posted on 2005-01-01, 00:00authored byYaron Rachlin, John M. Dolan, Pradeep K. Khosla
Occupancy grid mapping algorithms assume that
grid block values are independently distributed. However, most
environments of interest contain spatial patterns that are better
characterized by models that capture dependencies among grid
blocks. To account for such dependencies, we model the environment
as a pairwise Markov random field. We specify a belief
propagation-based mapping algorithm that takes these dependencies
into account when estimating a map. To demonstrate the
potential benefits of this approach, we simulate a simple multirobot
minefield mapping scenario. Minefields contain spatial
dependencies since some landmine configurations are more likely
than others, and since clutter, which causes false alarms, can
be concentrated in certain regions and completely absent in
others. Our belief propagation-based approach outperforms
conventional occupancy grid mapping algorithms in the sense
that better maps can be obtained with significantly fewer robot
measurements. The belief propagation algorithm requires a
modest amount of increased computation, but we contend that
in applications where significant energy and time expenditure
is associated with robot movement and active sensing, the
reduction in the required number of samples will justify the
increased computation.