In this paper we present the Synaptic Kernel Adaptation Network (SKAN) circuit, a dynamic circuit that implements Spike Timing Dependent Plasticity (STDP), not by adjusting synaptic weights but via dynamic synaptic kernels. SKAN performs unsupervised learning of the commonest spatio-temporal pattern of input spikes using simple analog or digital circuits. It features tunable robustness to temporal jitter and will unlearn a pattern that has not been present for a period of time using tunable 'forgetting' parameters. It is compact and scalable for use as a building block in a larger network to form a multilayer hierarchical unsupervised memory system which develops models based on the temporal statistics of its environment. Here we show resul...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
The ability to acquire and maintain appropriate representations of time-varying, sequential stimulus...
This paper describes the Synapto-dendritic Kernel Adapting Neuron (SKAN), a simple spiking neuron mo...
We have added a simplified neuromorphic model of Spike Time Dependent Plasticity (STDP) to the previ...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Transmission delays are an inherent component of spiking neural networks (SNNs) but relatively littl...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We present a neuromorphic implementation of multiple synaptic plasticity learning rules, which inclu...
Incorporating the spike-timing-dependent synaptic plasticity (STDP) into a learning rule, we study s...
Spike-timing-dependent plasticity (STDP) is a fundamental synaptic learning rule observed in biology...
In this thesis, we assess the role of short-term synaptic plasticity in an artificial neuralnetwork ...
Spiking neural networks (SNNs) could play a key role in unsupervised machine learning applications, ...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
The ability to acquire and maintain appropriate representations of time-varying, sequential stimulus...
This paper describes the Synapto-dendritic Kernel Adapting Neuron (SKAN), a simple spiking neuron mo...
We have added a simplified neuromorphic model of Spike Time Dependent Plasticity (STDP) to the previ...
International audienceSpiking neural networks (SNN) are biologically plausible networks. Compared to...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Transmission delays are an inherent component of spiking neural networks (SNNs) but relatively littl...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We present a neuromorphic implementation of multiple synaptic plasticity learning rules, which inclu...
Incorporating the spike-timing-dependent synaptic plasticity (STDP) into a learning rule, we study s...
Spike-timing-dependent plasticity (STDP) is a fundamental synaptic learning rule observed in biology...
In this thesis, we assess the role of short-term synaptic plasticity in an artificial neuralnetwork ...
Spiking neural networks (SNNs) could play a key role in unsupervised machine learning applications, ...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
The ability to acquire and maintain appropriate representations of time-varying, sequential stimulus...