Litcius/Paper detail

Urban surface water bodies mapping using the automatic k-means based approach and sentinel-2 imagery

Mateo Gašparović, Sudhir Kumar Singh

2022Geocarto International27 citationsDOIOpen Access PDF

Abstract

Rivers, lakes, and open water bodies play crucial roles in environmental development, especially in urban ecosystems. Accurate urban surface water body maps in high resolution are an important prerequisite for better and faster decision making for urban ecosystem monitoring, mitigating the effects of urban heat islands and urban climate change adaptation. Research presents new automatic algorithm for urban surface bodies mapping (AUWM). Algorithm was tested on Sentinel-2 data and can be applied globally for automatic mapping water bodies in 10-m spatial resolution. AUWM was developed based on modified normalized difference water index, pansharpening techniques (MNDWIPS), and k-means clustering algorithm. Research was provided on three study sites. The optimal number of classes for k-means in AUWM is four. Accuracy assessment results show that AUWM is a highly accurate method for water bodies mapping, confirmed by all statistical parameters; accuracy, kappa, precision, and F1 value are 0.997, 0.830, 0.998, and 0.998, respectively.

Topics & Concepts

Water bodyRemote sensingCluster analysisSurface waterUrban heat islandGeographyUrban planningEnvironmental scienceCartographyComputer scienceArtificial intelligenceMeteorologyEnvironmental engineeringCivil engineeringEngineeringFlood Risk Assessment and ManagementRemote Sensing in AgricultureRemote Sensing and LiDAR Applications