While it is well-known that model can enhance the control performance in terms of precision or energy efficiency, the practical application has often been limited by the complexities of manually obtaining sufficiently accurate models. In the past, learning has proven a viable alternative to using a combination of rigid-body dynamics and handcrafted approximations of nonlinearities. However, a major open question is what nonparametric learning method is suited best for learning dynamics? Traditionally, locally weighted projection regression (LWPR), has been the standard method as it is capable of online, real-time learning for very complex robots. However, while LWPR has had significant impact on learning in robotics, alternative nonparametr...
Abstract: We introduce a new algorithm, Locally Weighted Projection Regression (LWPR), for increment...
While recent research in neural networks and statistical learning has focused mostly on learning fro...
Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead...
While it is well-known that model can enhance the control performance in terms of precision or energ...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
5 Conclusions This paper illustrated an application of Locally Weighted Projection Regression to a c...
Humanoid robots are high-dimensional movement systems for which analytical system identification and...
For many applications such as compliant, accurate robot tracking control, dynamics models learned fr...
The increasing complexity of modern robots makes it prohibitively hard to accurately model such syst...
Abstract: We introduce a new algorithm, Locally Weighted Projection Regression (LWPR), for increment...
While recent research in neural networks and statistical learning has focused mostly on learning fro...
Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead...
While it is well-known that model can enhance the control performance in terms of precision or energ...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Computed torque control allows the design of considerably more precise, energy-efficient and complia...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Model-based control strategies for robot manipulators can present numerous performance advantages wh...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
5 Conclusions This paper illustrated an application of Locally Weighted Projection Regression to a c...
Humanoid robots are high-dimensional movement systems for which analytical system identification and...
For many applications such as compliant, accurate robot tracking control, dynamics models learned fr...
The increasing complexity of modern robots makes it prohibitively hard to accurately model such syst...
Abstract: We introduce a new algorithm, Locally Weighted Projection Regression (LWPR), for increment...
While recent research in neural networks and statistical learning has focused mostly on learning fro...
Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead...