Topo4Vec automates detection of topological errors in geospatial vector data via error simulation and spatial representation learning, reporting peak accuracies of 0.99 for overlapping polygons and 0.60 for street network errors across three cities.
International Journal of Geographical Information Science , volume =
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Automated Quality Assessment of Geospatial Vector Data: A GeoAI Approach using Spatial Representation Learning
Topo4Vec automates detection of topological errors in geospatial vector data via error simulation and spatial representation learning, reporting peak accuracies of 0.99 for overlapping polygons and 0.60 for street network errors across three cities.