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Multilabel Deep Learning-Based Side-Channel Attack

机译:基于多书的深度学习侧渠攻击

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摘要

In recent years, deep learning methods make a big difference in side-channel attack (SCA) community especially in the profiled scenario. Multiclass classification method is the common way to complete such classification task. In this article, we propose a novel SCA method utilizing multilabel classification from bit-to-byte view. Accordingly, each leakage trace has eight labels when considering a byte. The experimental results on several datasets show that our multilabel classification method is efficient and even performs better in some situations compared with the original multiclass classification model while model complexity is much reduced. Besides, our multilabel model can be seen as ensemble of monobit models and we verify the ensemble effect experimentally.
机译:近年来,深度学习方法在侧渠攻击(SCA)社区中具有较大的差异,特别是在异形方案中。 多级分类方法是完成此类分类任务的常用方法。 在本文中,我们提出了一种新的SCA方法,利用来自位到字节视图的多标签分类。 因此,在考虑字节时,每个泄漏迹线都有八个标签。 在多个数据集上的实验结果表明,与原始多字母分类模型相比,我们的Multilabel分类方法在某些情况下是有效的,甚至在某些情况下更好地执行,而模型复杂性大大降低。 此外,我们的Multilabel模型可以被视为Monobit模型的集合,我们通过实验验证集合效果。

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