IC-SNN: Optimal ANN2SNN Conversion at Low Latency

Author:

Li Cuixia,Shang Zhiquan,Shi Li,Gao Wenlong,Zhang Shuyan

Abstract

The spiking neural network (SNN) has attracted the attention of many researchers because of its low energy consumption and strong bionics. However, when the network conversion method is used to solve the difficulty of network training caused by its discrete, too-long inference time, it may hinder the practical application of SNN. This paper proposes a novel model named the SNN with Initialized Membrane Potential and Coding Compensation (IC-SNN) to solve this problem. The model focuses on the effect of residual membrane potential and rate encoding on the target SNN. After analyzing the conversion error and the information loss caused by the encoding method under the low time step, we propose a new initial membrane potential setting method and coding compensation scheme. The model can enable the network to still achieve high accuracy under a low number of time steps by eliminating residual membrane potential and encoding errors in the SNN. Finally, experimental results based on public datasets CIFAR10 and CIFAR100 also demonstrate that the model can still achieve competitive classification accuracy in 32 time steps.

Funder

National Key Technologies R&D Program

2020 Key Project of Public Benefit in Henan Province of China

Nature Science Foundation of China

Key scientific research projects of colleges and universities in Henan Province

Publisher

MDPI AG

Subject

General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)

Reference41 articles.

1. Guo, Y., Yao, A., and Chen, Y. (2016). Dynamic network surgery for efficient dnns. arXiv.

2. Gong, Y., Liu, L., Yang, M., and Bourdev, L. (2014). Compressing deep convolutional networks using vector quantization. arXiv.

3. Han, S., Mao, H., and Dally, W.J. (2015). Deep compression: Compressing deep neural networks with pruning, trained quantization and huffman coding. arXiv.

4. Gerstner, W., and Kistler, W.M. (2002). Spiking Neuron Models: Single Neurons, Populations, Plasticity, Cambridge University Press.

5. An energy budget for signaling in the grey matter of the brain;Attwell;J. Cereb. Blood Flow Metab.,2001

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