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Leveraging Deep CNN and Transfer Learning for Side-Channel Attack

机译:利用深层CNN并转移侧通道攻击

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The adoption of deep neural networks for profiled side-channel attacks provides powerful options for leakage detection and key retrieval of secure products. Although deep learning is being widely adopted for computer vision, less research has been prominent in template-based profiling power SCA attacks. In addition, most of the existing works fall into a one-dimensional (1-D) CNN technique rather than two-dimensional (2-D) CNN methods. Training a deep 2-D CNN from scratch is computationally expensive and requires a large amount of training data. To overcome these challenges, we adopt deep 2-D CNNs, GoogLeNet, InceptionV3, VGG16, and MobileNetV2 pre-trained to identify all possible AES key bytes. In order to use 2-D CNN and transfer learning, we also propose a novel multi-scale continuous wavelet transform of the power traces and generate scalograms from the wavelet coefficients. Moreover, we propose ResNet 1-D CNN architecture using power traces signal to break AES-128 implementation. To evaluate our proposed work, a key rank metric with the ASCAD dataset is utilized. Our proposed deep CNN framework achieves $geq 99$ accuracy when key rank is less than 10.
机译:采用深度神经网络,用于分析侧通道攻击为安全产品的泄漏检测和密钥检索提供了强大的选择。虽然深入学习被广泛用于计算机愿景,但在基于模板的分析功率SCA攻击中突出的研究较少。此外,大多数现有工程均落入一维(1-D)CNN技术而不是二维(2-D)CNN方法。从头划痕训练深度2-D CNN是计算昂贵的并且需要大量的训练数据。为了克服这些挑战,我们采用深度2-D CNNS,Googlenet,Inceptionv3,VGG16和MobileNetv2预训练,以识别所有可能的AES密钥字节。为了使用2-D CNN和转移学习,我们还提出了一种新的电力迹线的多尺度连续小波变换,并从小波系数产生缩放。此外,我们使用电力迹线信号提出Reset 1-D CNN架构以打破AES-128实现。为了评估我们所提出的工作,利用了一个带有ASCAD数据集的关键级别度量。我们提出的深层CNN框架达到$ GEQ 99 $准确性,当关键排名小于10时。

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