Using occupancy grids for mobile robot perception and navigation
- 1 June 1989
- journal article
- Published by Institute of Electrical and Electronics Engineers (IEEE) in Computer
- Vol. 22 (6), 46-57
- https://doi.org/10.1109/2.30720
Abstract
An approach to robot perception and world modeling that uses a probabilistic tesselated representation of spatial information called the occupancy grid is reviewed. The occupancy grid is a multidimensional random field that maintains stochastic estimates of the occupancy state of the cells in a spatial lattice. To construct a sensor-derived map of the robot's world, the cell state estimates are obtained by interpreting the incoming range readings using probabilistic sensor models. Bayesian estimation procedures allow the incremental updating of the occupancy grid, using readings taken from several sensors over multiple points of view. The use of occupancy grids from mapping and for navigation is examined. Operations on occupancy grids and extensions of the occupancy grid framework are briefly considered.Keywords
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