Spiking neural networks (SNNs) have emerged as energy-efficient neural networks with temporal information. SNNs have shown a superior efficiency on neuromorphic devices, but the devices are susceptible to noise, which hinders them from being applied in real-world applications. Several studies have increased noise robustness, but most of them considered neither deep SNNs nor temporal information. In this paper, we investigate the effect of noise on deep SNNs with various neural coding methods and present a noise-robust deep SNN with temporal information. With the proposed methods, we have achieved a deep SNN that is efficient and robust to spike deletion and jitter.
翻译:Spik 神经网络(SNN)已成为具有时间信息的节能神经网络(SNNs),在神经形态装置上,SNNs表现出了更高的效率,但是这些装置很容易受到噪音的影响,从而阻碍了它们应用于现实世界的应用。一些研究提高了噪音的强度,但多数研究既没有考虑深层SNNs,也没有考虑时间信息。在这份文件中,我们用各种神经编码方法调查噪音对深层SNNs的影响,并用时间信息提供一个深层的噪音-机器人SNNN。我们以所建议的方法,实现了一个高效和强力的深度SNNN,以加速删除和急促。