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Assessing IFC classes with means of geometric deep learning on different graph encodings

Fiona C. Collins, Alexander Braun, Martin Ringsquandl, Daniel Hall, André Borrmann

2021Computing in construction24 citationsDOIOpen Access PDF

Abstract

Machine-readable Building Information Models (BIM) are of great benefit for the building operation phase. Losses through data exchange or issues in software interoperability can significantly impede their availability. Incorrect and imprecise semantics in the exchange format IFC are frequent and complicate knowledge extraction. To support an automated IFC object correction, we use a Geometric Deep Learning (GDL) approach to perform classification based solely on the 3D shape. A Graph Convolutional Network (GCN) uses the native triangle-mesh and automatically creates meaningful local features for subsequent classification. The method reaches an accuracy of up to 85\% on our self-assembled, partially industry dataset.

Topics & Concepts

Computer scienceInteroperabilitySemantics (computer science)GraphArtificial intelligenceDeep learningSoftwareFeature extractionKnowledge graphData miningMachine learningTheoretical computer scienceProgramming languageWorld Wide Web3D Surveying and Cultural HeritageBIM and Construction IntegrationManufacturing Process and Optimization
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