In recent years, spiking neural networks (SNNs) have received extensive attention in brain-inspired intelligence due to their rich spatially-temporal dynamics, various encoding methods, and event-driven characteristics that naturally fit the neuromorphic hardware. With the development of SNNs, brain-inspired intelligence, an emerging research field inspired by brain science achievements and aiming at artificial general intelligence, is becoming hot. This paper reviews recent advances and discusses new frontiers in SNNs from five major research topics, including essential elements (i.e., spiking neuron models, encoding methods, and topology structures), neuromorphic datasets, optimization algorithms, software, and hardware frameworks. We hope our survey can help researchers understand SNNs better and inspire new works to advance this field.
翻译:近年来,神经神经网络(SNN)因其丰富的空间时空动态、各种编码方法以及自然适合神经形态硬件的事件驱动特性,在大脑启发性智能智能中受到广泛关注。随着SNN的开发,大脑启发性智能(一个由大脑科学成就启发并着眼于人造一般智能的新兴研究领域)正在变得热门。本文回顾了SNN的最近进展,并讨论了五个主要研究课题的新领域,包括基本要素(即神经元模型、编码方法和地形结构)、神经形态数据集、优化算法、软件和硬件框架。我们希望我们的调查能够帮助研究人员更好地了解SNN,激励新的工作推进这个领域。