Programming by demonstration techniques facilitate the programming of robots. Some of them allow the generalization of tasks through parameters, although they require new training when trajectories different from the ones used to estimate the model need to be added. One of the ways to re-train a robot is by incremental learning, which supplies additional information of the task and does not require teaching the whole task again. The present study proposes three techniques to add trajectories to a previously estimated task-parameterized Gaussian mixture model. The first technique estimates a new model by accumulating the new trajectory and the set of trajectories generated using the previous model. The second technique permits adding to the ...
In learning from demonstrations, it is often desirable to adapt the behavior of the robot as a funct...
International audienceGaussian Mixture Regression has been shown to be a powerful and easy-to-tune r...
In this paper, a technique that reduces the changeover time in industrial workstations is presented....
The final publication is available at link.springer.comProgramming by demonstration techniques facil...
This paper is intended to solve the motor skills learning, representation and generalization problem...
Abstract—Gaussian Mixture Regression has been shown to be a powerful and easy-to-tune regression tec...
The present research envisages a method for the robotic grasping based on the improved Gaussian mixt...
In this paper a system was developed for robot behavior acquisition using kinesthetic demonstrations...
In this paper we discuss the use of the infinite Gaussian mixture model and Dirichlet processes for ...
Programming by demonstration has recently gained much attention due to its user-friendly and natural...
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing...
Representing robot skills as movement primitives (MPs) that can be learned from human demonstration ...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Learning from demonstrations with Probabilistic Movement Primitives (ProMPs) has been widely used in...
In learning from demonstrations, it is often desirable to adapt the behavior of the robot as a funct...
International audienceGaussian Mixture Regression has been shown to be a powerful and easy-to-tune r...
In this paper, a technique that reduces the changeover time in industrial workstations is presented....
The final publication is available at link.springer.comProgramming by demonstration techniques facil...
This paper is intended to solve the motor skills learning, representation and generalization problem...
Abstract—Gaussian Mixture Regression has been shown to be a powerful and easy-to-tune regression tec...
The present research envisages a method for the robotic grasping based on the improved Gaussian mixt...
In this paper a system was developed for robot behavior acquisition using kinesthetic demonstrations...
In this paper we discuss the use of the infinite Gaussian mixture model and Dirichlet processes for ...
Programming by demonstration has recently gained much attention due to its user-friendly and natural...
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing...
Representing robot skills as movement primitives (MPs) that can be learned from human demonstration ...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Learning from demonstrations with Probabilistic Movement Primitives (ProMPs) has been widely used in...
In learning from demonstrations, it is often desirable to adapt the behavior of the robot as a funct...
International audienceGaussian Mixture Regression has been shown to be a powerful and easy-to-tune r...
In this paper, a technique that reduces the changeover time in industrial workstations is presented....