How machine learning changes the nature of cyberattacks on IoT networks: A survey
The Internet of Things (IoT) has continued gaining in popularity and importance in everyday
life in recent years. However, this development does not only present advantages. Indeed …
life in recent years. However, this development does not only present advantages. Indeed …
Sok: Deep learning-based physical side-channel analysis
Side-channel attacks represent a realistic and serious threat to the security of embedded
devices for already almost three decades. A variety of attacks and targets they can be …
devices for already almost three decades. A variety of attacks and targets they can be …
Make some noise. unleashing the power of convolutional neural networks for profiled side-channel analysis
Profiled side-channel analysis based on deep learning, and more precisely Convolutional
Neural Networks, is a paradigm showing significant potential. The results, although scarce …
Neural Networks, is a paradigm showing significant potential. The results, although scarce …
An overview of hardware security and trust: Threats, countermeasures, and design tools
Hardware security and trust have become a pressing issue during the last two decades due
to the globalization of the semiconductor supply chain and ubiquitous network connection of …
to the globalization of the semiconductor supply chain and ubiquitous network connection of …
Reinforcement learning for hyperparameter tuning in deep learning-based side-channel analysis
Deep learning represents a powerful set of techniques for profiling side-channel analysis.
The results in the last few years show that neural network architectures like multilayer …
The results in the last few years show that neural network architectures like multilayer …
The curse of class imbalance and conflicting metrics with machine learning for side-channel evaluations
We concentrate on machine learning techniques used for profiled sidechannel analysis in
the presence of imbalanced data. Such scenarios are realistic and often occurring, for …
the presence of imbalanced data. Such scenarios are realistic and often occurring, for …
I choose you: Automated hyperparameter tuning for deep learning-based side-channel analysis
Today, the deep learning-based side-channel analysis represents a widely researched
topic, with numerous results indicating the advantages of such an approach. Indeed …
topic, with numerous results indicating the advantages of such an approach. Indeed …
Strength in numbers: Improving generalization with ensembles in machine learning-based profiled side-channel analysis
The adoption of deep neural networks for profiled side-channel attacks provides powerful
options for leakage detection and key retrieval of secure products. When training a neural …
options for leakage detection and key retrieval of secure products. When training a neural …
On the performance of convolutional neural networks for side-channel analysis
In this work, we ask a question whether Convolutional Neural Networks are more suitable for
side-channel attacks than some other machine learning techniques and if yes, in what …
side-channel attacks than some other machine learning techniques and if yes, in what …
Remove some noise: On pre-processing of side-channel measurements with autoencoders
In the profiled side-channel analysis, deep learning-based techniques proved to be very
successful even when attacking targets protected with countermeasures. Still, there is no …
successful even when attacking targets protected with countermeasures. Still, there is no …