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A Power-Efficient Binary-Weight Spiking Neural Network Architecture for
  Real-Time Object Classification

A Power-Efficient Binary-Weight Spiking Neural Network Architecture for Real-Time Object Classification

12 March 2020
Pai-Yu Tan
Po-Yao Chuang
Yen-Ting Lin
Cheng-Wen Wu
Juin-Ming Lu
    MQ
ArXiv (abs)PDFHTML

Papers citing "A Power-Efficient Binary-Weight Spiking Neural Network Architecture for Real-Time Object Classification"

3 / 3 papers shown
SpikeFit: Towards Optimal Deployment of Spiking Networks on Neuromorphic Hardware
SpikeFit: Towards Optimal Deployment of Spiking Networks on Neuromorphic Hardware
Ivan Kartashov
M. Pushkareva
Iakov Karandashev
178
1
0
17 Oct 2025
Improving Reliability of Spiking Neural Networks through Fault Aware
  Threshold Voltage Optimization
Improving Reliability of Spiking Neural Networks through Fault Aware Threshold Voltage OptimizationDesign, Automation and Test in Europe (DATE), 2023
Ayesha Siddique
K. A. Hoque
178
7
0
12 Jan 2023
Izhikevich-Inspired Optoelectronic Neurons with Excitatory and
  Inhibitory Inputs for Energy-Efficient Photonic Spiking Neural Networks
Izhikevich-Inspired Optoelectronic Neurons with Excitatory and Inhibitory Inputs for Energy-Efficient Photonic Spiking Neural Networks
Yun-Jhu Lee
M. B. On
Xian Xiao
R. Proietti
S. Yoo
98
4
0
03 May 2021
1
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