Abstract—Learning motion tasks in a real environment with deformable objects requires not only a Reinforcement Learning (RL) algorithm, but also a good motion characterization, a preferably compliant robot controller, and an agent giving feedback for the rewards/costs in the RL algorithm. In this paper, we unify all these parts in a simple but effective way to properly learn safety-critical robotic tasks such as wrapping a scarf around the neck (so far, of a mannequin). We found that a suitable compliant controller ought to have a good Inverse Dynamic Model (IDM) of the robot. However, most approaches to build such a model do not consider the possibility of having hystheresis of the friction, which is the case for robots such as the Barrett...
This article discusses the control design and experiment validation of a flexible two-link manipulat...
An experimental comparison of two feed-forward based frictioncompensation methods is presented. The ...
The paper focuses on industrial interaction robotics tasks, investigating a control approach involvi...
Learning motion tasks in a real environment with deformable objects requires not only a Reinforcemen...
Trabajo presentado al ICRA celebrado en Seattle (US) del 26 al 30 de mayo de 2015.Learning motion ta...
Basa D, Schneider A. Learning point-to-point movements on an elastic limb using dynamic movement pri...
The paper describes an algorithm to compensate for the friction in the robot joints, while executing...
Robot Learning from Demonstration (RLfD) has been identified as a key element for making robots usef...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019Cat...
In many tasks controlling only the robot position is insufficient to achieve the goals of the task. ...
Robots are becoming safe and smart enough to work alongside people not only on manufacturing product...
As technology continues to evolve, robots are becoming an intrinsic part of our lives. While robots ...
Service robots have the potential to be of great value in households, health care and other labor in...
Abstract. The complexity in planning and control of robot compliance tasks mainly results from simul...
Purpose: The purpose of this paper is to propose a new joint friction model, which can accurately mo...
This article discusses the control design and experiment validation of a flexible two-link manipulat...
An experimental comparison of two feed-forward based frictioncompensation methods is presented. The ...
The paper focuses on industrial interaction robotics tasks, investigating a control approach involvi...
Learning motion tasks in a real environment with deformable objects requires not only a Reinforcemen...
Trabajo presentado al ICRA celebrado en Seattle (US) del 26 al 30 de mayo de 2015.Learning motion ta...
Basa D, Schneider A. Learning point-to-point movements on an elastic limb using dynamic movement pri...
The paper describes an algorithm to compensate for the friction in the robot joints, while executing...
Robot Learning from Demonstration (RLfD) has been identified as a key element for making robots usef...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2019Cat...
In many tasks controlling only the robot position is insufficient to achieve the goals of the task. ...
Robots are becoming safe and smart enough to work alongside people not only on manufacturing product...
As technology continues to evolve, robots are becoming an intrinsic part of our lives. While robots ...
Service robots have the potential to be of great value in households, health care and other labor in...
Abstract. The complexity in planning and control of robot compliance tasks mainly results from simul...
Purpose: The purpose of this paper is to propose a new joint friction model, which can accurately mo...
This article discusses the control design and experiment validation of a flexible two-link manipulat...
An experimental comparison of two feed-forward based frictioncompensation methods is presented. The ...
The paper focuses on industrial interaction robotics tasks, investigating a control approach involvi...