ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences (May 2019)

MODELLING UNCERTAINTY OF SINGLE IMAGE INDOOR LOCALISATION USING A 3D MODEL AND DEEP LEARNING

  • D. Acharya,
  • S. Singha Roy,
  • K. Khoshelham,
  • S. Winter

DOI
https://doi.org/10.5194/isprs-annals-IV-2-W5-247-2019
Journal volume & issue
Vol. IV-2-W5
pp. 247 – 254

Abstract

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Many current indoor localisation approaches need an initial location at the beginning of localisation. The existing visual approaches to indoor localisation perform a 3D reconstruction of the indoor spaces beforehand, for determining this initial location, which is challenging for large indoor spaces. In this research, we present a visual approach for indoor localisation that is eliminating the requirement of any image-based reconstruction of indoor spaces by using a 3D model. A deep Bayesian convolutional neural network is fine-tuned with synthetic images generated from a 3D model to estimate the camera pose of real images. The uncertainty of the estimated camera poses is modelled by sampling the outputs of the Bayesian network fine-tuned with synthetic images. The results of the experiments indicate that a localisation accuracy of 2 metres can be achieved using the proposed approach.