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Deep learning mitigates but does not annihilate the need of aligned traces and a generalized ResNet model for side-channel attacks

机译:深度学习缓解但并未歼灭对齐迹线的需要和侧通道攻击的广义Reset模型

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摘要

We consider the question whether synchronization/alignment methods are still usefulecessary in the context of side-channel attacks exploiting deep learning algorithms. While earlier works have shown that such methods/algorithms have a remarkable tolerance to misaligned measurements, we answer positively and describe experimental case studies of side-channel attacks against a key transportation layer and an AES S-box where such a preprocessing remains beneficial (and sometimes necessary) to perform efficient key recoveries. Our results also introduce generalized residual networks as a powerful alternative to other deep learning tools (e.g., convolutional neural networks and multilayer perceptrons) that have been considered so far in the field of side-channel analysis. In our experimental case studies, it outperforms the other three published state-of-the-art neural network models for the data sets with and without alignment, and it even outperforms the published optimized CNN model with the public ASCAD data set. Conclusions are naturally implementation-specific and could differ with other data sets, other values for the hyper-parameters, other machine learning models and other alignment techniques.
机译:我们认为,在利用深度学习算法的侧通道攻击的上下文中,如何同步/对准方法仍然有用/必要的问题。虽然早期的作品表明,这种方法/算法对错位测量具有显着的耐受性,但是我们积极回答并描述对侧通道攻击的实验性案例研究,以及这种预处理仍然有益的侧通道攻击和AES S盒的研究有时必要)执行有效的关键恢复。我们的结果还介绍了迄今为止在侧通道分析领域所考虑的其他深度学习工具(例如,卷积神经网络和多层感知者)的强大替代方案。在我们的实验性案例研究中,它优于其他三个出版的最先进的神经网络模型,用于数据集,无需对齐,甚至优于具有公共亚锐数据集的已发布的优化CNN模型。结论是自然的实现特定的,与其他数据集可能不同,超参数的其他值,其他机器学习模型和其他对准技术。

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