We consider the bootstrapping problem, which consists in learning a model of the agent's sensors and actuators starting from zero prior information, and we take the problem of servoing as a cross-modal task to validate the learned models. We study the class of sensors with bilinear dynamics, for which the derivative of the observations is a bilinear form of the control commands and the observations themselves. This class of models is simple, yet general enough to represent the main phenomena of three representative sensors (field sampler, camera, and range-finder), apparently very different from one another. It also allows a bootstrapping algorithm based on Hebbian learning, and a simple bioplausible control strategy. The convergence proper...
In this thesis we study a novel approach to on-line learning of artificial neural networks, called b...
Abstract—For a complex autonomous robotic system such as a humanoid robot, motor-babbling-based sens...
There have been many recent advances in the simulation of biologically realistic systems, but contro...
We consider the bootstrapping problem, which consists in learning a model of the agent's sensors and...
Learning and adaptivity will play a large role in robotics in the future. Two questions are open: (1...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
The problem of bootstrapping consists in designing agents that can learn from scratch the model of t...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
AbstractThis paper presents a set of methods by which a learning agent can learn a sequence of incre...
We address the generalization and transfer of sensorimotor programs in robot systems. We use a facto...
This dissertation presents a set of methods by which a learning agent, called a \critter, "...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
This thesis proposes new algorithms for a group of sensing robots to learn a para- metric model for...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
We develop a systems theoretical treatment of a behavioural system that interacts with its environme...
In this thesis we study a novel approach to on-line learning of artificial neural networks, called b...
Abstract—For a complex autonomous robotic system such as a humanoid robot, motor-babbling-based sens...
There have been many recent advances in the simulation of biologically realistic systems, but contro...
We consider the bootstrapping problem, which consists in learning a model of the agent's sensors and...
Learning and adaptivity will play a large role in robotics in the future. Two questions are open: (1...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
The problem of bootstrapping consists in designing agents that can learn from scratch the model of t...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
AbstractThis paper presents a set of methods by which a learning agent can learn a sequence of incre...
We address the generalization and transfer of sensorimotor programs in robot systems. We use a facto...
This dissertation presents a set of methods by which a learning agent, called a \critter, "...
Models are among the most essential tools in robotics, such as kinematics and dynamics models of the...
This thesis proposes new algorithms for a group of sensing robots to learn a para- metric model for...
In this paper, we confront the problem of applying reinforcement learning to agents that perceive th...
We develop a systems theoretical treatment of a behavioural system that interacts with its environme...
In this thesis we study a novel approach to on-line learning of artificial neural networks, called b...
Abstract—For a complex autonomous robotic system such as a humanoid robot, motor-babbling-based sens...
There have been many recent advances in the simulation of biologically realistic systems, but contro...