评估数据加密对人工神经网络弹性的影响

R. Cantoro, N. I. Deligiannis, M. Reorda, Marcello Traiola, E. Valea
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引用次数: 6

摘要

如今,许多电子系统在非易失性存储器(NVMs)中存储有价值的知识产权(IP)信息。因此,加密机制被广泛使用,以保护这些信息不被人为攻击窃取或修改。加密技术可用于保护NVM中的应用程序代码或敏感数据集。特别是,在机器学习应用中,人工神经网络(ANN)的权重代表了一个非常有价值的IP,源于在开发阶段对系统进行长时间的训练。另一方面,实现人工神经网络应用的系统越来越多地用于安全关键领域(例如,自动驾驶),这些领域需要高可靠性水平。在之前的一篇论文中,我们已经表明,加密技术,应用于通用系统的应用程序代码,提供了一个显着更高的错误检测率。本文以一个人工神经网络应用为研究对象,评估了加密机制对可能影响人工神经网络权重的暂态故障的检测率。我们在一个预训练的人工神经网络上进行了实验,它的权值代表我们系统的敏感IP。我们执行故障注入活动来评估使用不同加密方法时人工神经网络的弹性。实验结果表明,在此类应用中,仅存在特定的加密机制就可以提高故障检测率。这可能允许设计人员同时考虑安全性和安全机制,以更低的成本获得相同的结果。
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Evaluating Data Encryption Effects on the Resilience of an Artificial Neural Network
Nowadays, many electronic systems store valuable Intellectual Property (IP) information inside Non-Volatile Memories (NVMs). Therefore, encryption mechanisms are widely used in order to protect such information from being stolen or modified by human attacks. Encryption techniques can be used for protecting the application code, or sensitive sets of data in the NVM. In particular, in machine-learning applications, the weights of an Artificial Neural Network (ANN) represent a highly valuable IP stemming from long time invested in training the system along the development phase. On the other side, systems implementing ANN applications are increasingly used in safety-critical domains (e.g., autonomous driving), where a high reliability level is required. In a previous paper, we have shown that encryption techniques, applied to the application code of generic systems, provide a significantly higher error detection rate. In this paper, we focus on an ANN application and we evaluate the detection rate induced by encryption mechanisms for transient faults possibly impacting the ANN weights. We performed experiments on a pre-trained ANN, whose weights represent the sensitive IP of our system. We executed fault injection campaigns to evaluate the ANN resilience when different encryption methods are used. Experimental results showed that the presence of specific encryption mechanisms alone induces high fault detection rates in such applications. This may allow the designer to consider security and safety mechanisms together, achieving the same results with lower costs.
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