LAN Haoxin, CHEN Yunhua. SNN Training Algorithm Based on Relationship Between Pulse Frequency and Input Current[J]. Computer Engineering and Applications, 2022, 58(10): 87-92.
[1] DENG L,WU Y J,HU X,et al.Rethinking the performance comparison between SNNs and ANNs[J].Neural Networks,2019,121:294-307.
[2] BOHTE S M,KOK J N.Error-backpropagation in temporally encoded networks of spiking neurons[J].Neurocomputing,2002,48:17-37.
[3] GHOSH-DASTIDAR S,ADELI H.A new supervised learning algorithm for multiple spiking neural networks with application in epilepsy and seizure detection[J].Neural Networks:the Official Journal of the International Neural Network Society,2009,22(10):1419-1431.
[4] MOSTAFA H.Supervised learning based on temporal coding in spiking neural networks[J].IEEE Transactions on Neural Networks and Learning Systems,2018,29(7):3227-3235.
[5] LEE J H,DELBRUCK T,PFEIFFER M.Training deep spiking neural networks using backpropagation[J].Frontiers in Neuroscience,2016,508(10):504-517.
[6] JIN Y,ZHANG W,LI P.Hybrid macro/micro level backpropagation for training deep spiking neural networks[J].arXiv:1805.07866,2018.
[7] WU Y J,DENG L,LI G Q,et al.Spatio-temporal backpropagation for training high-performance spiking neural networks[J].Frontiers in Neuroscience,2018,12:331.
[8] WU Y J,DENG L,LI G Q,et al.Direct training for spiking neural networks:faster,larger,better[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2019,33:1311-1318.
[9] KASABOV N K.Time-space,spiking neural networks and brain-inspired artificial intelligence[M].Berlin,Heidelberg:Springer,2019:104-108.
[10] PIERRE Y.PyNN:a common interface for neuronal network simulators[J].Frontiers in Neuroinformatics,2009,2(11):204-123.
[11] LIU Q,FURBER S.Noisy Softplus:a biology inspired activation function[C]//International Conference on Neural Information Processing.Cham:Springer,2016:405-412.
[12] LIU Q,CHEN Y,FURBER S.Noisy Softplus:an activation function that enables SNNs to be trained as ANNs[J].arXiv:1706.03609,2017.
[13] GIUGLIANO M,CAMERA G L,FUSI S,et al.The response of cortical neurons to in vivo-like input current:theory and experiment[J].Biological Cybernetics,2008,99(4):303-318.
[14] GU P J,XIAO R,PAN G,et al.STCA:spatio-temporal credit assignment with delayed feedback in deep spiking neural networks[C]//28th International Joint Conference on Artificial Intelligence,2019:1366-1372.
[15] HAYKIN S,KOSKO B.Gradient based learning applied to document recognition[J].Intelligent Signal Processing,1998,86:2278-2324.
[16] KRIZHEVSKY A,NAIR V,HINTON G.The CIFAR-10 dataset[EB/OL].(2014)[2021-04-24].http://www.cs.toronto.edu/kriz/cifar.html.
[17] ESSER S K,MEROLLA P A,ARTHUR J V,et al.Convolutional networks for fast,energy-efficient neuromorphic computing[J].Proceedings of the National Academy of Sciences,2016,113(41):11441-11446.
[18] WU J,CHUA Y,ZHANG M,et al.Deep spiking neural network with spike count based learning rule[C]//2019 International Joint Conference on Neural Networks,2019:1-6.
[19] CHENG X,HAO Y Z,XU J M,et al.LISNN:improving spiking neural networks with lateral interactions for robust object recognition[C]//29th International Joint Conference on Artificial Intelligence,2020:1519-1525.
[20] DIEHL P U,NEIL D,BINAS J,et al.Fast-classifying,high-accuracy spiking deep networks through weight and threshold balancing[C]//2015 International Joint Conference on Neural Networks,2015:1-8.
[21] SENGUPTA A,YE Y,WANG R,et al.Going deeper in spiking neural networks:VGG and residual architectures[J].Frontiers in Neuroscience,2019,13:95.
[22] PANDA P,ROY K.Unsupervised regenerative learning of hierarchical features in spiking deep networks for object recognition[C]//2016 International Joint Conference on Neural Networks,2016:299-306.