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Code for "Adversarially Robust Spiking Neural Networks Through Conversion" [TMLR 2024]

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Adversarially Robust Spiking Neural Networks Through Conversion

This is the code repository of the following paper to perform adversarially robust ANN-to-SNN conversion.

"Adversarially Robust Spiking Neural Networks Through Conversion"
Ozan Özdenizci, Robert Legenstein
Transactions on Machine Learning Research (TMLR), 2024.
https://openreview.net/forum?id=I8FMYa2BdP

Reference

If you use this code or models in your research and find it helpful, please cite the following paper:

@article{ozdenizci2024adversarially,
  title={Adversarially robust spiking neural networks through conversion},
  author={Ozan {\"O}zdenizci and Robert Legenstein},
  journal={Transactions on Machine Learning Research},
  year={2024}
}

Acknowledgments

Authors of this work are affiliated with Graz University of Technology, Institute of Theoretical Computer Science, and Silicon Austria Labs, TU Graz - SAL Dependable Embedded Systems Lab, Graz, Austria. This work has been supported by the "University SAL Labs" initiative of Silicon Austria Labs (SAL) and its Austrian partner universities for applied fundamental research for electronic based systems.

Parts of this code repository is based on the following works:

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