Interactive imitation learning refers to learning methods where a human teacher interacts with an agent during the learning process providing feedback to improve its behaviour. This type of learning may be preferable with respect to reinforcement learning techniques when dealing with real-world problems. This fact is especially true in the case of robotic applications where reinforcement learning may be unfeasible as there are long training times and reward functions can be hard to shape/compute.The present thesis focuses on interactive learning with corrective feedback and, in particular, in the framework Deep Corrective Advice Communicated by Humans (D-COACH), which has successfully shown to be advantageous in terms of training time and d...
Deep Reinforcement Learning enables us to control increasingly complex and high-dimensional problems...
Despite recent advances in video-guided robotic imitation learning, many methods still rely on human...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...
Deep Reinforcement Learning (DRL) has become a powerful strategy to solve complex decision making pr...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Robots are extending their presence in domestic environments every day, it being more common to see ...
As an alternative to explicit programming for robots, Deep Imitation learning has two drawbacks: sam...
Some imitation learning approaches rely on Inverse Reinforcement Learning (IRL) methods, to decode a...
Imitation learning is a field that is rapidly gaining attention due to its relevance to many autonom...
As robots and other autonomous agents enter our homes, hospitals, schools, and workplaces, it is imp...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Imitation learning refers to an agent's ability to mimic a desired behaviour by learning from observ...
The introduction of the generative adversarial imitation learning (GAIL) algorithm has spurred the d...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
Deep Reinforcement Learning enables us to control increasingly complex and high-dimensional problems...
Despite recent advances in video-guided robotic imitation learning, many methods still rely on human...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...
Deep Reinforcement Learning (DRL) has become a powerful strategy to solve complex decision making pr...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Deep Reinforcement Learning (DRL) has become a powerful methodology to solve complex decision-making...
Robots are extending their presence in domestic environments every day, it being more common to see ...
As an alternative to explicit programming for robots, Deep Imitation learning has two drawbacks: sam...
Some imitation learning approaches rely on Inverse Reinforcement Learning (IRL) methods, to decode a...
Imitation learning is a field that is rapidly gaining attention due to its relevance to many autonom...
As robots and other autonomous agents enter our homes, hospitals, schools, and workplaces, it is imp...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Imitation learning refers to an agent's ability to mimic a desired behaviour by learning from observ...
The introduction of the generative adversarial imitation learning (GAIL) algorithm has spurred the d...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
Deep Reinforcement Learning enables us to control increasingly complex and high-dimensional problems...
Despite recent advances in video-guided robotic imitation learning, many methods still rely on human...
The past five years have seen rapid proliferation of work on deep learning: learning algorithms that...