Abstract—State representations critically affect the effective-ness of learning in robots. In this paper, we propose a robotics-specific approach to learning such state representations. Robots accomplish tasks by interacting with the physical world. Physics in turn imposes structure on both the changes in the world and on the way robots can effect these changes. Using prior knowledge about interacting with the physical world, robots can learn state representations that are consistent with physics. We identify five robotic priors and explain how they can be used for representation learning. We demonstrate the effectiveness of this approach in a simulated slot car racing task and a simulated navigation task with distracting moving objects. We...
Github repo: https://github.com/araffin/srl-zoo Documentation: https://srl-zoo.readthedocs.io/en/lat...
International audienceOur understanding of the world depends highly on our capacity to produce intui...
We propose to learn tasks directly from visual demonstrations by learning to predict the outcome of ...
Abstract Robot learning is critically enabled by the avail-ability of appropriate state representati...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
We introduce Recurrent State Representation Learning (RSRL) to tackle the problem of state represent...
International audienceRepresentation learning algorithms are designed to learn abstract features tha...
Representation learning is a central topic in the field of deep learning. It aims at extracting usef...
ICRA 2018 submissionOur understanding of the world depends highly on our capacity to produce intuiti...
Abstract: This paper focuses on two issues on learning and development; a problem of state-action sp...
Reinforcement Learning has been able to solve many complicated robotics tasks without any need for f...
With recent research advances, the dream of bringing domestic robots into our everyday lives has bec...
Robust and generalizable robots that can autonomously manipulate objects in semi-structured environm...
Advancements in robotics and artificial intelligence have paved the way for autonomous agents to per...
One of the key challenges in using reinforcement learning in robotics is the need for models that ca...
Github repo: https://github.com/araffin/srl-zoo Documentation: https://srl-zoo.readthedocs.io/en/lat...
International audienceOur understanding of the world depends highly on our capacity to produce intui...
We propose to learn tasks directly from visual demonstrations by learning to predict the outcome of ...
Abstract Robot learning is critically enabled by the avail-ability of appropriate state representati...
Reinforcement learning algorithms have proven to be capable of solving complicated robotics tasks in...
We introduce Recurrent State Representation Learning (RSRL) to tackle the problem of state represent...
International audienceRepresentation learning algorithms are designed to learn abstract features tha...
Representation learning is a central topic in the field of deep learning. It aims at extracting usef...
ICRA 2018 submissionOur understanding of the world depends highly on our capacity to produce intuiti...
Abstract: This paper focuses on two issues on learning and development; a problem of state-action sp...
Reinforcement Learning has been able to solve many complicated robotics tasks without any need for f...
With recent research advances, the dream of bringing domestic robots into our everyday lives has bec...
Robust and generalizable robots that can autonomously manipulate objects in semi-structured environm...
Advancements in robotics and artificial intelligence have paved the way for autonomous agents to per...
One of the key challenges in using reinforcement learning in robotics is the need for models that ca...
Github repo: https://github.com/araffin/srl-zoo Documentation: https://srl-zoo.readthedocs.io/en/lat...
International audienceOur understanding of the world depends highly on our capacity to produce intui...
We propose to learn tasks directly from visual demonstrations by learning to predict the outcome of ...