In the last years, Robot Learning from Demonstration (RLfD) has become a major topic in robotics research. The main reason for this is that programming a robot can be a very difficult and time spending task. The RLfD paradigm has been applied to a great variety of robots, but it is still difficult to make the robot learn a task properly. Often the teacher is not an expert in the field, and viceversa an expert could not know well enough the robot to be a teacher. With this paper, we aimed at closing this gap by proposing a novel motion re-targeting technique to make a manipulator learn from natural demonstrations. A RLfD framework based on Gaussian Mixture Models (GMM) and Gaussian Mixture Regressions (GMR) was set to test the accuracy of th...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
We briefly surveyed the existing obstacle avoidance algorithms; then a new obstacle avoidance learni...
In the last years, Robot Learning from Demonstration (RLfD) has become a major topic in robotics r...
This paper presents a Robot Learning from Demonstration (RLfD) framework for teaching manipulation t...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
In recent years, significant technological advancement has determined the rising of collaborative ro...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
If a non-expert wants to program a robot manipulator he needs a natural interface that does not requ...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
Locally weighted as well as Gaussian mixtures learning algorithms are suitable strategies for trajec...
Learning from demonstration (LfD) is a practical method for transferring skill knowledge from a huma...
One of the main challenges in Robotics is to develop robots that can interact with humans in a natur...
Abstract This paper proposes an end-to-end learn-ing from demonstration framework for teaching force...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
We briefly surveyed the existing obstacle avoidance algorithms; then a new obstacle avoidance learni...
In the last years, Robot Learning from Demonstration (RLfD) has become a major topic in robotics r...
This paper presents a Robot Learning from Demonstration (RLfD) framework for teaching manipulation t...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
In recent years, significant technological advancement has determined the rising of collaborative ro...
In the last decades robots are expected to be of increasing intelligence to deal with a large range ...
If a non-expert wants to program a robot manipulator he needs a natural interface that does not requ...
Learning from demonstration (LfD) enables a robot to emulate natural human movement instead of merel...
Locally weighted as well as Gaussian mixtures learning algorithms are suitable strategies for trajec...
Learning from demonstration (LfD) is a practical method for transferring skill knowledge from a huma...
One of the main challenges in Robotics is to develop robots that can interact with humans in a natur...
Abstract This paper proposes an end-to-end learn-ing from demonstration framework for teaching force...
Human-robot synergy enables new developments in industrial and assistive robotics research. In recen...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
We briefly surveyed the existing obstacle avoidance algorithms; then a new obstacle avoidance learni...