This paper is intended to solve the motor skills learning, representation and generalization problems in robot imitation learning. To this end, we present an Adapted Curvilinear Gaussian Mixture Model (AdC-GMM), which is a general extension of the GMM. The proposed model can encode data more compactly. More critically, it is inherently suitable for representing data with strong non-linearity. To infer the parameters of this model, a Cross Entropy Optimization (CEO) algorithm is proposed, where the cross entropy loss of the training data is minimized. Compared with the traditional Expectation Maximization (EM) algorithm, the CEO can automatically infer the optimal number of components. Finally, the generalized trajectories are retrieved by a...
In this study, the authors present an enhanced generalised teaching by demonstration technique for a...
The present research envisages a method for the robotic grasping based on the improved Gaussian mixt...
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing...
This paper is intended to solve the motor skills learning, representation and generalization problem...
The final publication is available at link.springer.comProgramming by demonstration techniques facil...
To model manipulation tasks, we propose a novel method for learning manipulation skills based on the...
Programming by demonstration techniques facilitate the programming of robots. Some of them allow the...
Representing robot skills as movement primitives (MPs) that can be learned from human demonstration ...
Abstract—Gaussian Mixture Regression has been shown to be a powerful and easy-to-tune regression tec...
In this paper we discuss the use of the infinite Gaussian mixture model and Dirichlet processes for ...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
In manipulation tasks, skills are usually modeled using the continuous motion trajectories acquired ...
Although motor primitives (MPs) have been studied extensively, much less attention has been devoted ...
Kim S, Haschke R, Ritter H. Gaussian Mixture Model for 3-DoF orientations. ROBOTICS AND AUTONOMOUS S...
In recent years, significant technological advancement has determined the rising of collaborative ro...
In this study, the authors present an enhanced generalised teaching by demonstration technique for a...
The present research envisages a method for the robotic grasping based on the improved Gaussian mixt...
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing...
This paper is intended to solve the motor skills learning, representation and generalization problem...
The final publication is available at link.springer.comProgramming by demonstration techniques facil...
To model manipulation tasks, we propose a novel method for learning manipulation skills based on the...
Programming by demonstration techniques facilitate the programming of robots. Some of them allow the...
Representing robot skills as movement primitives (MPs) that can be learned from human demonstration ...
Abstract—Gaussian Mixture Regression has been shown to be a powerful and easy-to-tune regression tec...
In this paper we discuss the use of the infinite Gaussian mixture model and Dirichlet processes for ...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
In manipulation tasks, skills are usually modeled using the continuous motion trajectories acquired ...
Although motor primitives (MPs) have been studied extensively, much less attention has been devoted ...
Kim S, Haschke R, Ritter H. Gaussian Mixture Model for 3-DoF orientations. ROBOTICS AND AUTONOMOUS S...
In recent years, significant technological advancement has determined the rising of collaborative ro...
In this study, the authors present an enhanced generalised teaching by demonstration technique for a...
The present research envisages a method for the robotic grasping based on the improved Gaussian mixt...
Task-parameterized skill learning aims at adaptive motion encoding to new situations. While existing...