Dynamic Movement Primitives (DMPs) provide a means for parameterizing point-to-point motion. They have become very popular in robotic imitation and reinforcement learning due to their linearity in the parameters describing motion, their inherent complexity reduction, and the ability to scale both in space and time. However, if DMPs are used to describe a motion that has been demonstrated by humans, the encoded trajectory is typically far from being time-optimal. In this paper, we extend the DMP framework towards time (sub) optimal execution of the path encoded in a DMP, bridging one of the gaps between the DMP framework and industrial applications. Time-optimality is in fact a key goal for minimizing cycle times and thereby maximizing throu...
Dynamical movement primitives (DMPs) are one of the most popular representations for goal-directed m...
This paper presents a method for motion planning in dynamic environments, subject to robot dynamics ...
Scientists have been working on making robots act like human beings for decades. Therefore, how to i...
Dynamic Movement Primitives (DMPs) provide a means for parameterizing point-to-point motion. They ha...
This work is aimed at extending the standard dynamic movement primitives (DMP) framework to adapt to...
Abstract — Dynamic Movement Primitives (DMP) are nowa-days widely used as movement parametrization f...
Dynamic Movement Primitives (DMP) are nowadays widely used as movement parametrization for learning ...
Dynamic Motion Primitives (DMPs) only address the generalization problem for target positions that a...
This paper discusses a comprehensive framework for modular motor control based on a recently develop...
Variable stiffness robots have a distinct feature that makes them especially interesting to applicat...
We formalize the problem of adapting a demonstrated trajectory to a new start and goal configuration...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
The concept of dynamical movement primitives (DMPs) has become popular for modeling of motion, commo...
Dynamic Movement Primitives (DMPs) is a framework for learning a point-to-point trajectory from a de...
Time-optimal trajectories describe the minimum execution time motion along a given geometric path wh...
Dynamical movement primitives (DMPs) are one of the most popular representations for goal-directed m...
This paper presents a method for motion planning in dynamic environments, subject to robot dynamics ...
Scientists have been working on making robots act like human beings for decades. Therefore, how to i...
Dynamic Movement Primitives (DMPs) provide a means for parameterizing point-to-point motion. They ha...
This work is aimed at extending the standard dynamic movement primitives (DMP) framework to adapt to...
Abstract — Dynamic Movement Primitives (DMP) are nowa-days widely used as movement parametrization f...
Dynamic Movement Primitives (DMP) are nowadays widely used as movement parametrization for learning ...
Dynamic Motion Primitives (DMPs) only address the generalization problem for target positions that a...
This paper discusses a comprehensive framework for modular motor control based on a recently develop...
Variable stiffness robots have a distinct feature that makes them especially interesting to applicat...
We formalize the problem of adapting a demonstrated trajectory to a new start and goal configuration...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
The concept of dynamical movement primitives (DMPs) has become popular for modeling of motion, commo...
Dynamic Movement Primitives (DMPs) is a framework for learning a point-to-point trajectory from a de...
Time-optimal trajectories describe the minimum execution time motion along a given geometric path wh...
Dynamical movement primitives (DMPs) are one of the most popular representations for goal-directed m...
This paper presents a method for motion planning in dynamic environments, subject to robot dynamics ...
Scientists have been working on making robots act like human beings for decades. Therefore, how to i...