Learning in real-time applications, e.g., online approximation of the inverse dynamics model for model-based robot control, requires fast online regression techniques. Inspired by local learning, we propose a method to speed up standard Gaussian Process regression (GPR) with local GP models (LGP). The training data is partitioned in local regions, for each an individual GP model is trained. The prediction for a query point is performed by weighted estimation using nearby local models. Unlike other GP approximations, such as mixtures of experts, we use a distance based measure for partitioning of the data and weighted prediction. The proposed method achieves online learning and prediction in real-time. Comparisons with other nonparametric re...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
A significant problem of Gaussian process (GP) is its unfavorable scaling with a large amount of dat...
Machine learning methods have been explored more recently for robotic control, though learning the i...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Learning in real-time applications, e.g., online approximation of the inverse dy-namics model for mo...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
A significant problem of Gaussian process (GP) is its unfavorable scaling with a large amount of dat...
Machine learning methods have been explored more recently for robotic control, though learning the i...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Learning in real-time applications, e.g., online approximation of the inverse dy-namics model for mo...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
For many applications in robotics, accurate dynamics models are essential. However, in some applicat...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
High performance and compliant robot control require accurate dynamics models which cannot be obtain...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Precise models of robot inverse dynamics allow the design of significantly more accurate, energy-eff...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
Accurate models of the robot dynamics allow the design of significantly more precise, energy-efficie...
A significant problem of Gaussian process (GP) is its unfavorable scaling with a large amount of dat...
Machine learning methods have been explored more recently for robotic control, though learning the i...