In manipulation tasks, motion trajectories are characterized by a set of key phases (i.e., motion primitives). It is therefore important to learn the motion primitives embedded in such tasks from a complete demonstration. In this paper, we propose a core framework that autonomously segments motion trajectories to support the learning of motion primitives. For this purpose, a set of segmentation points is estimated using a Gaussian Mixture Model (GMM) learned after investigating the dimensional subspaces reduced by Principal Component Analysis. The segmentation points can be acquired by two alternative approaches: (1) using a geometrical interpretation of the Gaussians obtained from the learned GMM, and (2) using the weights estimated along ...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
In this paper, we propose a novel technique for model-based recognition of complex object motion tra...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
To model manipulation tasks, we propose a novel method for learning manipulation skills based on the...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
In this paper, a motion segmentation algorithm design is presented with the goal of segmenting a lea...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
In this work we present a probabilistic approach to find motion patterns in manipulative...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
In manipulation tasks, skills are usually modeled using the continuous motion trajectories acquired ...
This paper explores Shape from Motion Decomposition as a learning tool for autonomous agents. Shape ...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
In this paper, we propose a novel technique for model-based recognition of complex object motion tra...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
Manipulation tasks are characterized by continuous motion trajectories containing a set of key phase...
Transferring skills to robots by demonstrations has been extensively researched for decades. However...
To model manipulation tasks, we propose a novel method for learning manipulation skills based on the...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
In this paper, a motion segmentation algorithm design is presented with the goal of segmenting a lea...
We present a Programming by Demonstration (PbD) framework for generically extracting the relevant fe...
In this work we present a probabilistic approach to find motion patterns in manipulative...
This paper describes the trajectory learning component of a programming by demonstration (PbD) syste...
In manipulation tasks, skills are usually modeled using the continuous motion trajectories acquired ...
This paper explores Shape from Motion Decomposition as a learning tool for autonomous agents. Shape ...
© 20xx IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Steffen JF, Pardowitz M, Ritter H. Using Structured UKR Manifolds for Motion Classification and Segm...
In this paper, we propose a novel technique for model-based recognition of complex object motion tra...
Humans have a remarkable way of learning, adapting and mastering new manipulation tasks. With the cu...