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Bruges Road Surface Damage & Texture Classification

In Bruges, Belgium, we used satellite and panchromatic imagery to detect road-surface damage and classify pavement texture automatically — turning a slow, disruptive manual survey into a repeatable, city-wide analysis.

The challenge

Bruges pairs modern asphalt with historic cobblestone, so the city needed a distress inventory — cracks, patches and seams — broken down by pavement type. Manual inspection was slow, subjective and disruptive to traffic.

Our approach

We fused high-resolution panchromatic detail with multispectral satellite data and ran deep-learning models to detect and geolocate each defect and surface segment. The damage types were cracks (fatigue, transverse, edge or random), patches and construction seams; the surface materials were:

  • asphalt
  • pavers / cobblestone — traditional stone blocks, common in the historic core
  • concrete

Results & benefits

  • A city-wide digital map of road damage and surface type for Bruges.
  • A clear distinction between asphalt, cobblestone and concrete areas.
  • Every defect geolocated, ready for a data-driven maintenance programme.