Data-efficient learning in continuous state-action spaces using very high-dimensional observations remains a key challenge in developing fully autonomous systems. In this paper, we consider one instance of this challenge, the pixels to torques problem, where an agent must learn a closed-loop control policy from pixel information only. We introduce a data-efficient, model-based reinforcement learning algorithm that learns such a closed-loop policy directly from pixel information. The key ingredient is a deep dynamical model that uses deep auto-encoders to learn a low-dimensional embedding of images jointly with a predictive model in this low-dimensional feature space. Joint learning ensures that not only static but also dynamic properties of...
In control, the objective is to find a mapping from states to actions that steer a system to a desir...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Modeling dynamical systems is important in many disciplines, such as control, robotics, or neurotech...
Data-efficient reinforcement learning (RL) in continuous state-action spaces using very high-dimensi...
Data-efficient learning in continuous state-action spaces using very high-dimensional observations r...
People learn skills by interacting with their surroundings from the time of their birth. Reinforceme...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Deep reinforcement learning has been successful in solving common autonomous driving tasks such as l...
Reinforcement learning (RL) is a general framework for learning and evaluating intelligent behaviors...
Methods like deep reinforcement learning (DRL) have gained increasing attention when solving very ge...
Learning to control robots without human supervision and prolonged engineering effort has been a lon...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
2019-03-13As robots enter our daily lives they will have to perform a high variety of complex tasks,...
Deep Neural Networks (DNNs) can be used as function approximators in Reinforcement Learning (RL). On...
Data-driven approaches to the design of control policies for robotic systems have the potential to r...
In control, the objective is to find a mapping from states to actions that steer a system to a desir...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Modeling dynamical systems is important in many disciplines, such as control, robotics, or neurotech...
Data-efficient reinforcement learning (RL) in continuous state-action spaces using very high-dimensi...
Data-efficient learning in continuous state-action spaces using very high-dimensional observations r...
People learn skills by interacting with their surroundings from the time of their birth. Reinforceme...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
Deep reinforcement learning has been successful in solving common autonomous driving tasks such as l...
Reinforcement learning (RL) is a general framework for learning and evaluating intelligent behaviors...
Methods like deep reinforcement learning (DRL) have gained increasing attention when solving very ge...
Learning to control robots without human supervision and prolonged engineering effort has been a lon...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
2019-03-13As robots enter our daily lives they will have to perform a high variety of complex tasks,...
Deep Neural Networks (DNNs) can be used as function approximators in Reinforcement Learning (RL). On...
Data-driven approaches to the design of control policies for robotic systems have the potential to r...
In control, the objective is to find a mapping from states to actions that steer a system to a desir...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Modeling dynamical systems is important in many disciplines, such as control, robotics, or neurotech...