We present a system for robust robot skill acquisition from kinesthetic demonstrations. This system allows a robot to learn a simple goal-directed gesture, and correctly reproduce it despite changes in the initial conditions, and perturbations in the environment. It combines a dynamical system control approach with tools of statistical learning theory and provides a solution to the inverse kinematics problem, when dealing with a redundant manipulator. The system is validated on two experiments involving a humanoid robot: putting an object into a box, and reaching for and grasping an object
Malekzadeh M, Queißer J, Steil JJ. Imitation learning for a continuum trunk robot. In: Verleysen M, ...
If a non-expert wants to program a robot manipulator he needs a natural interface that does not requ...
Malekzadeh M, Queißer J, Steil JJ. Learning the end-effector pose from demonstration for the Bionic ...
We present a system for robust robot skill acquisition from kinesthetic demonstrations. This system ...
Abstract In this paper we combine kinesthetic demonstra-tions and dynamical systems to enable a hum...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
Robot Programming by Demonstration (RbD) covers methods by which a robot learns new skills through h...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
A system for learning and executing gestures in a humanoid robot has been developed and implemented ...
Humans exploit dynamics—gravity, inertia, joint coupling, elasticity, and so on—as a regular part of...
Learning skills from kinesthetic demonstrations is a promising way of minimizing the gap between hum...
This work presents a probabilistic model for learning robot tasks from human demonstrations using ki...
Malekzadeh M, Queißer J, Steil JJ. Imitation learning for a continuum trunk robot. In: Verleysen M, ...
If a non-expert wants to program a robot manipulator he needs a natural interface that does not requ...
Malekzadeh M, Queißer J, Steil JJ. Learning the end-effector pose from demonstration for the Bionic ...
We present a system for robust robot skill acquisition from kinesthetic demonstrations. This system ...
Abstract In this paper we combine kinesthetic demonstra-tions and dynamical systems to enable a hum...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
Robot Programming by Demonstration (RbD) covers methods by which a robot learns new skills through h...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
A system for learning and executing gestures in a humanoid robot has been developed and implemented ...
Humans exploit dynamics—gravity, inertia, joint coupling, elasticity, and so on—as a regular part of...
Learning skills from kinesthetic demonstrations is a promising way of minimizing the gap between hum...
This work presents a probabilistic model for learning robot tasks from human demonstrations using ki...
Malekzadeh M, Queißer J, Steil JJ. Imitation learning for a continuum trunk robot. In: Verleysen M, ...
If a non-expert wants to program a robot manipulator he needs a natural interface that does not requ...
Malekzadeh M, Queißer J, Steil JJ. Learning the end-effector pose from demonstration for the Bionic ...