Imitation learning (IL) enables robots to acquire skills quickly by transferring expert knowledge, which is widely adopted in reinforcement learning (RL) to initialize exploration. However, in long-horizon motion planning tasks, a challenging problem in deploying IL and RL methods is how to generate and collect massive, broadly distributed data such that these methods can generalize effectively. In this work, we solve this problem using our proposed approach called {self-imitation learning by planning (SILP)}, where demonstration data are collected automatically by planning on the visited states from the current policy. SILP is inspired by the observation that successfully visited states in the early reinforcement learning stage are collisi...
Robots had a great impact on the manufacturing industry ever since the early seventies when companie...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
RJCIA 2022National audienceDeep Reinforcement Learning methods require a large amount of data to ach...
Imitation learning (IL) enables robots to acquire skills quickly by transferring expert knowledge, w...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Efficient skill acquisition is crucial for creating versatile robots. One intuitive way to teach a r...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
Reinforcement Learning has achieved noticeable success in many fields, such as video game playing, c...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Behavior learning is a promising alternative to planning and control for behavior generation in robo...
In order to enable more widespread application of robots, we are required to reduce the human effort...
Abstract. Imitation learning is an effective strategy to reinforcement learning, which avoids the de...
We added extra experiments in simulation to evaluate the best-performing policy in environments with...
The design and implementation of behaviors for robots operating in dynamic and complex environments ...
Robots had a great impact on the manufacturing industry ever since the early seventies when companie...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
RJCIA 2022National audienceDeep Reinforcement Learning methods require a large amount of data to ach...
Imitation learning (IL) enables robots to acquire skills quickly by transferring expert knowledge, w...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Efficient skill acquisition is crucial for creating versatile robots. One intuitive way to teach a r...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
Reinforcement Learning has achieved noticeable success in many fields, such as video game playing, c...
In order for human-assisting robots to be deployed in the real world such as household environments,...
Behavior learning is a promising alternative to planning and control for behavior generation in robo...
In order to enable more widespread application of robots, we are required to reduce the human effort...
Abstract. Imitation learning is an effective strategy to reinforcement learning, which avoids the de...
We added extra experiments in simulation to evaluate the best-performing policy in environments with...
The design and implementation of behaviors for robots operating in dynamic and complex environments ...
Robots had a great impact on the manufacturing industry ever since the early seventies when companie...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
RJCIA 2022National audienceDeep Reinforcement Learning methods require a large amount of data to ach...