The Heidelberg spiking data sets for the systematic evaluation of spiking neural networks

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 ne...

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Bibliographic Details
Main Authors: Cramer, Benjamin (Author) , Stradmann, Yannik (Author) , Schemmel, Johannes (Author) , Zenke, Friedemann (Author)
Format: Article (Journal)
Language:English
Published: July 2022
In: IEEE transactions on neural networks and learning systems
Year: 2022, Volume: 33, Issue: 7, Pages: 2744-2757
ISSN:2162-2388
DOI:10.1109/TNNLS.2020.3044364
Online Access:Resolving-System, kostenfrei, Volltext: https://doi.org/10.1109/TNNLS.2020.3044364
Verlag, kostenfrei, Volltext: https://ieeexplore.ieee.org/document/9311226
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Author Notes:Benjamin Cramer, Yannik Stradmann, Johannes Schemmel, Friedemann Zenke
Description
Summary: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.
Item Description:Gesehen am 27.10.2022
Physical Description:Online Resource
ISSN:2162-2388
DOI:10.1109/TNNLS.2020.3044364