An area-efficient hardware architecture is used to map fully parallel cortical columns on Field Programmable Gate Arrays (FPGA) is presented in this paper. To demonstrate the concept of this work, the proposed architecture is shown at the system level and benchmarked with image and speech recognition applications. Due to the spatio-temporal nature of spiking neurons, this has allowed such architectures to map on FPGAs in which communication can be performed through the use of spikes and signal can be represented in binary form. The process and viability of designing and implementing the multiple recurrent neural reservoirs with a novel multiplier-less reconfigurable architectures is described
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...
Classical Neural Networks consume many resources when they are implemented directly in hardware; but...
International audienceThis paper presents a biologically inspired modular hardware implementation of...
An area-efficient hardware architecture is used to map fully parallel cortical columns on Field Prog...
NoAn area-efficient hardware architecture is used to map fully parallel cortical columns on Field Pr...
This study presents energy and area-efficient hardware architectures to map fully parallel cortical ...
Recent neuropsychological research has begun to reveal that neurons encode information in the timing...
Summarization: Neuromorphic computing is expanding by leaps and bounds through custom integrated cir...
Living creatures pose amazing ability to learn and adapt, therefore researchers are trying to apply ...
Human intelligence relies on the vast number of neurons and their interconnections that form a paral...
Brain-inspired neuromorphic computing has attracted much attention for its advanced computing concep...
Neuromorphic engineers study models and implementations of systems that mimic neurons behavior in t...
Abstract — A field programmable gate array (FPGA) imple-mentation of a hardware spiking neural netwo...
Human intelligence relies on the vast number of neurons and their interconnections that form a paral...
We present an FPGA design framework for large-scale spiking neural networks, particularly the ones w...
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...
Classical Neural Networks consume many resources when they are implemented directly in hardware; but...
International audienceThis paper presents a biologically inspired modular hardware implementation of...
An area-efficient hardware architecture is used to map fully parallel cortical columns on Field Prog...
NoAn area-efficient hardware architecture is used to map fully parallel cortical columns on Field Pr...
This study presents energy and area-efficient hardware architectures to map fully parallel cortical ...
Recent neuropsychological research has begun to reveal that neurons encode information in the timing...
Summarization: Neuromorphic computing is expanding by leaps and bounds through custom integrated cir...
Living creatures pose amazing ability to learn and adapt, therefore researchers are trying to apply ...
Human intelligence relies on the vast number of neurons and their interconnections that form a paral...
Brain-inspired neuromorphic computing has attracted much attention for its advanced computing concep...
Neuromorphic engineers study models and implementations of systems that mimic neurons behavior in t...
Abstract — A field programmable gate array (FPGA) imple-mentation of a hardware spiking neural netwo...
Human intelligence relies on the vast number of neurons and their interconnections that form a paral...
We present an FPGA design framework for large-scale spiking neural networks, particularly the ones w...
International audienceNumerous neural network hardware implementations now use digital reconfigurabl...
Classical Neural Networks consume many resources when they are implemented directly in hardware; but...
International audienceThis paper presents a biologically inspired modular hardware implementation of...