Challenging tasks in unstructured environments require robots to learn complex models. Given a large amount of information, learning multiple simple models can offer an efficient alternative to a monolithic complex network. Training multiple models-that is, learning their parameters and their responsibilities-has been shown to be prohibitively hard as optimization is prone to local minima. To efficiently learn multiple models for different contexts, we thus develop a new algorithm based on expectation maximization (EM). In contrast to comparable concepts, this algorithm trains multiple modules of paired forward-inverse models by using the prediction errors of both forward and inverse models simultaneously. In particular, we show that our me...
This paper contributes a novel framework to efficiently learn cost-to-go function representations fo...
Abstract—We present a novel approach to learn and combine multiple input to output mappings. Our sys...
Reinhart F, Steil JJ. Hybrid Mechanical and Data-driven Modeling Improves Inverse Kinematic Control ...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
For stationary systems, efficient techniques for adaptive motor control exist which learn the syste...
Humans demonstrate a remarkable ability to generate accurate and appropriate motor behavior under ma...
Internal models play a key role in cognitive agents by providing on the one hand predictions of sens...
Advancements in robotics have the potential to aid humans in many realms of exploration as well as d...
Estimating accurate forward and inverse dynamics models is a crucial component of model-based contro...
Robots can learn new skills by autonomously acquiring internal models that can be used for action pl...
Forward models play a key role in cognitive agents by providing predictions of the sensory consequen...
In this letter, we investigate learning forward dynamics models and multi-step prediction of state v...
{Performing task-space tracking control on redundant robot manipulators is a difficult problem. When...
Learning inverse kinematics of robots with redundant degrees of freedom (DoF) is a difficult problem...
This paper contributes a novel framework to efficiently learn cost-to-go function representations fo...
Abstract—We present a novel approach to learn and combine multiple input to output mappings. Our sys...
Reinhart F, Steil JJ. Hybrid Mechanical and Data-driven Modeling Improves Inverse Kinematic Control ...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
Challenging tasks in unstructured environments require robots to learn complex models. Given a large...
For stationary systems, efficient techniques for adaptive motor control exist which learn the syste...
Humans demonstrate a remarkable ability to generate accurate and appropriate motor behavior under ma...
Internal models play a key role in cognitive agents by providing on the one hand predictions of sens...
Advancements in robotics have the potential to aid humans in many realms of exploration as well as d...
Estimating accurate forward and inverse dynamics models is a crucial component of model-based contro...
Robots can learn new skills by autonomously acquiring internal models that can be used for action pl...
Forward models play a key role in cognitive agents by providing predictions of the sensory consequen...
In this letter, we investigate learning forward dynamics models and multi-step prediction of state v...
{Performing task-space tracking control on redundant robot manipulators is a difficult problem. When...
Learning inverse kinematics of robots with redundant degrees of freedom (DoF) is a difficult problem...
This paper contributes a novel framework to efficiently learn cost-to-go function representations fo...
Abstract—We present a novel approach to learn and combine multiple input to output mappings. Our sys...
Reinhart F, Steil JJ. Hybrid Mechanical and Data-driven Modeling Improves Inverse Kinematic Control ...