Continuous online adaptation is an essential ability for the vision of fully autonomous and lifelong-learning robots. Robots need to be able to adapt to changing environments and constraints while this adaption should be performed without interrupting the robot’s motion. In this paper, we introduce a framework for probabilistic online motion planning and learning based on a bio-inspired stochastic recurrent neural network. Furthermore, we show that the model can adapt online and sample-efficiently using intrinsic motivation signals and a mental replay strategy. This fast adaptation behavior allows the robot to learn from only a small number of physical interactions and is a promising feature for reusing the model in different environments. ...
In this work, a novel reinforcement learning algorithm, Stimulus Action Reward Network (SARN), is de...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Summary. Motion prediction for objects which are able to decide their trajectory on the basis of a p...
Continuous online adaptation is an essential ability for the vision of fully autonomous and lifelong...
Autonomous robots need to interact with unknown, unstructured and changing environments, constantly ...
Successful biological systems adapt to change. Humans, for example, are capable of continual self-im...
In order to operate close to non-experts, future robots require both an intuitive form of instructio...
An artificial intelligent agent needs to be equipped with a multitude of abilities in order to inter...
Abstract—In this paper, the authors first point the importance of three factors for filling the gap ...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
With recent research advances, the dream of bringing domestic robots into our everyday lives has bec...
How can real robots with many degrees of freedom - without previous knowledge of themselves or their...
Abstract. We propose and evaluate a novel approach to the online syn-thesis of neural controllers fo...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
In this work, a novel reinforcement learning algorithm, Stimulus Action Reward Network (SARN), is de...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Summary. Motion prediction for objects which are able to decide their trajectory on the basis of a p...
Continuous online adaptation is an essential ability for the vision of fully autonomous and lifelong...
Autonomous robots need to interact with unknown, unstructured and changing environments, constantly ...
Successful biological systems adapt to change. Humans, for example, are capable of continual self-im...
In order to operate close to non-experts, future robots require both an intuitive form of instructio...
An artificial intelligent agent needs to be equipped with a multitude of abilities in order to inter...
Abstract—In this paper, the authors first point the importance of three factors for filling the gap ...
International audienceDynamic uncontrolled human-robot interaction requires robots to be able to ada...
With recent research advances, the dream of bringing domestic robots into our everyday lives has bec...
How can real robots with many degrees of freedom - without previous knowledge of themselves or their...
Abstract. We propose and evaluate a novel approach to the online syn-thesis of neural controllers fo...
Kinodynamic motion planners allow robots to perform complex manipulation tasks under dynamics constr...
In this work, a novel reinforcement learning algorithm, Stimulus Action Reward Network (SARN), is de...
Autonomous robots execute complex behaviours to operate and perform tasks in real-world environme...
Summary. Motion prediction for objects which are able to decide their trajectory on the basis of a p...