International audienceIn this paper, we consider a biologically inspired spiking neural network model for motion detection. The proposed model simulates the neurons' behavior in the cortical area MT to detect different kinds of motion in image sequences. We choose the conductance-based neuron model of the Hodgkin-Huxley to define MT cell responses. Based on the center-surround antagonism of MT receptive fields, we model the area MT by its great proportion of cells with directional selective responses. The network's spiking output corresponds to an MT neuron population's firing rates and enables to extract motion boundaries. We conduct several experiments on real image sequences. The experimental results show the proposed network's ability t...
Abstract—We have previously developed a neurodynamical model of motion segregation in cortical visua...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
We propose a spiking neural network model that is inspired from an oversimplified general structure ...
International audienceIn this paper, we consider a biologically inspired spiking neural network mode...
International audienceIn this paper, we propose a spiking neural network model for edge detection in...
A model for motion detection is presented. In this approach, motion is viewed as a stable pattern pr...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
In the present paper, we propose a neurally-inspired model of the primate motion processing hierarc...
This paper describes a bio-inspired algorithm for motion computation based on V1 (Primary Visual Co...
AbstractWe propose that five types of cell on the magnocellular pathway of the visual cortex constit...
Image motion analysis plays an important role in the everyday life of both humans and animals. Motio...
Simulating large-scale models of biological motion perception is challenging, due to the required me...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
We developed and tested the architecture of a bio-inspired Spiking Neural Network for motion estimat...
Image motion is an important cue used by both biological and artificial visual systems to extract in...
Abstract—We have previously developed a neurodynamical model of motion segregation in cortical visua...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
We propose a spiking neural network model that is inspired from an oversimplified general structure ...
International audienceIn this paper, we consider a biologically inspired spiking neural network mode...
International audienceIn this paper, we propose a spiking neural network model for edge detection in...
A model for motion detection is presented. In this approach, motion is viewed as a stable pattern pr...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
In the present paper, we propose a neurally-inspired model of the primate motion processing hierarc...
This paper describes a bio-inspired algorithm for motion computation based on V1 (Primary Visual Co...
AbstractWe propose that five types of cell on the magnocellular pathway of the visual cortex constit...
Image motion analysis plays an important role in the everyday life of both humans and animals. Motio...
Simulating large-scale models of biological motion perception is challenging, due to the required me...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
We developed and tested the architecture of a bio-inspired Spiking Neural Network for motion estimat...
Image motion is an important cue used by both biological and artificial visual systems to extract in...
Abstract—We have previously developed a neurodynamical model of motion segregation in cortical visua...
A neural network model called lateral interaction in accumulative computation for detection of non-r...
We propose a spiking neural network model that is inspired from an oversimplified general structure ...