In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn complex and stable skills evolving on Riemannian manifolds. Examples of Riemannian data in robotics include stiffness (symmetric and positive definite matrix (SPD)) and orientation (unit quaternion (UQ)) trajectories. For Riemannian data, unlike Euclidean ones, different dimensions are interconnected by geometric constraints which have to be properly considered during the learning process. Using distance preserving mappings, our approach transfers the data between their original manifold and the tangent space, realizing the removing and re-fulfilling of the geometric constraints. This allows to extend existing frameworks to learn stable skills from...
Recently, manifold learning has been widely exploited in pattern recognition, data analysis, and mac...
Traditionally, models for control and motion planning were derived from physical properties of the s...
This thesis presents a Riemannian approach to Programming by Demonstration (PbD). It generalizes an ...
In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn comple...
In this paper, we propose an approach to learn stable dynamical systems evolving on Riemannian manif...
Humans exhibit outstanding learning and adaptation capabilities while performing various types of ma...
Dexterous and autonomous robots should be capable of executing elaborated dynamical motions skillful...
We propose a novel framework for motion planning and control that is based on a manifold encoding o...
224 pagesAlthough machine learning researchers have introduced a plethora of useful constructions fo...
Riemannian geometry is a mathematical field which has been the cornerstone of revolutionary scientif...
abstract: The data explosion in the past decade is in part due to the widespread use of rich sensors...
We take up on recent work on the Riemannian geometry of generative networks to propose a new approac...
In the last years, realistic applications have brought robots to complex environments such as museum...
Imitation Learning (IL) is a powerful technique for intuitive robotic programming. However, ensuring...
In many robot control problems, factors such as stiffness and damping matrices and manipulability el...
Recently, manifold learning has been widely exploited in pattern recognition, data analysis, and mac...
Traditionally, models for control and motion planning were derived from physical properties of the s...
This thesis presents a Riemannian approach to Programming by Demonstration (PbD). It generalizes an ...
In this paper, we propose RiemannianFlow, a deep generative model that allows robots to learn comple...
In this paper, we propose an approach to learn stable dynamical systems evolving on Riemannian manif...
Humans exhibit outstanding learning and adaptation capabilities while performing various types of ma...
Dexterous and autonomous robots should be capable of executing elaborated dynamical motions skillful...
We propose a novel framework for motion planning and control that is based on a manifold encoding o...
224 pagesAlthough machine learning researchers have introduced a plethora of useful constructions fo...
Riemannian geometry is a mathematical field which has been the cornerstone of revolutionary scientif...
abstract: The data explosion in the past decade is in part due to the widespread use of rich sensors...
We take up on recent work on the Riemannian geometry of generative networks to propose a new approac...
In the last years, realistic applications have brought robots to complex environments such as museum...
Imitation Learning (IL) is a powerful technique for intuitive robotic programming. However, ensuring...
In many robot control problems, factors such as stiffness and damping matrices and manipulability el...
Recently, manifold learning has been widely exploited in pattern recognition, data analysis, and mac...
Traditionally, models for control and motion planning were derived from physical properties of the s...
This thesis presents a Riemannian approach to Programming by Demonstration (PbD). It generalizes an ...