IEEE Access (Jan 2022)

Dynamic Semantic Occupancy Mapping Using 3D Scene Flow and Closed-Form Bayesian Inference

  • Aishwarya Unnikrishnan,
  • Joey Wilson,
  • Lu Gan,
  • Andrew Capodieci,
  • Paramsothy Jayakumar,
  • Kira Barton,
  • Maani Ghaffari

DOI
https://doi.org/10.1109/ACCESS.2022.3205329
Journal volume & issue
Vol. 10
pp. 97954 – 97970

Abstract

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This paper reports on a dynamic semantic mapping framework that incorporates 3D scene flow measurements into a closed-form Bayesian inference model. Existence of dynamic objects in the environment can cause artifacts and traces in current mapping algorithms, leading to an inconsistent map posterior. We leverage state-of-the-art semantic segmentation and 3D flow estimation using deep learning to provide measurements for map inference. We develop a Bayesian model that propagates the scene with flow and infers a 3D continuous (i.e., can be queried at arbitrary resolution) semantic occupancy map outperforming its static counterpart. Extensive experiments using publicly available data sets show that the proposed framework improves over its predecessors and input measurements from deep neural networks consistently.

Keywords