Improving Location-based Thermal Emission Side-Channel Analysis Using Iterative Transfer Learning
This paper proposes the use of iterative transfer learning applied to deep learning models for side-channel attacks. Currently, most of the side-channel attack methods train a model for each individual byte, without considering the correlation between bytes. However, since the models' parameter...
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Zusammenfassung: | This paper proposes the use of iterative transfer learning applied to deep
learning models for side-channel attacks. Currently, most of the side-channel
attack methods train a model for each individual byte, without considering the
correlation between bytes. However, since the models' parameters for attacking
different bytes may be similar, we can leverage transfer learning, meaning that
we first train the model for one of the key bytes, then use the trained model
as a pretrained model for the remaining bytes. This technique can be applied
iteratively, a process known as iterative transfer learning. Experimental
results show that when using thermal or power consumption map images as input,
and multilayer perceptron or convolutional neural network as the model, our
method improves average performance, especially when the amount of data is
insufficient. |
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DOI: | 10.48550/arxiv.2412.21030 |