International audienceSpike timing dependent plasticity (STDP) is a learning rule that modifies synaptic strength as a function of the relative timing of pre- and postsynaptic spikes. When a neuron is repeatedly presented with similar inputs, STDP is known to have the effect of concentrating high synaptic weights on afferents that systematically fire early, while postsynaptic spike latencies decrease. Here we use this learning rule in an asynchronous feedforward spiking neural network that mimics the ventral visual pathway and shows that when the network is presented with natural images, selectivity to intermediate-complexity visual features emerges. Those features, which correspond to prototypical patterns that are both salient and consist...
We review here our recent attempts to model the neural correlates of visual perception with biologic...
Deep neural networks have surpassed human performance in key visual challenges such as object recogn...
International audienceA biologically inspired approach to learning temporally correlated patterns fr...
International audiencePrevious studies have shown that spike-timing-dependent plasticity (STDP) can ...
Neuroscience study shows mammalian brain only use millisecond scale time window to process complicat...
Real-time learning needs algorithms operating in a fast speed comparable to human or animal, however...
International audienceThis paper focuses on feedforward spiking neuron models of the visual cortex. ...
Abstract- This paper focuses on feedforward spiking neuron models of the visual cortex. Essentially,...
Abstract. We present a biologically inspired model for learning proto-typical representations of hea...
In this review, we describe our recent attempts to model the neural correlates of visual perception ...
Human beings can achieve reliable and fast visual pattern recognition with limited time and learning...
Artificial neural networks, that try to mimic the brain, are a very active area of research today. S...
International audienceReinforcement learning (RL) has recently regained popularity with major achiev...
Recent experimental observations of spike-timing-dependent synaptic plasticity (STDP) have revitaliz...
International audienceAlthough representation learning methods developed within the framework of tra...
We review here our recent attempts to model the neural correlates of visual perception with biologic...
Deep neural networks have surpassed human performance in key visual challenges such as object recogn...
International audienceA biologically inspired approach to learning temporally correlated patterns fr...
International audiencePrevious studies have shown that spike-timing-dependent plasticity (STDP) can ...
Neuroscience study shows mammalian brain only use millisecond scale time window to process complicat...
Real-time learning needs algorithms operating in a fast speed comparable to human or animal, however...
International audienceThis paper focuses on feedforward spiking neuron models of the visual cortex. ...
Abstract- This paper focuses on feedforward spiking neuron models of the visual cortex. Essentially,...
Abstract. We present a biologically inspired model for learning proto-typical representations of hea...
In this review, we describe our recent attempts to model the neural correlates of visual perception ...
Human beings can achieve reliable and fast visual pattern recognition with limited time and learning...
Artificial neural networks, that try to mimic the brain, are a very active area of research today. S...
International audienceReinforcement learning (RL) has recently regained popularity with major achiev...
Recent experimental observations of spike-timing-dependent synaptic plasticity (STDP) have revitaliz...
International audienceAlthough representation learning methods developed within the framework of tra...
We review here our recent attempts to model the neural correlates of visual perception with biologic...
Deep neural networks have surpassed human performance in key visual challenges such as object recogn...
International audienceA biologically inspired approach to learning temporally correlated patterns fr...