Deterministic and Statistical Strategies to Protect ANNs against Fault Injection Attacks

Troya Çağıl Köylü, C. Reinbrecht, S. Hamdioui, M. Taouil
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引用次数: 2

Abstract

Attificial neural networks are currently used for many tasks, including safety critical ones such as automated driving. Hence, it is very important to protect them against faults and fault attacks. In this work, we propose two fault injection attack detection mechanisms: one based on using output labels for a reference input, and the other on the activations of neurons. First, we calibrate our detectors during normal conditions. Thereafter, we verify them to maximize fault detection performance. To prove the effectiveness of our solution, we consider highly employed neural networks (AlexNet, GoogleNet, and VGG) with their associated dataset ImageNet. Our results show that for both detectors we are able to obtain a high rate of coverage against faults, typically above 96%. Moreover, the hardware and software implementations of our detector indicate an extremely low area and time overhead.
防范故障注入攻击的确定性和统计策略
人工神经网络目前被用于许多任务,包括安全关键任务,如自动驾驶。因此,保护它们免受故障和故障攻击是非常重要的。在这项工作中,我们提出了两种故障注入攻击检测机制:一种基于使用输出标签作为参考输入,另一种基于神经元的激活。首先,我们在正常情况下校准我们的探测器。然后,我们验证它们以最大限度地提高故障检测性能。为了证明我们的解决方案的有效性,我们考虑了高度使用的神经网络(AlexNet, GoogleNet和VGG)及其相关数据集ImageNet。我们的结果表明,对于这两个检测器,我们都能够获得很高的故障覆盖率,通常在96%以上。此外,我们的检测器的硬件和软件实现表明极低的面积和时间开销。
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