Multitemporal analysis in Google Earth Engine for detecting urban changes using optical data and machine learning algorithms
This work addresses urban change detection for remote sensing applications, but it is incremental as it applies existing methods to a new dataset.
The study performed multitemporal analysis using Google Earth Engine and machine learning to detect urban changes in Cairo from 2013 to 2021, demonstrating the method's validity in identifying changed and unchanged areas.
The aim of this work is to perform a multitemporal analysis using the Google Earth Engine (GEE) platform for the detection of changes in urban areas using optical data and specific machine learning (ML) algorithms. As a case study, Cairo City has been identified, in Egypt country, as one of the five most populous megacities of the last decade in the world. Classification and change detection analysis of the region of interest (ROI) have been carried out from July 2013 to July 2021. Results demonstrate the validity of the proposed method in identifying changed and unchanged urban areas over the selected period. Furthermore, this work aims to evidence the growing significance of GEE as an efficient cloud-based solution for managing large quantities of satellite data.