Abstract:
A comprehensive study for utilizing multispectral satellite imagery to enhance novel environmental monitoring techniques is crucial in terms of accuracy, processing time, and cost for a
sustainable triple bottom. The accurate classification of water bodies from other features optimizes spatiotemporal analysis to address global challenges. Therefore, this study emerges as
the new research frontier in proposing an apt algorithm for recognizing water resources and
coastline in Sri Lanka. This study explores the potential of using classification algorithms
for geospatial assessments and applications with their accuracy and reliability. The acquired
Collection 2 Level 2 Landsat 8 imagery was geometrically and radiometrically pre-processed,
and a false-colour composite was produced from the bands: short-wave infrared, red and nearinfrared. A total of 280 training samples were created with the reference pixels of 50.13 percent
for water bodies and 49.87 percent for other features. The confusion matrix was generated using a distinct set of 500 random points for each classification technique, and the F-score and
kappa coefficient were calculated for the accuracy assessment. The study depicts that the supervised algorithms: Support Vector Machine, Maximum Likelihood and Random Trees, and
unsupervised algorithm: ISO Cluster performs equally in classifying water bodies and other
features with higher kappa coefficient exceeding 0.95. Out of these, ISO Cluster was efficient
than other algorithms due to reduced handling time. The findings enhance the decision-making
ability on extracting surface water bodies using freely available 30 m spatial resolution imagery.