Landcover classification and change detection using remote sensing and machine learning: a case study of Western Fiji
By: Yadvendra Gurjar , Ruoni Wan , Ehsan Farahbakhsh and more
Potential Business Impact:
Tracks city growth in Fiji from space.
As a developing country, Fiji is facing rapid urbanisation, which is visible in the massive development projects that include housing, roads, and civil works. In this study, we present machine learning and remote sensing frameworks to compare land use and land cover change from 2013 to 2024 in Nadi, Fiji. The ultimate goal of this study is to provide technical support in land cover/land use modelling and change detection. We used Landsat-8 satellite image for the study region and created our training dataset with labels for supervised machine learning. We used Google Earth Engine and unsupervised machine learning via k-means clustering to generate the land cover map. We used convolutional neural networks to classify the selected regions' land cover types. We present a visualisation of change detection, highlighting urban area changes over time to monitor changes in the map.
Similar Papers
Landcover classification and change detection using remote sensing and machine learning: a case study of Western Fiji
CV and Pattern Recognition
Tracks city growth using satellite pictures.
Geospatial Diffusion for Land Cover Imperviousness Change Forecasting
Machine Learning (CS)
Predicts how land will change to help with floods.
Leveraging Convolutional and Graph Networks for an Unsupervised Remote Sensing Labelling Tool
CV and Pattern Recognition
Finds and labels land areas automatically from satellite pictures.