Manipulation tasks are characterized by continuous motion trajectories containing a set of key phases. In this paper, we propose a probabilistic method to autonomously segment the motion trajectories for estimating the key phases embedded in such a task. The autonomous segmentation process relies on principal component analysis to adaptively project into one of the low-dimensional subspaces, in which a Gaussian mixture model is learned based on Bayesian information criterion and expectation-maximization algorithms. The basis skills are estimated by a set of Gaussians approximating quasi-linear key phases, and those times spent calculated from the segmentation points between two consecutive Gaussians representing the local changes of dynamic...
This paper presents a new framework to synthesize humanoid behavior by learning and imitating the be...
This paper proposes a sliding window approach, whose length and time shift are dynamically adaptable...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
In manipulation tasks, motion trajectories are characterized by a set of key phases (i.e., motion pr...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
Abstract-Learning by imitation in humanoids is challeng ing due to the unpredictable environments th...
Abstract—Recent advances in the field of humanoid robotics increase the complexity of the tasks that...
In this paper a system was developed for robot behavior acquisition using kinesthetic demonstrations...
Motor primitives or motion templates have become an important concept for both modeling human motor ...
Abstract — Movement primitives are a well established ap-proach for encoding and executing robot mov...
Abstract. We present a new method for representing human movement compactly, in terms of a linear su...
In this work we present a probabilistic approach to find motion patterns in manipulative...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
This paper presents a new framework to synthesize humanoid behavior by learning and imitating the be...
This paper proposes a sliding window approach, whose length and time shift are dynamically adaptable...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
In manipulation tasks, motion trajectories are characterized by a set of key phases (i.e., motion pr...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
Abstract-Learning by imitation in humanoids is challeng ing due to the unpredictable environments th...
Abstract—Recent advances in the field of humanoid robotics increase the complexity of the tasks that...
In this paper a system was developed for robot behavior acquisition using kinesthetic demonstrations...
Motor primitives or motion templates have become an important concept for both modeling human motor ...
Abstract — Movement primitives are a well established ap-proach for encoding and executing robot mov...
Abstract. We present a new method for representing human movement compactly, in terms of a linear su...
In this work we present a probabilistic approach to find motion patterns in manipulative...
AbstractThis paper demonstrates application of Reinforcement Learning to optimization of control of ...
This paper presents a new framework to synthesize humanoid behavior by learning and imitating the be...
This paper proposes a sliding window approach, whose length and time shift are dynamically adaptable...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...