Litcius/Paper detail

Monitoring war destruction from space using machine learning

Hannes Mueller, André Groeger, Jonathan Hersh, Andrea Matranga, Joan Serrat

2021Proceedings of the National Academy of Sciences44 citationsDOIOpen Access PDF

Abstract

Existing data on building destruction in conflict zones rely on eyewitness reports or manual detection, which makes it generally scarce, incomplete, and potentially biased. This lack of reliable data imposes severe limitations for media reporting, humanitarian relief efforts, human-rights monitoring, reconstruction initiatives, and academic studies of violent conflict. This article introduces an automated method of measuring destruction in high-resolution satellite images using deep-learning techniques combined with label augmentation and spatial and temporal smoothing, which exploit the underlying spatial and temporal structure of destruction. As a proof of concept, we apply this method to the Syrian civil war and reconstruct the evolution of damage in major cities across the country. Our approach allows generating destruction data with unprecedented scope, resolution, and frequency-and makes use of the ever-higher frequency at which satellite imagery becomes available.

Topics & Concepts

Scope (computer science)Computer scienceSatellite imageryData scienceArtificial intelligenceDeep learningSpace (punctuation)Computer securityRemote sensingGeographyOperating systemProgramming languageRemote-Sensing Image ClassificationArchaeological Research and ProtectionRemote Sensing in Agriculture