2023
DOI: 10.3390/su152416671
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MSC-DeepFM: OSM Road Type Prediction via Integrating Spatial Context Using DeepFM

Yijiang Zhao,
Yahan Ning,
Haodong Li
et al.

Abstract: The quality of OpenStreetMap (OSM) has been widely concerned as a valuable source for monitoring some sustainable development goals (SDG) indicators. Improving its semantic quality is still challenging. As a kind of solution, road type prediction plays an important role. However, most existing algorithms show low accuracy, owing to data sparseness and inaccurate description. To address these problems, we propose a novel OSM road type prediction approach via integrating multiple spatial contexts with DeepFM, na… Show more

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