International audienceVisual attention is a mechanism that biological systems have developed to reduce the large amount of visual information in order to efficiently perform tasks such as learning, recognition, tracking, etc. In this paper we describe a simple spiking neural network model that is able to detect, focus on and track a stimulus even in the presence of noise or distracters. Instead of using a regular rate-coding neuron model based on the continuum neural field theory (CNFT), we propose to use a time-based code by means of a network composed of leaky integrate-and-fire (LIF) neurons. The proposal is experimentally compared against the usual CNFT-based model
State-of-the-art computer vision systems use frame-based cameras that sample the visual scene as a s...
Spiking neurons seem to capture important characteristics of biological neurons with relatively simp...
As more computational resources become widely available, artificial intelligence and machine learnin...
International audiencePredictive capabilities are added to the competition mechanism known as the Co...
Thanks to their event-driven nature, spiking neural networks (SNNs) are surmised to be great computa...
Attention RoboticWe present a distributed and dynamic model of visual attention based on the Continu...
Spiking neural networks (SNNs) mimic brain computational strategies, and exhibit substantial capabil...
We present a fully event-driven vision and processing system for selective attention and tracking, r...
We propose a model for the neuronal implementation of selective visual attention based on the tempor...
We present a fully event-driven vision and processing system for selective attention and tracking im...
AbstractNumerous theories of neural processing, often motivated by experimental observations, have e...
International audienceAbstract The visual exploration of a scene involves the in- terplay of several...
The purpose of this workshop was to discuss both recent experimental findings and computational mod...
Spatial attention enhances sensory processing of goalrelevant information and improves perceptual se...
We propose a model for the neuronal implementation of selective visual attention based on temporal c...
State-of-the-art computer vision systems use frame-based cameras that sample the visual scene as a s...
Spiking neurons seem to capture important characteristics of biological neurons with relatively simp...
As more computational resources become widely available, artificial intelligence and machine learnin...
International audiencePredictive capabilities are added to the competition mechanism known as the Co...
Thanks to their event-driven nature, spiking neural networks (SNNs) are surmised to be great computa...
Attention RoboticWe present a distributed and dynamic model of visual attention based on the Continu...
Spiking neural networks (SNNs) mimic brain computational strategies, and exhibit substantial capabil...
We present a fully event-driven vision and processing system for selective attention and tracking, r...
We propose a model for the neuronal implementation of selective visual attention based on the tempor...
We present a fully event-driven vision and processing system for selective attention and tracking im...
AbstractNumerous theories of neural processing, often motivated by experimental observations, have e...
International audienceAbstract The visual exploration of a scene involves the in- terplay of several...
The purpose of this workshop was to discuss both recent experimental findings and computational mod...
Spatial attention enhances sensory processing of goalrelevant information and improves perceptual se...
We propose a model for the neuronal implementation of selective visual attention based on temporal c...
State-of-the-art computer vision systems use frame-based cameras that sample the visual scene as a s...
Spiking neurons seem to capture important characteristics of biological neurons with relatively simp...
As more computational resources become widely available, artificial intelligence and machine learnin...