Model-based reinforcement learning (MBRL) has been used to efficiently solve vision-based control tasks in high-dimensional image observations. Although recent MBRL algorithms perform well in trained observations, they fail when faced with visual distractions in observations. These task-irrelevant distractions (e.g., clouds, shadows, and light) may be constantly present in real-world scenarios. In this study, we propose a novel self-supervised method, Dream to Generalize (Dr. G), for zero-shot MBRL. Dr. G trains its encoder and world model with dual contrastive learning which efficiently captures task-relevant features among multi-view data augmentations. We also introduce a recurrent state inverse dynamics model that helps the world model ...
In this paper we present a general, flexible framework for learning mappings from images to actions ...
People learn skills by interacting with their surroundings from the time of their birth. Reinforceme...
Recent work has shown that representation learning plays a critical role in sample-efficient reinfor...
Recent unsupervised pre-training methods have shown to be effective on language and vision domains b...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
In an attempt to overcome the limitations of reward-driven representation learning in vision-based r...
Visual model-based RL methods typically encode image observations into low-dimensional representatio...
For deep reinforcement learning (RL) from pixels, learning effective state representations is crucia...
World models learn the consequences of actions in vision-based interactive systems. However, in prac...
The development of reinforcement learning attracts more and more attention among researchers. Levera...
International audienceEnd-to-end reinforcement learning on images showed significant performance pro...
How to accurately learn task-relevant state representations from high-dimensional observations with ...
Training an agent to solve control tasks directly from high-dimensional images with model-free reinf...
There has recently been significant interest in training reinforcement learning (RL) agents in visio...
In this paper we present a general, flexible framework for learning mappings from images to actions ...
People learn skills by interacting with their surroundings from the time of their birth. Reinforceme...
Recent work has shown that representation learning plays a critical role in sample-efficient reinfor...
Recent unsupervised pre-training methods have shown to be effective on language and vision domains b...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
We discuss vision as a sensory modality for systems that interact flexibly with uncontrolled environ...
In an attempt to overcome the limitations of reward-driven representation learning in vision-based r...
Visual model-based RL methods typically encode image observations into low-dimensional representatio...
For deep reinforcement learning (RL) from pixels, learning effective state representations is crucia...
World models learn the consequences of actions in vision-based interactive systems. However, in prac...
The development of reinforcement learning attracts more and more attention among researchers. Levera...
International audienceEnd-to-end reinforcement learning on images showed significant performance pro...
How to accurately learn task-relevant state representations from high-dimensional observations with ...
Training an agent to solve control tasks directly from high-dimensional images with model-free reinf...
There has recently been significant interest in training reinforcement learning (RL) agents in visio...
In this paper we present a general, flexible framework for learning mappings from images to actions ...
People learn skills by interacting with their surroundings from the time of their birth. Reinforceme...
Recent work has shown that representation learning plays a critical role in sample-efficient reinfor...