This paper presents a real-time motion planning approach for autonomous vehicles with complex dynamics and state uncertainty. The approach is motivated by the motion planning problem for autonomous vehicles navigating in GPS-denied dynamic environments, which involves non-linear and/or non-holonomic vehicle dynamics, incomplete state estimates, and constraints imposed by uncertain and cluttered environments. To address the above motion planning problem, we propose an extension of the closed-loop rapid belief trees, the closed-loop random belief trees (CL-RBT), which incorporates predictions of the position estimation uncertainty, using a factored form of the covariance provided by the Kalman filter-based estimator. The proposed motion plan...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Planning the path of an autonomous, agile vehicle in a dynamic environment is a very complex problem...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
We propose a sampling-based motion planning algorithm for systems with complex dynamics and temporal...
This paper considers the real-time motion planning problem for autonomous systems subject to complex...
We present a motion planner for the autonomous navigation of UAVs that manages motion and sensing un...
Navigating robotic systems autonomously through unknown, dynamic and GPS-denied environments is a ch...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
This paper describes a real-time motion planning algorithm, based on the rapidly-exploring random tr...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Abstract — We present a motion planning framework for autonomous on-road driving considering both th...
Path planning for an autonomous vehicle in a dynamic environment is a challenging problem particular...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Planning the path of an autonomous, agile vehicle in a dynamic environment is a very complex problem...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
We propose a sampling-based motion planning algorithm for systems with complex dynamics and temporal...
This paper considers the real-time motion planning problem for autonomous systems subject to complex...
We present a motion planner for the autonomous navigation of UAVs that manages motion and sensing un...
Navigating robotic systems autonomously through unknown, dynamic and GPS-denied environments is a ch...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
This paper describes a real-time motion planning algorithm, based on the rapidly-exploring random tr...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Abstract — We present a motion planning framework for autonomous on-road driving considering both th...
Path planning for an autonomous vehicle in a dynamic environment is a challenging problem particular...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Unmanned Aerial Vehicles (UAV) can navigate with low risk in obstacle-free environments using ground...
Planning the path of an autonomous, agile vehicle in a dynamic environment is a very complex problem...