DocumentCode
1417722
Title
Discrete range clustering using Monte Carlo methods
Author
Chatterji, Gano B. ; Sridhar, Banavar
Author_Institution
Sterling Software Inc., Palo Alto, CA, USA
Volume
26
Issue
6
fYear
1996
fDate
11/1/1996 12:00:00 AM
Firstpage
832
Lastpage
837
Abstract
For automatic obstacle avoidance guidance during rotorcraft low altitude flight a reliable model of the nearby environment is needed. Such a model may be constructed by applying surface fitting techniques to the dense range map obtained by active sensing using radars. However, for covertness passive sensing techniques using electro-optic sensors is desirable. As opposed to the dense range map obtained via active sensing, passive sensing algorithms produce reliable range at sparse locations and, therefore, surface fitting techniques to fill the gaps in the range measurement are not directly applicable. Both, for automatic guidance and as a display for aiding the pilot, these discrete ranges need to be grouped into sets which correspond to objects in the nearby environment. The focus of this paper is on using Monte Carlo methods for clustering range points into meaningful groups. We compare three different approaches and present results of application of these algorithms to an image sequence acquired by onboard cameras during a helicopter flight. Starting with an initial grouping, these algorithms are iteratively applied with a new group creation algorithm to determine the optimal number of groups and the optimal group membership. The results indicate that the simulated annealing methods do not offer any significant advantage over the basic Monte Carlo method for this discrete optimization problem
Keywords
Monte Carlo methods; aircraft navigation; electric sensing devices; electro-optical devices; helicopters; image sensors; image sequences; iterative methods; optimisation; path planning; pattern recognition; surface fitting; Monte Carlo methods; active sensing; automatic obstacle avoidance guidance; covertness; dense range map; discrete optimization problem; discrete range clustering; electro-optic sensors; helicopter flight; image sequence; passive sensing; range point clustering; rotorcraft low altitude flight; surface fitting techniques; Cameras; Clustering algorithms; Displays; Electrooptic devices; Focusing; Helicopters; Image sequences; Iterative algorithms; Radar; Surface fitting;
fLanguage
English
Journal_Title
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
Publisher
ieee
ISSN
1083-4427
Type
jour
DOI
10.1109/3468.541342
Filename
541342
Link To Document