STOCHASTIC and GEOMETRIC REASONING for INDOOR BUILDING MODELS with ELECTRIC INSTALLATIONS - BRIDGING the GAP between GIS and BIM

Y. Dehbi*, J. H. Haunert, L. Plümer

*Corresponding author for this work

Abstract

3D city and building models according to CityGML encode the geometry, represent the structure and model semantically relevant building parts such as doors, windows and balconies. Building information models support the building design, construction and the facility management. In contrast to CityGML, they include also objects which cannot be observed from the outside. The three dimensional indoor models characterize a missing link between both worlds. Their derivation, however, is expensive. The semantic automatic interpretation of 3D point clouds of indoor environments is a methodically demanding task. The data acquisition is costly and difficult. The laser scanners and image-based methods require the access to every room. Based on an approach which does not require an additional geometry acquisition of building indoors, we propose an attempt for filling the gaps between 3D building models and building information models. Based on sparse observations such as the building footprint and room areas, 3D indoor models are generated using combinatorial and stochastic reasoning. The derived models are expanded by a-priori not observable structures such as electric installation. Gaussian mixtures, linear and bi-linear constraints are used to represent the background knowledge and structural regularities. The derivation of hypothesised models is performed by stochastic reasoning using graphical models, Gauss-Markov models and MAP-estimators.

Original languageEnglish
Title of host publication12th 3D Geoinfo Conference 2017
Pages33-39
DOIs
Publication statusPublished - 23 Oct 2017
Externally publishedYes

Publication series

NameISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Number4W5
Volume4
ISSN (Electronic)2194-9042

Keywords

  • BIM
  • CityGML
  • Constraint satisfaction
  • Gauss-Markov
  • Gaussian mixture
  • Stochastic reasoning

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