Real-time classification of patterns of spike trains is a difficult computational problem that both natural and artificial networks of spiking neurons are confronted with. The solution to this problem not only could contribute to understanding the fundamental mechanisms of computation used in the biological brain, but could also lead to efficient hardware implementations of a wide range of applications ranging from autonomous sensory-motor systems to brain-machine interfaces. Here we demonstrate real-time classification of complex patterns of mean firing rates, using a VLSI network of spiking neurons and dynamic synapses which implement a robust spike-driven plasticity mechanism. The learning rule implemented is a supervised one: a teacher ...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Large-scale spiking neural networks (SNN) are typically implemented on the chip by using mixed analo...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
We demonstrate robust classification of correlated patterns of mean firing rates, using a VLSI netwo...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We describe an analog VLSI circuit implementing spike-driven synaptic plasticity, embedded in a netw...
We describe an analog VLSI circuit implementing spike-driven synaptic plasticity, embedded in a netw...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Large-scale spiking neural networks (SNN) are typically implemented on the chip by using mixed analo...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
We demonstrate robust classification of correlated patterns of mean firing rates, using a VLSI netwo...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...
We describe an analog VLSI circuit implementing spike-driven synaptic plasticity, embedded in a netw...
We describe an analog VLSI circuit implementing spike-driven synaptic plasticity, embedded in a netw...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
This thesis presents a versatile study on the design and Very Large Scale Integration(VLSI) implemen...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Large-scale spiking neural networks (SNN) are typically implemented on the chip by using mixed analo...