In the last fifteen years, sampling-based planners like the Probabilistic Roadmap Method (PRM) have proved to be successful in solving complex motion planning problems. While theoretically, the complexity of the motion planning problem is exponential in the number of degrees of freedom, sampling-based planners can successfully handle this curse of dimensionality in practice. We give a reachability-based analysis for these planners which leads to a better understanding of the success of the approach. This analysis compares the techniques based on coverage and connectivity of the free configuration space. The experiments show, contrary to general belief, that the main challenge is not getting the free space covered but getting the nodes conne...
The probabilistic roadmap (PRM) planner is a popular method for robot motion planning problems with ...
Abstract — Probabilistic RoadMaps (PRMs) are quite suc-cessful in solving complex and high-dimension...
Abstract. Motion planning has seen much attention over the past two decades. A great deal of progres...
In the last fifteen years, sampling-based planners like the Probabilistic Roadmap Method (PRM) have ...
In this paper, we propose a new learning strategy for a probabilistic roadmap (PRM) algorithm. The p...
: Applications such as robot programming, design for manufacturing, animation of digital actors, rat...
Motion planning is the problem of computing valid paths through an environment. However, because com...
Within the popular probabilistic roadmap (PRM) framework for motion planning, we challenge the use o...
The probabilistic roadmap approach is a commonly used motion planning technique. A crucial ingredie...
Why are probabilistic roadmap (PRM) planners "probabilistic"? This paper tries to establis...
This paper presents a variant of Probabilistic Roadmap Methods (PRM) that recently appeared as a pro...
Abstract The probabilistic roadmap approach is a commonly used motion planning technique.A crucial i...
One of the fundamental tasks robots have to perform is planning their motions while avoiding collisi...
International audienceThis paper presents a variant of probabilistic roadmap methods (PRM) that rece...
Why is probabilistic roadmap (PRM) planning probabilistic? How does the probability measure used for...
The probabilistic roadmap (PRM) planner is a popular method for robot motion planning problems with ...
Abstract — Probabilistic RoadMaps (PRMs) are quite suc-cessful in solving complex and high-dimension...
Abstract. Motion planning has seen much attention over the past two decades. A great deal of progres...
In the last fifteen years, sampling-based planners like the Probabilistic Roadmap Method (PRM) have ...
In this paper, we propose a new learning strategy for a probabilistic roadmap (PRM) algorithm. The p...
: Applications such as robot programming, design for manufacturing, animation of digital actors, rat...
Motion planning is the problem of computing valid paths through an environment. However, because com...
Within the popular probabilistic roadmap (PRM) framework for motion planning, we challenge the use o...
The probabilistic roadmap approach is a commonly used motion planning technique. A crucial ingredie...
Why are probabilistic roadmap (PRM) planners "probabilistic"? This paper tries to establis...
This paper presents a variant of Probabilistic Roadmap Methods (PRM) that recently appeared as a pro...
Abstract The probabilistic roadmap approach is a commonly used motion planning technique.A crucial i...
One of the fundamental tasks robots have to perform is planning their motions while avoiding collisi...
International audienceThis paper presents a variant of probabilistic roadmap methods (PRM) that rece...
Why is probabilistic roadmap (PRM) planning probabilistic? How does the probability measure used for...
The probabilistic roadmap (PRM) planner is a popular method for robot motion planning problems with ...
Abstract — Probabilistic RoadMaps (PRMs) are quite suc-cessful in solving complex and high-dimension...
Abstract. Motion planning has seen much attention over the past two decades. A great deal of progres...