e 681,721 and 548nm are important. Whereas a VIP technique revealed wavelengths
1043, 1053, 1033, 1083, 1023, 1013, 1104, and 854nm are important.
This study concludes that, hyperspectral remote sensing data processed with standard
procedures with appropriate atmospheric corrections algorithms and integrated with field
studies along with statistical models can be effectively used for Arecanut crop monitoring.
This study also demonstrates that, how advanced technological tools can be used to address
societal problems say crop monitoring. The output of the research is useful to the farming
community to actively plan their agriculture water requirement, and also improves water use
efficiency.
Description
Keywords
Department of Applied Mechanics and Hydraulics, Age based classification, Arecanut crop monitoring, Hyperion, Indices, PLSR, SMLR, VIP