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A Recurrent Deep Network for Estimating the Pose of Real Indoor Images from Synthetic Image Sequences.

Debaditya AcharyaSesa Singha RoyKourosh KhoshelhamStephan Winter
Published in: Sensors (Basel, Switzerland) (2020)
Recently, deep convolutional neural networks (CNN) have become popular for indoor visual localisation, where the networks learn to regress the camera pose from images directly. However, these approaches perform a 3D image-based reconstruction of the indoor spaces beforehand to determine camera poses, which is a challenge for large indoor spaces. Synthetic images derived from 3D indoor models have been used to eliminate the requirement of 3D reconstruction. A limitation of the approach is the low accuracy that occurs as a result of estimating the pose of each image frame independently. In this article, a visual localisation approach is proposed that exploits the spatio-temporal information from synthetic image sequences to improve localisation accuracy. A deep Bayesian recurrent CNN is fine-tuned using synthetic image sequences obtained from a building information model (BIM) to regress the pose of real image sequences. The results of the experiments indicate that the proposed approach estimates a smoother trajectory with smaller inter-frame error as compared to existing methods. The achievable accuracy with the proposed approach is 1.6 m, which is an improvement of approximately thirty per cent compared to the existing approaches. A Keras implementation can be found in our Github repository.
Keyphrases
  • convolutional neural network
  • deep learning
  • air pollution
  • particulate matter
  • health risk
  • machine learning
  • healthcare
  • primary care
  • risk assessment
  • heavy metals
  • health information
  • quality improvement