PARAMETER ESTIMATION and MODEL SELECTION for INDOOR ENVIRONMENTS BASED on SPARSE OBSERVATIONS

Y. Dehbi, S. Loch-Dehbi, L. Plümer

Abstract

This paper presents a novel method for the parameter estimation and model selection for the reconstruction of indoor environments based on sparse observations. While most approaches for the reconstruction of indoor models rely on dense observations, we predict scenes of the interior with high accuracy in the absence of indoor measurements. We use a model-based top-down approach and incorporate strong but profound prior knowledge. The latter includes probability density functions for model parameters and sparse observations such as room areas and the building footprint. The floorplan model is characterized by linear and bi-linear relations with discrete and continuous parameters. We focus on the stochastic estimation of model parameters based on a topological model derived by combinatorial reasoning in a first step. A Gauss-Markov model is applied for estimation and simulation of the model parameters. Symmetries are represented and exploited during the estimation process. Background knowledge as well as observations are incorporated in a maximum likelihood estimation and model selection is performed with AIC/BIC. The likelihood is also used for the detection and correction of potential errors in the topological model. Estimation results are presented and discussed.

Original languageEnglish
Title of host publicationISPRS Geospatial Week 2017
Pages303-310
DOIs
Publication statusPublished - 12 Sept 2017
Externally publishedYes

Publication series

NameISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Number2W4
Volume4
ISSN (Electronic)2194-9042

Keywords

  • 3D building indoor models
  • CityGML
  • Gauss-Markov model
  • Gaussian mixture
  • Model selection
  • Symmetry

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