Room Shapes and Functional Uses Predicted from Sparse Data

Y. Dehbi*, N. Gojayeva, A. Pickert, J. H. Haunert, L. Plümer

*Corresponding author for this work

Abstract

Indoor models are highly relevant for indoor navigation. However, they are hard to achieve if high-resolution data is not available. Many researchers used expensive 3D laser scanning techniques to derive indoor models. Few papers describe the derivation of indoor models based on sparse data such as footprints. They assume that floorplans and rooms are rather rectangular and that information on functional use is given. This paper addresses the automatic learning of a classifier which predicts the functional use of housing rooms. The classification is based on features which are widely available such as room areas and orientation. These features are extracted from an extensive database of annotated rooms. A Bayesian classifier is applied which delivers probabilities of competing class hypotheses. In a second step, functional uses are used to predict the shape of the rooms in a further classification.

Original languageEnglish
Title of host publicationISPRS TC IV Mid-term Symposium “3D Spatial Information Science – The Engine of Change”
EditorsS. Zlatanova, S. Dragicevic, G. Sithole
PublisherCopernicus Publications
Pages33-40
Number of pages8
DOIs
Publication statusPublished - 19 Sept 2018
Externally publishedYes
EventISPRS TC IV Mid-term Symposium “3D Spatial Information Science – The Engine of Change” - Delft, Netherlands
Duration: 1 Oct 20185 Oct 2018

Publication series

NameISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
PublisherCopernicus Publications
NumberIV-4
ISSN (Print)2194-9042

Conference

ConferenceISPRS TC IV Mid-term Symposium “3D Spatial Information Science – The Engine of Change”
Country/TerritoryNetherlands
CityDelft
Period1/10/185/10/18

Keywords

  • Bayesian Classification
  • BIM
  • CityGML
  • Indoor Model
  • Stochastic Reasoning

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