Paved or unpaved? A Deep Learning derived Road Surface Global Dataset from Mapillary Street-View Imagery
We have released an open dataset with global coverage on road surface characteristics (paved or unpaved) derived utilising 105 million images from the world's largest crowdsourcing-based street view platform, Mapillary, leveraging state-of-the-art geospatial AI methods. We propose a hybrid deep...
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Zusammenfassung: | We have released an open dataset with global coverage on road surface
characteristics (paved or unpaved) derived utilising 105 million images from
the world's largest crowdsourcing-based street view platform, Mapillary,
leveraging state-of-the-art geospatial AI methods. We propose a hybrid deep
learning approach which combines SWIN-Transformer based road surface prediction
and CLIP-and-DL segmentation based thresholding for filtering of bad quality
images. The road surface prediction results have been matched and integrated
with OpenStreetMap (OSM) road geometries. This study provides global data
insights derived from maps and statistics about spatial distribution of
Mapillary coverage and road pavedness on a continent and countries scale, with
rural and urban distinction. This dataset expands the availability of global
road surface information by over 3 million kilometers, now representing
approximately 36% of the total length of the global road network. Most regions
showed moderate to high paved road coverage (60-80%), but significant gaps were
noted in specific areas of Africa and Asia. Urban areas tend to have
near-complete paved coverage, while rural regions display more variability.
Model validation against OSM surface data achieved strong performance, with F1
scores for paved roads between 91-97% across continents. Taking forward the
work of Mapillary and their contributors and enrichment of OSM road attributes,
our work provides valuable insights for applications in urban planning,
disaster routing, logistics optimisation and addresses various Sustainable
Development Goals (SDGS): especially SDGs 1 (No poverty), 3 (Good health and
well-being), 8 (Decent work and economic growth), 9 (Industry, Innovation and
Infrastructure), 11 (Sustainable cities and communities), 12 (Responsible
consumption and production), and 13 (Climate action). |
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DOI: | 10.48550/arxiv.2410.19874 |