论文标题
SCNET:自动侧通道攻击的神经网络
SCNet: A Neural Network for Automated Side-Channel Attack
论文作者
论文摘要
侧通道攻击是一种基于有关计算机系统实现的信息而不是算法中弱点的攻击方法。侧通道攻击可以利用诸如功耗,电磁泄漏和声音之类的系统特征的信息,以损害系统。许多研究工作已针对这一领域。但是,这种攻击仍然需要强大的技能,因此只能由专家有效地执行。在这里,我们提出了SCNET,该SCNET会自动执行侧向通道攻击。我们还设计了该网络与侧通道领域知识和不同的深度学习模型相结合,以提高性能并更好地解释结果。结果表明,我们的模型可以通过更少的参数实现良好的性能。提出的模型是自动测试计算机系统鲁棒性的有用工具。
The side-channel attack is an attack method based on the information gained about implementations of computer systems, rather than weaknesses in algorithms. Information about system characteristics such as power consumption, electromagnetic leaks and sound can be exploited by the side-channel attack to compromise the system. Much research effort has been directed towards this field. However, such an attack still requires strong skills, thus can only be performed effectively by experts. Here, we propose SCNet, which automatically performs side-channel attacks. And we also design this network combining with side-channel domain knowledge and different deep learning model to improve the performance and better to explain the result. The results show that our model achieves good performance with fewer parameters. The proposed model is a useful tool for automatically testing the robustness of computer systems.