Abstract

We propose a new approach to robot path planning that consists of building and searching a graph connecting the local minima of a potential function defined over the robot's configuration space. A planner based on this approach has been implemented. This planner is consider ably faster than previous path planners and solves prob lems for robots with many more degrees of freedom (DOFs). The power of the planner derives both from the "good" properties of the potential function and from the efficiency of the techniques used to escape the local min ima of this function. The most powerful of these tech niques is a Monte Carlo technique that escapes local min ima by executing Brownian motions. The overall approach is made possible by the systematic use of distributed rep resentations (bitmaps) for the robot's work space and configuration space. We have experimented with the plan ner using several computer-simulated robots, including rigid objects with 3 DOFs (in 2D work space) and 6 DOFs (in 3D work space) and manipulator arms with 8, 10, and 31 DOFs (in 2D and 3D work spaces). Some of the most significant experiments are reported in this article.

Keywords

Configuration spaceMotion planningMaxima and minimaRobotComputer scienceRepresentation (politics)Degrees of freedom (physics and chemistry)Path (computing)Probabilistic roadmapWork (physics)Function (biology)GraphArtificial intelligenceMathematical optimizationMathematicsTheoretical computer scienceEngineeringPhysics

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Publication Info

Year
1991
Type
article
Volume
10
Issue
6
Pages
628-649
Citations
981
Access
Closed

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Citation Metrics

981
OpenAlex
55
Influential
652
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Cite This

Jérôme Barraquand, Jean‐Claude Latombe (1991). Robot Motion Planning: A Distributed Representation Approach. The International Journal of Robotics Research , 10 (6) , 628-649. https://doi.org/10.1177/027836499101000604

Identifiers

DOI
10.1177/027836499101000604

Data Quality

Data completeness: 77%