AbstractThis paper describes a reinforcement learning architecture that is capable of incorporating deeply learned feature representation of a robot's unknown working environment. An autoencoder is used along with convolutional and pooling layers to deduce the reduced feature representation based on a set of images taken by the agent. This representation is used to discover and learn the best route to navigate to a goal. The features are fed to an actor layer that can learn from a value function calculated by a second output layer. The policy is ɛ-greedy and the effect is similar to actor-critic architecture where temporal difference error is back propagated from the critic to the actor. This compact architecture helps in reducing the overh...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
International audienceAn important goal of research in Deep Reinforcement Learning in mobile robotic...
In recent years, machine learning (and as a result artificial intelligence) has experienced consider...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
The ability of robots to perform tasks in human environments has largely been limited to rather sim...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
In this work visual navigation task in realistic simulated environment is formulated and solved usin...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
This work addresses the problem of exploration and coverage using visual inputs. Exploration and cov...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
A major current challenge in reinforcement learning re-search is to extend methods that work well on...
Artificially intelligent agents with some degree of autonomy in the real world must learn to complet...
textMany important real-world robotic tasks have high diameter, that is, their solution requires a l...
Artificially intelligent agents with some degree of autonomy in the real world must learn to complet...
textMany important real-world robotic tasks have high diameter, that is, their solution requires a l...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
International audienceAn important goal of research in Deep Reinforcement Learning in mobile robotic...
In recent years, machine learning (and as a result artificial intelligence) has experienced consider...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
The ability of robots to perform tasks in human environments has largely been limited to rather sim...
It is extremely difficult to teach robots the skills that humans take for granted. Understanding the...
In this work visual navigation task in realistic simulated environment is formulated and solved usin...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
This work addresses the problem of exploration and coverage using visual inputs. Exploration and cov...
Visual navigation is essential for many applications in robotics, from manipulation, through mobile ...
A major current challenge in reinforcement learning re-search is to extend methods that work well on...
Artificially intelligent agents with some degree of autonomy in the real world must learn to complet...
textMany important real-world robotic tasks have high diameter, that is, their solution requires a l...
Artificially intelligent agents with some degree of autonomy in the real world must learn to complet...
textMany important real-world robotic tasks have high diameter, that is, their solution requires a l...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
International audienceAn important goal of research in Deep Reinforcement Learning in mobile robotic...
In recent years, machine learning (and as a result artificial intelligence) has experienced consider...