about
Real-time classification and sensor fusion with a spiking deep belief network.Neuromorphic silicon neurons and large-scale neural networks: challenges and opportunitiesSpike processing with a graphene excitable laser.Comparing Neuromorphic Solutions in Action: Implementing a Bio-Inspired Solution to a Benchmark Classification Task on Three Parallel-Computing Platforms.Systematic computation of nonlinear cellular and molecular dynamics with low-power CytoMimetic circuits: a simulation studyPyNCS: a microkernel for high-level definition and configuration of neuromorphic electronic systemsA reconfigurable on-line learning spiking neuromorphic processor comprising 256 neurons and 128K synapses.Synthesizing cognition in neuromorphic electronic systems.Finding a roadmap to achieve large neuromorphic hardware systemsEmergent Auditory Feature Tuning in a Real-Time Neuromorphic VLSI System.An efficient automated parameter tuning framework for spiking neural networksA framework for plasticity implementation on the SpiNNaker neural architecture.A neuromorphic network for generic multivariate data classificationBenchmarking Spike-Based Visual Recognition: A Dataset and EvaluationLearning and stabilization of winner-take-all dynamics through interacting excitatory and inhibitory plasticity.Emulated muscle spindle and spiking afferents validates VLSI neuromorphic hardware as a testbed for sensorimotor function and disease.Bayesian computation emerges in generic cortical microcircuits through spike-timing-dependent plasticityTunable low energy, compact and high performance neuromorphic circuit for spike-based synaptic plasticity.Characterization and compensation of network-level anomalies in mixed-signal neuromorphic modeling platforms.Racing to learn: statistical inference and learning in a single spiking neuron with adaptive kernels.Reliability of neuronal information conveyed by unreliable neuristor-based leaky integrate-and-fire neurons: a model study.Tunable neuromimetic integrated system for emulating cortical neuron modelsA biophysically-based neuromorphic model of spike rate- and timing-dependent plasticity.Biophysical Neural Spiking, Bursting, and Excitability Dynamics in Reconfigurable Analog VLSI.Regenerative memory in time-delayed neuromorphic photonic resonators.Toward Building Hybrid Biological/in silico Neural Networks for Motor Neuroprosthetic Control.Energy-Efficient Neuromorphic Classifiers.Modeling and Experimental Demonstration of a Hopfield Network Analog-to-Digital Converter with Hybrid CMOS/Memristor CircuitsEmulating short-term synaptic dynamics with memristive devicesDemonstration of Synaptic Behaviors and Resistive Switching Characterizations by Proton Exchange Reactions in Silicon Oxide.Self-Adaptive Spike-Time-Dependent Plasticity of Metal-Oxide Memristors.Leaky Integrate-and-Fire Neuron Circuit Based on Floating-Gate Integrator.Stochastic Synapses Enable Efficient Brain-Inspired Learning Machines.Reverse engineering the cognitive brainPhysical Realization of a Supervised Learning System Built with Organic Memristive Synapses.Unsupervised learning in probabilistic neural networks with multi-state metal-oxide memristive synapses.Real-time biomimetic Central Pattern Generators in an FPGA for hybrid experimentsSpintronic Nanodevices for Bioinspired Computing.Event-driven contrastive divergence for spiking neuromorphic systems.A 4-fJ/Spike Artificial Neuron in 65 nm CMOS Technology.
