We demonstrate the operant conditioning (OC) learning process within a basic bio-inspired robot controller paradigm, using an artificial spiking neural network (ASNN) with minimal component count as artificial brain. In biological agents, OC results in behavioral changes that are learned from the consequences of previous actions, using progressive prediction adjustment triggered by reinforcers. In a robotics context, virtual and physical robots may benefit from a similar learning skill when facing unknown environments with no supervision. In this work, we demonstrate that a simple ASNN can efficiently realise many OC scenarios. The elementary learning kernel that we describe relies on a few critical neurons, synaptic links and the integrati...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
Recent models of spiking neuronal networks have been trained to perform behaviors in static environm...
This study explores the design and control of the behaviour of agents and robots using simple circui...
The cerebellum has a central role in fine motor control and in various neural processes, as in assoc...
Neuromorphic engineers develop event-based spiking neural networks (SNNs) in hardware. These SNNs cl...
Learning based on networks of real neurons, and learning based on biologically inspired models of ne...
Compared to biological systems, existing learning systems lack the ability to learn autonomously, es...
To understand how animals and humans learn, form memories and make decisions is along-lasting goal i...
Abstract—In this paper, we introduce a network of spiking neurons devoted to navigation control. Thr...
Minimalist neural mechanisms are suitable tools for programming and training autonomous robots. This...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
www.adaptronics.dk We developed spiking neural network control for a modular robotic system. The mod...
Compliant robots can be more versatile than traditional robots, but theircontrol is more complex. Th...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
Recent models of spiking neuronal networks have been trained to perform behaviors in static environm...
This study explores the design and control of the behaviour of agents and robots using simple circui...
The cerebellum has a central role in fine motor control and in various neural processes, as in assoc...
Neuromorphic engineers develop event-based spiking neural networks (SNNs) in hardware. These SNNs cl...
Learning based on networks of real neurons, and learning based on biologically inspired models of ne...
Compared to biological systems, existing learning systems lack the ability to learn autonomously, es...
To understand how animals and humans learn, form memories and make decisions is along-lasting goal i...
Abstract—In this paper, we introduce a network of spiking neurons devoted to navigation control. Thr...
Minimalist neural mechanisms are suitable tools for programming and training autonomous robots. This...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
www.adaptronics.dk We developed spiking neural network control for a modular robotic system. The mod...
Compliant robots can be more versatile than traditional robots, but theircontrol is more complex. Th...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A new way of building control systems, known as behavior-based robotics, has recently been proposed ...
Recent models of spiking neuronal networks have been trained to perform behaviors in static environm...