The inverse dynamics problem for a robotic manipulator is to compute the torques needed at the joints to drive it along a given trajectory; it is beneficial to be able to learn this function for adaptive control. A robotic manipulator will often need to be controlled while holding different loads in its end effector, giving rise to a multi-task learning problem. By placing independent Gaussian process priors over the latent functions of the inverse dynamics, we obtain a multi-task Gaussian process prior for handling multiple loads, where the inter-task similarity depends on the underlying inertial parameters. Experiments demonstrate that this multi-task formulation is effective in sharing information among the various loads, and gen...
An efficient, adaptive neural learning paradigm for addressing the inverse kinematics of redundant m...
Robotics systems are now increasingly widespread in our day-life. For instance, robots have been suc...
The context of this work is the emergence of service Robotics, where robots will need adaptive capab...
Multi-task learning refers to learning multiple tasks simultaneously, in order to avoid tabula rasa ...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
Abstract — This paper introduces a new approach to adap-tively learn the dynamics of a robotic syste...
The inverse dynamics of a robotic manipulator is instrumental in precise robot control and manipulat...
This paper contributes a novel framework to efficiently learn cost-to-go function representations fo...
A challenging topic in articulated robots is the control of redundantly many degrees of freedom with...
While it is well-known that model can enhance the control performance in terms of precision or energ...
Institute of Perception, Action and BehaviourHigh fidelity, compliant robot control requires a suffi...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
In this work, we propose a novel method for rectifying damaged motion sequences in an unsupervised m...
An efficient, adaptive neural learning paradigm for addressing the inverse kinematics of redundant m...
Robotics systems are now increasingly widespread in our day-life. For instance, robots have been suc...
The context of this work is the emergence of service Robotics, where robots will need adaptive capab...
Multi-task learning refers to learning multiple tasks simultaneously, in order to avoid tabula rasa ...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
Abstract — This paper introduces a new approach to adap-tively learn the dynamics of a robotic syste...
The inverse dynamics of a robotic manipulator is instrumental in precise robot control and manipulat...
This paper contributes a novel framework to efficiently learn cost-to-go function representations fo...
A challenging topic in articulated robots is the control of redundantly many degrees of freedom with...
While it is well-known that model can enhance the control performance in terms of precision or energ...
Institute of Perception, Action and BehaviourHigh fidelity, compliant robot control requires a suffi...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
In this work, we propose a novel method for rectifying damaged motion sequences in an unsupervised m...
An efficient, adaptive neural learning paradigm for addressing the inverse kinematics of redundant m...
Robotics systems are now increasingly widespread in our day-life. For instance, robots have been suc...
The context of this work is the emergence of service Robotics, where robots will need adaptive capab...