International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (V1 and MT), and we show how the spiking output can be exploited in a computer vision application: action recognition. In order to analyze spike trains, we consider two characteristics of the neural code: mean firing rate of each neuron and synchrony between neurons. Interestingly, we show that they carry some relevant information for the action recognition application. We compare our results to Jhuang et al. (Proceedings of the 11th international conference on computer vision, pp. 1–8, 2007) on the Weizmann database. As a conclusion, we are convinced that spiking networks represent a powerful alternative framework for re...
We propose V1 and MT functional models for biological motion recognition. Our V1 model transforms a ...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...
Abstract- This paper focuses on feedforward spiking neuron models of the visual cortex. Essentially,...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
The past decade has witnessed the great success of deep neural networks in various domains. However,...
<div><p>Humans can easily understand other people’s actions through visual systems, while computers ...
We propose V1 and MT functional models for biological motion recognition. Our V1 model transforms a ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
We propose V1 and MT functional models for biological motion recognition. Our V1 model transforms a ...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...
Abstract- This paper focuses on feedforward spiking neuron models of the visual cortex. Essentially,...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
International audienceWe propose a bio-inspired feedforward spiking network modeling two brain areas...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
We propose a bio-inspired feedforward spiking network modeling two brain areas dedicated to motion (...
The past decade has witnessed the great success of deep neural networks in various domains. However,...
<div><p>Humans can easily understand other people’s actions through visual systems, while computers ...
We propose V1 and MT functional models for biological motion recognition. Our V1 model transforms a ...
We present a biologically-motivated system for the recognition of actions from video sequences. The ...
We propose V1 and MT functional models for biological motion recognition. Our V1 model transforms a ...
Humans can easily understand other people's actions through visual systems, while computers cannot. ...
Abstract- This paper focuses on feedforward spiking neuron models of the visual cortex. Essentially,...