Stochastic reasoning for UAV supported reconstruction of 3D building models

S. Loch-Dehbi, Y. Dehbi, L. Plümer

Abstract

The acquisition of detailed information for buildings and their components becomes more and more important. However, an automatic reconstruction needs high-resolution measurements. Such features can be derived from images or 3D laserscans that are e.g. taken by unmanned aerial vehicles (UAV). Since this data is not always available or not measurable at the first for example due to occlusions we developed a reasoning approach that is based on sparse observations. It benefits from an extensive prior knowledge of probability density distributions and functional dependencies and allows for the incorporation of further structural characteristics such as symmetries. Bayesian networks are used to determine posterior beliefs. Stochastic reasoning is complex since the problem is characterized by a mixture of discrete and continuous parameters that are in turn correlated by nonlinear constraints. To cope with this kind of complexity, the implemented reasoner combines statistical methods with constraint propagation. It generates a limited number of hypotheses in a model-based top-down approach. It predicts substructures in building facades - such as windows - that can be used for specific UAV navigations for further measurements.

Original languageEnglish
Title of host publicationUAV-g 2013 Rostock 4 September 2013 through 6 September 2013
EditorsG. Grenzdorffer, R. Bill
Pages257-261
ISBN (Electronic)9781629934297, 9781629935126, 9781629935201
DOIs
Publication statusPublished - 16 Aug 2013
Externally publishedYes
EventUAV-g 2013 - Rostock, Germany
Duration: 4 Sept 20136 Sept 2013

Publication series

NameInternational Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives
Number1W2
Volume1W2
ISSN (Electronic)1682-1750

Conference

ConferenceUAV-g 2013
Country/TerritoryGermany
CityRostock
Period4/09/136/09/13

Keywords

  • 3D building models
  • Bayesian networks
  • Constraint propagation
  • Gaussian mixture models
  • Stochastic reasoning
  • Symmetry
  • UAV

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