Existing sampling-based robot motion planning methods are often inefficient at finding trajectories for kinodynamic systems, especially in the presence of narrow passages between obstacles and uncertainty in control and sensing. To address this, we propose EG-RRT, an Environment-Guided variant of RRT designed for kinodynamic robot systems that combines elements from several prior approaches and may incorporate a cost model based on the LQG-MP framework to estimate the probability of collision under uncertainty in control and sensing. We compare the performance of EG-RRT with several prior approaches on challenging sample problems. Results suggest that EG-RRT offers significant improvements in performance
Sampling-based motion planning is a powerful tool in solving the motion planning problem for a varie...
513-516Rapidly Exploring Random Tree is a technique that utilizes samples as constraints for arrangi...
This paper considers the real-time motion planning problem for autonomous systems subject to complex...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
The problem of three-dimensional path planning in obstacle-crowded environments is a challenge (an N...
Abstract — This paper describes a new extension to the Rapidly–exploring Random Tree (RRT) path plan...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Abstract — This paper presents an algorithm for real-time sensor-based motion planning under kinodyn...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
In this paper, an expert-guided kinodynamic RRT algorithm (EGK-RRT) is presented. It aims to conside...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
This paper presents the first randomized approach to kinodynamic planning (also known as trajectory ...
This paper presents a novel randomized motion planner for robots that must achieve a specified goal ...
LaValle & Kuffner [12] present an application of a randomized technique to the problem of kinody...
Rapidly-exploring random trees (RRTs) are widely used to solve large planning problems where the sco...
Sampling-based motion planning is a powerful tool in solving the motion planning problem for a varie...
513-516Rapidly Exploring Random Tree is a technique that utilizes samples as constraints for arrangi...
This paper considers the real-time motion planning problem for autonomous systems subject to complex...
Thesis (M. Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Compute...
The problem of three-dimensional path planning in obstacle-crowded environments is a challenge (an N...
Abstract — This paper describes a new extension to the Rapidly–exploring Random Tree (RRT) path plan...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
Abstract — This paper presents an algorithm for real-time sensor-based motion planning under kinodyn...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
In this paper, an expert-guided kinodynamic RRT algorithm (EGK-RRT) is presented. It aims to conside...
This dissertation explores properties of motion planners that build tree data structures in a robot’...
This paper presents the first randomized approach to kinodynamic planning (also known as trajectory ...
This paper presents a novel randomized motion planner for robots that must achieve a specified goal ...
LaValle & Kuffner [12] present an application of a randomized technique to the problem of kinody...
Rapidly-exploring random trees (RRTs) are widely used to solve large planning problems where the sco...
Sampling-based motion planning is a powerful tool in solving the motion planning problem for a varie...
513-516Rapidly Exploring Random Tree is a technique that utilizes samples as constraints for arrangi...
This paper considers the real-time motion planning problem for autonomous systems subject to complex...