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Roadmap-based motion planning in dynamic environments | IEEE Conference Publication | IEEE Xplore

Roadmap-based motion planning in dynamic environments


Abstract:

In this paper a new method is presented for motion planning in dynamic environments, that is, finding a trajectory for a robot in a scene consisting of both static and dy...Show More

Abstract:

In this paper a new method is presented for motion planning in dynamic environments, that is, finding a trajectory for a robot in a scene consisting of both static and dynamic, moving obstacles. We propose a practical algorithm based on a roadmap that is created for the static part of the scene. On this roadmap an approximate time-optimal trajectory from a start to a goal configuration is computed, such that the robot does not collide with any moving obstacle. The trajectory is found by performing a search for a shortest path on an implicit grid in state-time space. The approach is applicable to any robot type in configuration spaces with any dimension, and the motions of the dynamic obstacles are unconstrained, as long as they are known beforehand. The approach has been implemented for a free-flying robot in a three-dimensional workspace and experiments show that the method achieves interactive performance in complex environments.
Date of Conference: 28 September 2004 - 02 October 2004
Date Added to IEEE Xplore: 14 February 2005
Print ISBN:0-7803-8463-6
Conference Location: Sendai, Japan

I. Introduction

Motion planning is of great importance in various fields such as robotics, virtual environments, maintenance planning and computer-aided design. Much research has been done on motion planning in static environments and both exact and approximate methods have been devised [9]. A popular approximate method is the probabilistic roadmap planner (PRM) [7], [13]. It is a generic method that creates a roadmap in a preprocessing phase that represents the connectivity of the free configuration space. Individual motion planning problems can then be solved quickly by finding a path in the roadmap. The method has successfully been used in high-dimensional configuration spaces of complex environments.

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References

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