IEEE Trans Neural Netw Learn Syst. 2022 Jul;33(7):2744-2757. doi: 10.1109/TNNLS.2020.3044364. Epub 2022 Jul 6.
Spiking neural networks are the basis of versatile and power-efficient information processing in the brain. Although we currently lack a detailed understanding of how these networks compute, recently developed optimization techniques allow us to instantiate increasingly complex functional spiking neural networks in-silico. These methods hold the promise to build more efficient non-von-Neumann computing hardware and will offer new vistas in the quest of unraveling brain circuit function. To accelerate the development of such methods, objective ways to compare their performance are indispensable. Presently, however, there are no widely accepted means for comparing the computational performance of spiking neural networks. To address this issue, we introduce two spike-based classification data sets, broadly applicable to benchmark both software and neuromorphic hardware implementations of spiking neural networks. To accomplish this, we developed a general audio-to-spiking conversion procedure inspired by neurophysiology. Furthermore, we applied this conversion to an existing and a novel speech data set. The latter is the free, high-fidelity, and word-level aligned Heidelberg digit data set that we created specifically for this study. By training a range of conventional and spiking classifiers, we show that leveraging spike timing information within these data sets is essential for good classification accuracy. These results serve as the first reference for future performance comparisons of spiking neural networks.
尖峰神经网络是大脑中多功能、高能效信息处理的基础。尽管我们目前还缺乏对这些网络如何计算的详细了解,但最近开发的优化技术允许我们在计算机中实例化越来越复杂的功能尖峰神经网络。这些方法有望构建更高效的非冯·诺依曼计算硬件,并将为揭示大脑电路功能提供新的视角。为了加速这些方法的发展,客观地比较它们的性能是必不可少的。然而,目前还没有广泛接受的方法来比较尖峰神经网络的计算性能。为了解决这个问题,我们引入了两个基于尖峰的分类数据集,广泛适用于基准测试软件和尖峰神经网络的神经形态硬件实现。为了实现这一点,我们开发了一种基于神经生理学的通用音频到尖峰的转换过程。此外,我们将这种转换应用于现有的和一个新的语音数据集。后者是免费的、高保真的、词级对齐的海德堡数字数据集,我们专门为此研究创建了这个数据集。通过训练一系列传统和尖峰分类器,我们表明在这些数据集中利用尖峰时间信息对于良好的分类准确性至关重要。这些结果为未来尖峰神经网络的性能比较提供了第一个参考。