elib
DLR-Header
DLR-Logo -> http://www.dlr.de
DLR Portal Home | Impressum | Datenschutz | Barrierefreiheit | Kontakt | English
Schriftgröße: [-] Text [+]

Multi-Temporal Road Surface Classification from Sentinel-2 and OpenStreetMap Data Using Deep Learning

Halbgewachs, Magdalena Felicitas und Wieland, Marc und Schneibel, Anne und Geiß, Christian und Gähler, Monika (2026) Multi-Temporal Road Surface Classification from Sentinel-2 and OpenStreetMap Data Using Deep Learning. In: European Geosciences Union (EGU). EGU General Assembly 2026, 2026-05-03 - 2026-05-08, Vienna, Austria. doi: 10.5194/egusphere-egu26-7537.

[img] PDF
281kB

Offizielle URL: https://egusphere.net/conferences/EGU26/GI/index.html

Kurzfassung

During natural hazards and other rapidly evolving crisis situations, the accessibility of evacuation routes and the delivery of emergency supplies strongly depends on road surface type. However, in many regions affected by environmental changes, conflicts, or population displacement, reliable information on road surface conditions is incomplete, outdated, or entirely unavailable, which limits effective disaster response and environmental monitoring. This study presents a satellite-based framework that classifies roads as either paved or unpaved using multispectral Sentinel-2 imagery and volunteered geographic information (VGI) from OpenStreetMap (OSM). OSM road geometries are used to extract spectral samples from Sentinel-2 surface reflectance data, which is used to train a convolutional neural network (CNN) for road surface classification across diverse environmental settings. To improve spatial consistency and practical usability, classification results are aggregated at the road-segment level to produce coherent surface classifications aligned with real-world road infrastructure. The framework is designed to be transferable and applicable across regions with varying climates, land-cover characteristics, and degrees of urbanisation. The approach has been evaluated across multiple target regions and demonstrates consistent performance beyond the training domain, which highlights its potential for cross-regional application. Due to the regular revisit time of Sentinel-2, the framework further supports multi-temporal analysis. This makes it possible to assess changes to the road surface before and after dynamic events, such as flood-induced degradation, sediment coverage or long-term urbanization. By combining freely available satellite data and open VGI, the proposed method provides a scalable tool for infrastructure monitoring, disaster response, and environmental assessment in data-scarce and rapidly changing regions.

elib-URL des Eintrags:https://elib.dlr.de/224397/
Dokumentart:Konferenzbeitrag (Vortrag)
Titel:Multi-Temporal Road Surface Classification from Sentinel-2 and OpenStreetMap Data Using Deep Learning
Autoren:
AutorenInstitution oder E-Mail-AdresseAutoren-ORCID-iDORCID Put Code
Halbgewachs, Magdalena FelicitasMagdalena.Halbgewachs (at) dlr.dehttps://orcid.org/0000-0003-1036-0109NICHT SPEZIFIZIERT
Wieland, MarcMarc.Wieland (at) dlr.dehttps://orcid.org/0000-0002-1155-723XNICHT SPEZIFIZIERT
Schneibel, AnneAnne.Schneibel (at) dlr.dehttps://orcid.org/0000-0003-4329-1023219885530
Geiß, ChristianChristian.Geiss (at) dlr.dehttps://orcid.org/0000-0002-7961-8553NICHT SPEZIFIZIERT
Gähler, MonikaMonika.Gaehler (at) dlr.dehttps://orcid.org/0000-0001-7421-3488NICHT SPEZIFIZIERT
Datum:Mai 2026
Erschienen in:European Geosciences Union (EGU)
Referierte Publikation:Nein
Open Access:Ja
Gold Open Access:Nein
In SCOPUS:Nein
In ISI Web of Science:Nein
DOI:10.5194/egusphere-egu26-7537
Status:veröffentlicht
Stichwörter:Sentinel-2, road classification, CNN, OpenStreetMap
Veranstaltungstitel:EGU General Assembly 2026
Veranstaltungsort:Vienna, Austria
Veranstaltungsart:internationale Konferenz
Veranstaltungsbeginn:3 Mai 2026
Veranstaltungsende:8 Mai 2026
Veranstalter :European Geosciences Union (EGU)
HGF - Forschungsbereich:Luftfahrt, Raumfahrt und Verkehr
HGF - Programm:Raumfahrt
HGF - Programmthema:Erdbeobachtung
DLR - Schwerpunkt:Raumfahrt
DLR - Forschungsgebiet:R EO - Erdbeobachtung
DLR - Teilgebiet (Projekt, Vorhaben):R - Fernerkundung u. Geoforschung, R - Optische Fernerkundung
Standort: Oberpfaffenhofen
Institute & Einrichtungen:Deutsches Fernerkundungsdatenzentrum > Georisiken und zivile Sicherheit
Hinterlegt von: Halbgewachs, Magdalena Felicitas
Hinterlegt am:07 Jul 2026 10:13
Letzte Änderung:07 Jul 2026 10:13

Nur für Mitarbeiter des Archivs: Kontrollseite des Eintrags

Blättern
Suchen
Hilfe & Kontakt
Informationen
OpenAIRE Validator logo electronic library verwendet EPrints 3.3.12
Gestaltung Webseite und Datenbank: Copyright © Deutsches Zentrum für Luft- und Raumfahrt (DLR). Alle Rechte vorbehalten.