Robotic motion planning requires configuration space exploration. In high-dimensional configuration spaces, a complete exploration is computationally intractable. Practical motion planning algorithms for such high-dimensional spaces must expend computational resources in proportion to the local complexity of configuration space regions. We propose a novel motion planning approach that addresses this problem by building an incremental, approximate model of configuration space. The information contained in this model is used to direct computational resources to difficult regions, effectively addressing the narrow passage problem by adapting the sampling density to the complexity of that region. In addition, the expressiveness of the model per...
In its original formulation, the motion planning problem considers the search of a robot path from a...
Sampling-based algorithms have dramatically improved the state of the art in robotic motion planning...
We introduce a sampling-based motion planning method that automatically adapts to the difficulties c...
Robotic motion planning requires configuration space exploration. In high-dimensional configuration ...
Abstract — Robotic motion planning requires configuration space exploration. In high-dimensional con...
Robotic motion planning requires configuration space exploration. In high-dimensional configuration ...
Motion planning is an important problem in robotics which addresses the question of how to transitio...
In this paper, we discuss the field of sampling-based motion planning. In contrast to methods that c...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Robots already impact the way we understand our world and live our lives. However, their impact and ...
The sampling-based motion planner is the mainstream method to solve the motion planning problem in h...
algorithm for motion planning. The EET planner deliberately trades probabilistic completeness for co...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
Sampling based planners have been successful in path planning of robots with many degrees of freedom...
Motion planning is a fundamental problem with applications in a wide variety of areas including robo...
In its original formulation, the motion planning problem considers the search of a robot path from a...
Sampling-based algorithms have dramatically improved the state of the art in robotic motion planning...
We introduce a sampling-based motion planning method that automatically adapts to the difficulties c...
Robotic motion planning requires configuration space exploration. In high-dimensional configuration ...
Abstract — Robotic motion planning requires configuration space exploration. In high-dimensional con...
Robotic motion planning requires configuration space exploration. In high-dimensional configuration ...
Motion planning is an important problem in robotics which addresses the question of how to transitio...
In this paper, we discuss the field of sampling-based motion planning. In contrast to methods that c...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Robots already impact the way we understand our world and live our lives. However, their impact and ...
The sampling-based motion planner is the mainstream method to solve the motion planning problem in h...
algorithm for motion planning. The EET planner deliberately trades probabilistic completeness for co...
This thesis describes a predictive sampling-based algorithm for real-time robot motion planning to r...
Sampling based planners have been successful in path planning of robots with many degrees of freedom...
Motion planning is a fundamental problem with applications in a wide variety of areas including robo...
In its original formulation, the motion planning problem considers the search of a robot path from a...
Sampling-based algorithms have dramatically improved the state of the art in robotic motion planning...
We introduce a sampling-based motion planning method that automatically adapts to the difficulties c...