Publication: Application of Sentinel-2 Satellite Data to Map Forest Cover in Southeast Sri Lanka through the Random Forest Classifier
DOI
Type:
Article
Date
2022-09
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
SLIIT, Faculty of Engineering
Abstract
Sentinel-2 satellite data has been used for forest cover monitoring for almost five years. Mapping
with Sentinel data will be a cost-effective solution for Sri Lanka, where the lack of updated land cover
maps with high spatial resolution is a significant challenge in the land resource management of the
country. A study area of about 5,000 km2
located in southeast Sri Lanka was selected for this study.
Agricultural lands, forests including Yala national park, and villages with perennial crops make up the
region. A Level-2A Sentinel-2 image with less than 10 percent cloud cover was used in the European
Space Agency's (ESA) SNAP software version 8.0.0 for image processing and the forest cover of the
study area was mapped through the Random Forest classifier (RFC). Normalized Difference Vegetation
Index (NDVI) is also calculated as a Sentinel product to support RFC output. For RFC, ground truth
data were collected through the reference of Google Earth high-resolution data. The classification
accuracy was assessed using the Google Earth image as the reference dataset. Furthermore, RFC results
were compared with NVDI greenness values. The classification accuracy was calculated using a
confusion matrix (error matrix) through randomly selected 100 sample points. The overall accuracy of
the land cover map was 85 percent, with a 96 percent accuracy for forest cover identification. The study
found RFC as an effective method to isolate forest cover in Sri Lanka.
Description
Keywords
Sentinel-2, Random Forest Classifier, Land cover classification, Land cover mapping, Normalized Difference Vegetation Index
