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GPSlam: Marrying Sparse Geometric and Dense Probabilistic Visual Mapping

Contributing authors of JOANNEUM RESEARCH:
Authors
Pirker, Katrin; Ruether, Matthias; Schweighofer, Gerald; Bischof, Horst
Abstract:
We propose a novel, hybrid SLAM system to construct a dense occupancy grid map based on sparse visual features and dense depth information. While previous approaches deemed the occupancy grid usable only in 2D mapping, and in combination with a probabilistic approach, we show that geometric SLAM can produce consistent, robust and dense occupancy information, and maintain it even during erroneous exploration and loop closure. We require only a single hypothesis of the occupancy map and employ a weighted inverse mapping scheme to align it to sparse geometric information. We propose a novel map-update criterion to prevent inconsistencies, and a robust measure to discriminate exploration from localization.
Title:
GPSlam: Marrying Sparse Geometric and Dense Probabilistic Visual Mapping
Publikationsdatum
2011-08

Publikationsreihe

Adress
Dundee, United Kingdom
Proceedings
22nd British Machine Vision Conference, BMVC2011
More files and links
Jahr/Monat:
2011

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