P2860
Q21129359-E3B1EB9F-4705-4F18-A3C2-09788CFD7C05Q21129368-FDB494F9-CF2F-4E9D-B280-1BC5B77520C3Q27302046-686E40A4-C107-4B54-9B37-E4F22F4A1496Q27313687-900B19BA-C180-449C-BF7F-D9498A95F71CQ28485984-6CEC07B4-880A-4C51-BB19-82A5BBDCA8B4Q28656038-A5E5A5A6-1D6C-46C1-A870-EFDBC94642AFQ30412113-9D8B9EE3-031C-4431-9441-058249DFD4C7Q30441944-854C3798-61BD-4FD4-9BB5-79E19BCA9794Q30449098-73571ECC-C15F-48A7-9B7E-E6844F9702EBQ30470447-284CC8B3-37C0-4FCF-96E6-91C53548F90EQ30570736-D7515C25-5244-47FA-BDF0-55BB2EFC8510Q30616664-CEC14512-5471-4E6C-93F2-8784846D09B2Q30743404-6758F344-4478-4E64-829A-03696032A614Q30827077-BCDA8209-ED6E-4D4C-844B-B06A22F531D6Q33861505-860948A5-49E4-4EF6-8844-62F4BE019D67Q34630935-AC433A68-8791-416D-B730-7326278FEDF0Q34697786-9C3F36DF-A0DB-443C-8674-370C9E92C2C9Q35097352-558944A3-2EB7-4A39-A788-3FE505C7B4B6Q35320536-DFA4B5A2-DE7F-4DAB-A687-739F86CD1FCAQ35518797-0AB10CD0-FE8B-49B6-8104-0A4A9C077105Q35599301-CE1D777B-0A11-4552-987E-8BB8E671ADF1Q35600901-C4693C7C-87FA-43BD-8C22-C106D73C5D70Q35621127-56F38094-B443-4EC7-90BB-1DA0B514E239Q35650651-AA2ED1C3-2543-48AB-AC59-9FDF392FBAFEQ35897097-A1EE8B26-CA3C-4873-BCA6-D3D5328DA910Q35935745-397AE27F-DA46-43FF-869C-C5E83B30A64DQ36111591-C067960A-33C1-418B-B538-73EBBB17A2C2Q36400656-73C91864-7018-4704-92DF-6921323B843DQ36423220-C02223C6-4FED-46AF-B67F-FF4F11EA31E7Q36583202-332D3C63-E6DD-4406-9CD7-9DD3F6D10A5EQ36595523-5B429C30-E8C4-46C6-B89F-F2A7E76E4304Q36924987-45918CE1-2007-4368-A562-6879D90F5439Q37048858-4BAD83CB-CFBB-4A65-BB84-37E365435639Q37203873-4EDBC486-51A3-40B9-BD49-A98576BEA3E8Q37236267-A8CA7790-0D99-407B-88A2-95B55119706EQ37323980-F2AAF08E-9740-4555-8E67-307755893BC3Q37331693-B3D16209-270C-4F67-962A-B40597829429Q37426244-BBFE707B-1BF9-40EA-A777-515A7FDA5C3EQ37579640-022E06DC-BD2E-4DD1-BA27-0A87B1BE6E14Q37701072-F84804F6-D688-4363-ABAF-2AD604178B67
P2860
description
2011 nî lūn-bûn
@nan
2011 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2011 թվականի մայիսին հրատարակված գիտական հոդված
@hy
2011年の論文
@ja
2011年論文
@yue
2011年論文
@zh-hant
2011年論文
@zh-hk
2011年論文
@zh-mo
2011年論文
@zh-tw
2011年论文
@wuu
name
Neuromorphic silicon neuron circuits.
@ast
Neuromorphic silicon neuron circuits.
@en
type
label
Neuromorphic silicon neuron circuits.
@ast
Neuromorphic silicon neuron circuits.
@en
prefLabel
Neuromorphic silicon neuron circuits.
@ast
Neuromorphic silicon neuron circuits.
@en
P2093
P2860
P50
P356
P1476
Neuromorphic silicon neuron circuits
@en
P2093
Fopefolu Folowosele
Gert Cauwenberghs
Giacomo Indiveri
Jayawan Wijekoon
John Arthur
Kwabena Boahen
Piotr Dudek
Ralph Etienne-Cummings
Shih-Chii Liu
P2860
P356
10.3389/FNINS.2011.00073
P50
P577
2011-05-31T00:00:00Z