In recent years, learning models from data has become an increasingly interesting tool for robotics, as it allows straightforward and accurate model approximation. However, in most robot learning approaches, the model is learned from scratch disregarding all prior knowledge about the system. For many complex robot systems, available prior knowledge from advanced physics-based modeling techniques can entail valuable information for model learning that may result in faster learning speed, higher accuracy and better generalization. In this paper, we investigate how parametric physical models (e.g., obtained from rigid body dynamics) can be used to improve the learning performance, and, especially, how semiparametric regression methods can be a...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Traditionally, models for control and motion planning were derived from physical properties of the s...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
While it is well-known that model can enhance the control performance in terms of precision or energ...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
Nonparametric Gaussian regression models are powerful tools for supervised learning problems. Recent...
In smart cities and factories, robotic applications require high accuracy and security, which depend...
Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead...
Performing task-space tracking control on redundant robot manipulators is a difficult problem. When ...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Dataset used in the experimental section of the paper: R. Camoriano, S. Traversaro, L. Rosasco, G....
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Traditionally, models for control and motion planning were derived from physical properties of the s...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
While it is well-known that model can enhance the control performance in terms of precision or energ...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
This paper presents a novel approach for incremental semiparametric inverse dynamics learning. In pa...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
Nonparametric Gaussian regression models are powerful tools for supervised learning problems. Recent...
In smart cities and factories, robotic applications require high accuracy and security, which depend...
Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead...
Performing task-space tracking control on redundant robot manipulators is a difficult problem. When ...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Dataset used in the experimental section of the paper: R. Camoriano, S. Traversaro, L. Rosasco, G....
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Traditionally, models for control and motion planning were derived from physical properties of the s...