Multi-volume occupancy grids: An efficient probabilistic 3D mapping model for micro aerial vehicles

Advancing research into autonomous micro aerial vehicle navigation requires data structures capable of representing indoor and outdoor 3D environments. The vehicle must be able to update the map structure in real time using readings from range-finding sensors when mapping unknown areas; it must also...

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Bibliographic Details
Published in2010 IEEE/RSJ International Conference on Intelligent Robots and Systems pp. 1553 - 1559
Main Authors Dryanovski, I, Morris, W, Jizhong Xiao
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.10.2010
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ISBN9781424466740
1424466741
ISSN2153-0858
DOI10.1109/IROS.2010.5652494

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Summary:Advancing research into autonomous micro aerial vehicle navigation requires data structures capable of representing indoor and outdoor 3D environments. The vehicle must be able to update the map structure in real time using readings from range-finding sensors when mapping unknown areas; it must also be able to look up occupancy information from the map for the purposes of localization and path-planning. Mapping models that have been used for these tasks include voxel grids, multi-level surface maps, and octrees. In this paper, we suggest a new approach to 3D mapping using a multi-volume occupancy grid, or MVOG. MVOGs explicitly store information about both obstacles and free space. This allows us to correct previous potentially erroneous sensor readings by incrementally fusing in new positive or negative sensor information. In turn, this enables extracting more reliable probabilistic information about the occupancy of 3D space. MVOGs outperform existing probabilistic 3D mapping methods in terms of memory usage, due to the fact that observations are grouped together into continuous vertical volumes to save space. We describe the techniques required for mapping using MVOGs, and analyze their performance using indoor and outdoor experimental data.
ISBN:9781424466740
1424466741
ISSN:2153-0858
DOI:10.1109/IROS.2010.5652494