Convolutional Neural Networks for Global Human Settlements Mapping from Sentinel-2 Satellite Imagery
This provides spatially consistent and up-to-date settlement maps for policymakers addressing urbanization and sustainability, but it is incremental as it applies an existing deep learning method to new satellite data.
The paper tackled the problem of creating detailed global human settlements maps by developing a convolutional neural network framework that automatically extracts built-up areas from Sentinel-2 satellite imagery at 10 m resolution, achieving validation with an independent dataset covering 277 sites worldwide.
Spatially consistent and up-to-date maps of human settlements are crucial for addressing policies related to urbanization and sustainability, especially in the era of an increasingly urbanized world.The availability of open and free Sentinel-2 data of the Copernicus Earth Observation program offers a new opportunity for wall-to-wall mapping of human settlements at a global scale.This paper presents a deep-learning-based framework for a fully automated extraction of built-up areas at a spatial resolution of 10 m from a global composite of Sentinel-2 imagery.A multi-neuro modeling methodology building on a simple Convolution Neural Networks architecture for pixel-wise image classification of built-up areas is developed.The core features of the proposed model are the image patch of size 5 x 5 pixels adequate for describing built-up areas from Sentinel-2 imagery and the lightweight topology with a total number of 1,448,578 trainable parameters and 4 2D convolutional layers and 2 flattened layers.The deployment of the model on the global Sentinel-2 image composite provides the most detailed and complete map reporting about built-up areas for reference year 2018. The validation of the results with an independent reference data-set of building footprints covering 277 sites across the world establishes the reliability of the built-up layer produced by the proposed framework and the model robustness.