This paper discusses how a robot can learn goal-directed naviga-tion tasks using local sensory inputs. The emphasis is that such learning tasks could be formulated as an embedding problem of dynamical systems: desired trajectories in a task space should be embedded into an adequate sensory-based internal state space so that an unique mapping from the internal state space to the motor command could be established. The paper shows that a recurrent neural network suffices in self-organizing such an adequate internal state space from the temporal sensory input. In our experiments, using a real robot with a laser range sensor, the robot navigated robustly by achieving dynamical coherence with the environment. It was also shown that such coherenc...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Abstract — In this work we propose a hierarchical architec-ture which constructs internal models of ...
peer reviewedIn this work we propose a hierarchical architec- ture which constructs internal models ...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
In this work we propose a hierarchical architecture which constructs internal models of a robot envi...
Abstract — We address in this paper the problem of the autonomous online learning of a sensory-motor...
Robotic navigation has been an area of intense research since the onset of mobile robot development....
This paper presents a developmental robotics experiment implementing self-organizing distinctive sta...
The design of a mechatronic agent capable of navigating autonomously in a changing and perhaps previ...
How can low-level autonomous robots with only very simple sensor systems be endowed with cognitive c...
We describe a general framework for the acquisition of perception-based navigational behaviors in au...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
Abstract –. Autonomous robot navigation in partially observable environments is a complex task becau...
In this paper we describe the evolution of a discrete-time recurrent neural network to control a rea...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Abstract — In this work we propose a hierarchical architec-ture which constructs internal models of ...
peer reviewedIn this work we propose a hierarchical architec- ture which constructs internal models ...
Abstract—This work proposes a general Reservoir Computing (RC) learning framework which can be used ...
In this paper 1 , the processes of exploration and of incremental learning in the robot navigatio...
In this work we propose a hierarchical architecture which constructs internal models of a robot envi...
Abstract — We address in this paper the problem of the autonomous online learning of a sensory-motor...
Robotic navigation has been an area of intense research since the onset of mobile robot development....
This paper presents a developmental robotics experiment implementing self-organizing distinctive sta...
The design of a mechatronic agent capable of navigating autonomously in a changing and perhaps previ...
How can low-level autonomous robots with only very simple sensor systems be endowed with cognitive c...
We describe a general framework for the acquisition of perception-based navigational behaviors in au...
Abstract — In this paper, we introduce a neural-dynamic architecture that enables autonomous learn-i...
Abstract –. Autonomous robot navigation in partially observable environments is a complex task becau...
In this paper we describe the evolution of a discrete-time recurrent neural network to control a rea...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
Abstract — In this work we propose a hierarchical architec-ture which constructs internal models of ...
peer reviewedIn this work we propose a hierarchical architec- ture which constructs internal models ...