Many popular learning rules are formulated in terms of continu-ous, analog inputs and outputs. Biological systems, however, use action potentials, which are digital-amplitude events that encode analog information in the inter-event interval. Action-potential representations are now being used to advantage in neuromorphic VLSI systems as well. We report on a simple learning rule, based on the Riccati equation described by Kohonen [1], modified for action-potential neuronal outputs. We demonstrate this learning rule in an analog VLSI chip that uses volatile capacitive storage for synaptic weights. We show that our time-dependent learning rule is sufficient to achieve approximate weight normalization and can detect temporal correlations in spi...
Neuro-inspired electronics are being designed to efficiently process complex information and accompl...
An analog implementation of a neuron using standard VLSI components is described. The node is capabl...
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...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
The ability to carry out signal processing, classification, recognition, and computation in artifici...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Spike-based neuromorphic learning circuits typically represent their synaptic weights as voltages, a...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Kaulmann T, Ferber M, Witkowski U, Rückert U. Analog VLSI Implementation of Adaptive Synapses in Pul...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
Learning in a neural network typically happens with the modification or plasticity of synaptic weigh...
Neuro-inspired electronics are being designed to efficiently process complex information and accompl...
An analog implementation of a neuron using standard VLSI components is described. The node is capabl...
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...
To endow large scale VLSI networks of spiking neurons with learning abilities it is important to dev...
The ability to carry out signal processing, classification, recognition, and computation in artifici...
Real-time classification of patterns of spike trains is a difficult computational problem that both ...
Spike-based neuromorphic learning circuits typically represent their synaptic weights as voltages, a...
Neuromorphic Very Large Scale Integration (VLSI) devices emulate the activation dynamics of biologic...
The promise of neuromorphic computing to develop ultra-low-power intelligent devices lies in its abi...
Hardware implementations of spiking neural networks offer promising solutions for computational task...
Kaulmann T, Ferber M, Witkowski U, Rückert U. Analog VLSI Implementation of Adaptive Synapses in Pul...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
Learning in a neural network typically happens with the modification or plasticity of synaptic weigh...
Neuro-inspired electronics are being designed to efficiently process complex information and accompl...
An analog implementation of a neuron using standard VLSI components is described. The node is capabl...
We present a model of spike-driven synaptic plasticity inspired by experimental observations and mot...