Advancing Spiking Neural Networks Toward Deep Residual Learning
Peng Cheng Laboratory · Tsinghua University · +3 more institutions
Abstract
Despite the rapid progress of neuromorphic computing, inadequate capacity and insufficient representation power of spiking neural networks (SNNs) severely restrict their application scope in practice. Residual learning and shortcuts have been evidenced as an important approach for training deep neural networks, but rarely did previous work assessed their applicability to the specifics of SNNs. In this article, we first identify that this negligence leads to impeded information flow and the accompanying degradation problem in a spiking version of vanilla ResNet. To address this issue, we propose a novel SNN-oriented residual architecture termed MS-ResNet, which establishes membrane-based shortcut pathways, and…
Citation impact
- FWCI
- 22.29
- Percentile
- 100%
- References
- 78
Authors
5- YHYifan HuCorresponding
Peng Cheng Laboratory, Tsinghua University
- LDLei Deng
Tsinghua University
- YWYujie Wu
Graz University of Technology
- MYMan Yao
Chinese Academy of Sciences, Shandong Institute of Automation, Peng Cheng Laboratory
- GLGuoqi Li
Chinese Academy of Sciences, Shandong Institute of Automation, Peng Cheng Laboratory
Topics & keywords
- Spiking neural network
- Computer science
- Neuromorphic engineering
- FLOPS
- Residual
- Artificial intelligence
- Residual neural network
- Scalability
- Affordable and clean energy