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A Deep Unsupervised Feature Learning Spiking Neural Network with
  Binarized Classification Layers for EMNIST Classification using SpykeFlow
v1v2v3v4 (latest)

A Deep Unsupervised Feature Learning Spiking Neural Network with Binarized Classification Layers for EMNIST Classification using SpykeFlow

IEEE Transactions on Emerging Topics in Computational Intelligence (IEEE TETCI), 2020
26 February 2020
Ruthvik Vaila
John N. Chiasson
V. Saxena
ArXiv (abs)PDFHTML

Papers citing "A Deep Unsupervised Feature Learning Spiking Neural Network with Binarized Classification Layers for EMNIST Classification using SpykeFlow"

5 / 5 papers shown
Neuromorphic Event-Driven Semantic Communication in Microgrids
Neuromorphic Event-Driven Semantic Communication in Microgrids
Xiaoguang Diao
Yubo Song
Subham S. Sahoo
Yuan Li
359
7
0
28 Feb 2024
Workload-Balanced Pruning for Sparse Spiking Neural Networks
Workload-Balanced Pruning for Sparse Spiking Neural NetworksIEEE Transactions on Emerging Topics in Computational Intelligence (TETCI), 2023
Ruokai Yin
Youngeun Kim
Yuhang Li
Abhishek Moitra
Nitin Satpute
Anna Hambitzer
Priyadarshini Panda
283
32
0
13 Feb 2023
STSC-SNN: Spatio-Temporal Synaptic Connection with Temporal Convolution
  and Attention for Spiking Neural Networks
STSC-SNN: Spatio-Temporal Synaptic Connection with Temporal Convolution and Attention for Spiking Neural NetworksFrontiers in Neuroscience (Front. Neurosci.), 2022
Chengting Yu
Zheming Gu
Da Li
Gaoang Wang
Aili Wang
Erping Li
327
52
0
11 Oct 2022
Hardware Implementation of Spiking Neural Networks Using
  Time-To-First-Spike Encoding
Hardware Implementation of Spiking Neural Networks Using Time-To-First-Spike Encoding
Seongbin Oh
D. Kwon
Gyuho Yeom
Won-Mook Kang
Soochang Lee
S. Woo
Jaehyeon Kim
Min Kyu Park
Jong-Ho Lee
261
23
0
09 Jun 2020
Continuous Learning in a Single-Incremental-Task Scenario with Spike
  Features
Continuous Learning in a Single-Incremental-Task Scenario with Spike FeaturesInternational Conference on Systems (ICONS), 2020
Ruthvik Vaila
John N. Chiasson
V. Saxena
CLL
334
5
0
03 May 2020
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