Abstract—Humans are very fast learners. Yet, we rarely learn a task completely from scratch. Instead, we usually start with a rough approximation of the desired behavior and take the learning from there. In this paper, we use imitation to quickly generate a rough solution to a robotic task from demonstrations, supplied as a collection of state-space trajectories. Appropriate control actions needed to steer the system along the trajectories are then automatically learned in the form of a (nonlinear) state-feedback control law. The learning scheme has two components: a dynamic reference model and an adaptive inverse process model, both based on a data-driven, non-parametric method called local linear regression. The reference model infers the...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Learning by imitation represents an important mechanism for rapid acquisition of new behaviors in hu...
Efficient skill acquisition is crucial for creating versatile robots. One intuitive way to teach a r...
Humans and other animals have a natural ability to learn skills from observation, often simply from ...
Unstructured environments impose several challenges when robots are required to perform different ta...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
In order to enable more widespread application of robots, we are required to reduce the human effort...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
In order to enable more widespread application of robots, we are required to reduce the human effort...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Generalizing manipulation skills to new situations requires extracting invariant patterns from demon...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Learning by imitation represents an important mechanism for rapid acquisition of new behaviors in hu...
Efficient skill acquisition is crucial for creating versatile robots. One intuitive way to teach a r...
Humans and other animals have a natural ability to learn skills from observation, often simply from ...
Unstructured environments impose several challenges when robots are required to perform different ta...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
In industrial environments robots are used for various tasks. At this moment it is not feasible for ...
In order to enable more widespread application of robots, we are required to reduce the human effort...
International audienceWhen cast into the Deep Reinforcement Learning framework, many robotics tasks ...
In order to enable more widespread application of robots, we are required to reduce the human effort...
Real-time modeling of complex nonlinear dynamic processes has become increasingly important in vario...
Generalizing manipulation skills to new situations requires extracting invariant patterns from demon...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
Learning by imitation has shown to be a powerful paradigm for automated learning in autonomous robot...
In recent years, learning models from data has become an increasingly interesting tool for robotics,...