Neural Networks2022,Vol.14911.DOI:10.1016/j.neunet.2022.02.006

Modeling learnable electrical synapse for high precision spatio-temporal recognition

Wu, Zhenzhi Zhang, Zhihong Gao, Huanhuan Qin, Jun Zhao, Rongzhen Zhao, Guangshe Li, Guoqi
Neural Networks2022,Vol.14911.DOI:10.1016/j.neunet.2022.02.006

Modeling learnable electrical synapse for high precision spatio-temporal recognition

Wu, Zhenzhi 1Zhang, Zhihong 2Gao, Huanhuan 2Qin, Jun 2Zhao, Rongzhen 1Zhao, Guangshe 2Li, Guoqi3
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作者信息

  • 1. Lynxi Technol
  • 2. Sch Automation Sci & Engn,Xi An Jiao Tong Univ
  • 3. Inst Automaton,Chinese Acad Sci
  • 折叠

Abstract

Bio-inspired recipes are being introduced to artificial neural networks for the efficient processing of spatio-temporal tasks. Among them, Leaky Integrate and Fire (LIF) model is the most remarkable one thanks to its temporal processing capability, lightweight model structure, and well investigated direct training methods. However, most learnable LIF networks generally take neurons as independent individuals that communicate via chemical synapses, leaving electrical synapses all behind. On the contrary, it has been well investigated in biological neural networks that the inter-neuron electrical synapse takes a great effect on the coordination and synchronization of generating action potentials. In this work, we are engaged in modeling such electrical synapses in artificial LIF neurons, where membrane potentials propagate to neighbor neurons via convolution operations, and the refined neural model ECLIF is proposed. We then build deep networks using ECLIF and trained them using a back-propagation-through-time algorithm. We found that the proposed network has great accuracy improvement over traditional LIF on five datasets and achieves high accuracy on them. In conclusion, it reveals that the introduction of the electrical synapse is an important factor for achieving high accuracy on realistic spatio-temporal tasks.

Key words

Electrical synapse/coupling/Leaky-integrate-and-fire model/Spatio-temporal information/Bio-plausible neuronal dynamics/SPIKING NEURONS/FIRE MODEL/BACKPROPAGATION/MECHANISMS/NETWORKS/DYNAMICS

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出版年

2022
Neural Networks

Neural Networks

EISCI
ISSN:0893-6080
被引量3
参考文献量68
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