We present a perceptron model with processing units consisting of coupled phase oscillators. The processing units are able to compute the input signals through a high order synapse mechanism. We show how a network of these elements can be used in analogy to the classical multilayer feedforward neural network. The main characteristics of the classical multilayer perceptron model are conserved, as for example, the backpropagation algorithm for learning. This model of coupled phase oscillators can be seen as a generic study in order to use different kind of oscillators for computational tasks
Oscillatory nonlinear networks represent a circuit architecture for image and information processing...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
The mesoscopic activity of the brain is strongly dynamical, while at the same time exhibits remarkab...
We present a perceptron model with processing units consisting of coupled phase oscillators. The pro...
A neural oscillator capable of processing graded inputs is studied. The oscillator has two different...
Coupled oscillations are hypothesized to organize the processing of information across distributed b...
The mesoscopic activity of the brain is strongly dynamical, while at the same time exhibits remarkab...
Abstract — In recent years, many people have been trying to develop some applications to information...
A novel computational neuro-architecture based on the phase resetting properties of physiologically...
A novel computational neuro-architecture based on the phase resetting properties of physiologically...
We propose a novel architecture of an oscillatory neural network that consists of phase-locked loop ...
This work explores the neuronal synchronisation and phase information dynamics of an enhanced versio...
A learning model for coupled oscillators is proposed. The proposed learning rule takes a simple form...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
Oscillatory nonlinear networks represent a circuit architecture for image and information processing...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
The mesoscopic activity of the brain is strongly dynamical, while at the same time exhibits remarkab...
We present a perceptron model with processing units consisting of coupled phase oscillators. The pro...
A neural oscillator capable of processing graded inputs is studied. The oscillator has two different...
Coupled oscillations are hypothesized to organize the processing of information across distributed b...
The mesoscopic activity of the brain is strongly dynamical, while at the same time exhibits remarkab...
Abstract — In recent years, many people have been trying to develop some applications to information...
A novel computational neuro-architecture based on the phase resetting properties of physiologically...
A novel computational neuro-architecture based on the phase resetting properties of physiologically...
We propose a novel architecture of an oscillatory neural network that consists of phase-locked loop ...
This work explores the neuronal synchronisation and phase information dynamics of an enhanced versio...
A learning model for coupled oscillators is proposed. The proposed learning rule takes a simple form...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
Oscillatory nonlinear networks represent a circuit architecture for image and information processing...
Brain-inspired computing employs devices and architectures that emulate biological functions for mor...
The mesoscopic activity of the brain is strongly dynamical, while at the same time exhibits remarkab...