This paper introduces an event-driven feedforward categorization system, which takes data from a temporal contrast address event representation (AER) sensor. The proposed system extracts bio-inspired cortex-like features and discriminates different patterns using an AER based tempotron classifier (a network of leaky integrate-and-fire spiking neurons). One of the system’s most appealing characteristics is its event-driven processing, with both input and features taking the form of address events (spikes). The system was evaluated on an AER posture dataset and compared with two recently developed bio-inspired models. Experimental results have shown that it consumes much less simulation time while still maintaining comparable performance. In ...
Neuromorphic engineering tries to mimic biological information processing. Address-Event Representa...
The development of Spiking Neural Networks (SNN) and the discipline of Neuromorphic Engineering has ...
Evolving spiking neural networks (eSNN) are computational models that evolve new spiking neurons and...
Abstract — This paper introduces an event-driven feedforward categorization system, which takes data...
This paper presents a fully event-driven feedforward architecture that accounts for rapid categoriz...
A 5-layer neuromorphic vision processor whose components communicate spike events asychronously usi...
Computation with spiking neurons takes advantage of the abstraction of action potentials into strea...
We present a neuromorphic cortical-layer processing microchip for address event representation (AER)...
Address-event representation (AER) is an emergent hardware technology which shows a high potential f...
Address event representation (AER) cameras have recently attracted more attention due to the advanta...
Computation with spiking neurons takes advantage of the abstraction of action potentials into stream...
Neuro-inspired processing tries to imitate the nervous system and may resolve complex problems, suc...
This paper summarizes how Convolutional Neural Networks (ConvNets) can be implemented in hardware us...
Address-event-representation (AER) is a communications protocol for transferring spikes between bio-...
Address-Event-Representation, AER, is a communication protocol that is intended to transfer neurona...
Neuromorphic engineering tries to mimic biological information processing. Address-Event Representa...
The development of Spiking Neural Networks (SNN) and the discipline of Neuromorphic Engineering has ...
Evolving spiking neural networks (eSNN) are computational models that evolve new spiking neurons and...
Abstract — This paper introduces an event-driven feedforward categorization system, which takes data...
This paper presents a fully event-driven feedforward architecture that accounts for rapid categoriz...
A 5-layer neuromorphic vision processor whose components communicate spike events asychronously usi...
Computation with spiking neurons takes advantage of the abstraction of action potentials into strea...
We present a neuromorphic cortical-layer processing microchip for address event representation (AER)...
Address-event representation (AER) is an emergent hardware technology which shows a high potential f...
Address event representation (AER) cameras have recently attracted more attention due to the advanta...
Computation with spiking neurons takes advantage of the abstraction of action potentials into stream...
Neuro-inspired processing tries to imitate the nervous system and may resolve complex problems, suc...
This paper summarizes how Convolutional Neural Networks (ConvNets) can be implemented in hardware us...
Address-event-representation (AER) is a communications protocol for transferring spikes between bio-...
Address-Event-Representation, AER, is a communication protocol that is intended to transfer neurona...
Neuromorphic engineering tries to mimic biological information processing. Address-Event Representa...
The development of Spiking Neural Networks (SNN) and the discipline of Neuromorphic Engineering has ...
Evolving spiking neural networks (eSNN) are computational models that evolve new spiking neurons and...