Sparse 3D point-cloud map upsampling and noise removal as a vSLAM post-processing step: Experimental evaluation

The monocular vision-based simultaneous localization and mapping (vSLAM) is one of the most challenging problem in mobile robotics and computer vision. In this work we study the post-processing techniques applied to sparse 3D point-cloud maps, obtained by feature-based vSLAM algorithms. Map post-processing is split into 2 major steps: (1) noise and outlier removal and (2) upsampling. We evaluate different combinations of known algorithms for outlier removing and upsampling on datasets of real indoor and outdoor environments and identify the most promising combination. We further use it to convert a point-cloud map, obtained by the real UAV performing indoor flight to 3D voxel grid (octo-map) potentially suitable for path planning. © Springer Nature Switzerland AG 2018.

Authors
Bokovoy A. 1, 2 , Yakovlev K.2, 3
Language
English
Pages
23-33
Status
Published
Volume
11097 LNAI
Year
2018
Organizations
  • 1 Peoples Friendship University of Russia (RUDN University), Moscow, Russian Federation
  • 2 Federal Research Center “Computer Science and Control” of Russian Academy of Sciences, Moscow, Russian Federation
  • 3 National Research University Higher School of Economics, Moscow, Russian Federation
Keywords
3D; 3D path planning; Feature-based vSLAM; Outlier removal; Point-cloud; Sparse map; Upsampling; vSLAM
Date of creation
19.10.2018
Date of change
19.10.2018
Short link
https://repository.rudn.ru/en/records/article/record/7260/
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