This paper describes the design of an auto-associative memory based on a spiking neural network (SNN). The architecture is able to effectively utilize the massive interconnect resources available in FPGA architectures as a good match to the axons in biological neural networks. A complete implementation of the memory on a single FPGA is presented. The signal processing circuitry is composed from simple, parallel building blocks and the training logic is implemented using an on-chip soft processor
With the continuous development of deep learning, the scientific community continues to propose new ...
Abstract. This paper presents a network architecture to interconnect mixed-signal VLSI1 integrate-an...
We present an FPGA design framework for large-scale spiking neural networks, particularly the ones w...
The design of an auto-associative memory based on a spiking neural network is described. Delays rath...
This thesis describes the design and implementation of two pattern recognition systems on field-prog...
We present an FPGA implementation of a re-configurable, polychronous spiking neural network with a l...
Abstract — A field programmable gate array (FPGA) imple-mentation of a hardware spiking neural netwo...
Recently, researchers have shown an increased interest in more biologically realistic neural network...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
FPGA devices have witnessed popularity in their use for the rapid prototyping of biological Spiking ...
Spiking Neural Networks (SNN) is considered the third generation of neural networks. This type of ne...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
Classical Neural Networks consume many resources when they are implemented directly in hardware; but...
Energy efficient architectures for brain inspired computing have been an active area of research wit...
With the continuous development of deep learning, the scientific community continues to propose new ...
Abstract. This paper presents a network architecture to interconnect mixed-signal VLSI1 integrate-an...
We present an FPGA design framework for large-scale spiking neural networks, particularly the ones w...
The design of an auto-associative memory based on a spiking neural network is described. Delays rath...
This thesis describes the design and implementation of two pattern recognition systems on field-prog...
We present an FPGA implementation of a re-configurable, polychronous spiking neural network with a l...
Abstract — A field programmable gate array (FPGA) imple-mentation of a hardware spiking neural netwo...
Recently, researchers have shown an increased interest in more biologically realistic neural network...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
FPGA devices have witnessed popularity in their use for the rapid prototyping of biological Spiking ...
Spiking Neural Networks (SNN) is considered the third generation of neural networks. This type of ne...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
Classical Neural Networks consume many resources when they are implemented directly in hardware; but...
Energy efficient architectures for brain inspired computing have been an active area of research wit...
With the continuous development of deep learning, the scientific community continues to propose new ...
Abstract. This paper presents a network architecture to interconnect mixed-signal VLSI1 integrate-an...
We present an FPGA design framework for large-scale spiking neural networks, particularly the ones w...