Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners have been gaining interest for robotic manipulation in recent years. We present several new learning approaches using probabilistic generative models for fast sampling-based planning. First, we propose fast collision detection in high dimensional configuration spaces based on Gaussian Mixture Models (GMMs) for Rapidly-exploring Random Trees (RRT). In addition, we introduce a new probabilistically safe local steering primitive based on the probabilistic model. Our local steering procedure is based on a new notion of a convex probabilistically safety corridor that is constructed around a configuration using tangent hyperplanes of confidence ellips...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
The sampling-based motion planner is the mainstream method to solve the motion planning problem in h...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Motion planning deals with finding a collision-free trajectory for a robot from the current position...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
We present a new motion planning framework that explicitly considers uncertainty in robot motion to ...
We present a new motion planning framework that explicitly considers uncertainty in robot motion to ...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
The common theme of this dissertation is sampling-based motion planning with the two key contributio...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
Due to their simplicity and efficiency in high dimensional space, sampling-based motion planners hav...
The sampling-based motion planner is the mainstream method to solve the motion planning problem in h...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Motion planning deals with finding a collision-free trajectory for a robot from the current position...
Robotic systems are the workhorses in practically all automated applications. Manufacturing industri...
Robot motion planning is one of the central problems in robotics, and has received considerable amou...
We present a new motion planning framework that explicitly considers uncertainty in robot motion to ...
We present a new motion planning framework that explicitly considers uncertainty in robot motion to ...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
The common theme of this dissertation is sampling-based motion planning with the two key contributio...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...
Abstract — We present a new motion planning framework that explicitly considers uncertainty in robot...