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Securing Deep Spiking Neural Networks against Adversarial Attacks through Inherent Structural Parameters

机译:通过固有的结构参数确保深尖尖的神经网络免受对抗的攻击

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Deep Learning (DL) algorithms have gained popularity owing to their practical problem-solving capacity. However, they suffer from a serious integrity threat, i.e., their vulnerability to adversarial attacks. In the quest for DL trustworthiness, recent works claimed the inherent robustness of Spiking Neural Networks (SNNs) to these attacks, without considering the variability in their structural spiking parameters. This paper explores the security enhancement of SNNs through internal structural parameters. Specifically, we investigate the SNNs robustness to adversarial attacks with different values of the neuron's firing voltage thresholds and time window boundaries. We thoroughly study SNNs security under different adversarial attacks in the strong white-box setting, with different noise budgets and under variable spiking parameters. Our results show a significant impact of the structural parameters on the SNNs' security, and promising sweet spots can be reached to design trustworthy SNNs with 85% higher robustness than a traditional non-spiking DL system. To the best of our knowledge, this is the first work that investigates the impact of structural parameters on SNNs robustness to adversarial attacks. The proposed contributions and the experimental framework is available online 11https://github.com/rda-ela/SNN-Adversarial-Attacks to the community for reproducible research.
机译:由于其实际问题解决容量,深度学习(DL)算法越来越受欢迎。然而,他们患有严重的完整性威胁,即它们对对抗性袭击的脆弱性。在寻求DL可靠性中,最近的作品声称将神经网络(SNNS)的固有稳健性索取到这些攻击,而不考虑其结构尖刺参数的可变性。本文通过内部结构参数探讨了SNN的安全增强。具体地,我们研究SNNS稳健性与神经元射击电压阈值和时间窗边界的不同值的对抗性攻击。我们在强大的白盒设置中的不同逆境攻击下彻底研究了SNNS安全性,具有不同的噪声预算和可变尖峰参数。我们的结果表明,结构参数对SNNS安全性的显着影响,可以达到有希望的甜点,以设计值得信赖的SNNS,比传统的非尖刺DL系统更高的鲁棒性高85%。据我们所知,这是第一个调查结构参数对对抗对抗攻击的鲁棒性的影响的工作。拟议的捐款和实验框架在线获得 1 1 https://github.com/rda-ela/snn-adysarial- attacks为社区进行可重复的研究。

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