The deep learning-based side-channel analysis represents a powerful and easy to deploy option for profiled side-channel attacks. A detailed tuning phase is often required to reach a good performance where one first needs to select relevant hyperparameters and then tune them. A common selection for the tuning phase are hyperparameters connected with the neural network architecture, while those influencing the training process are less explored. In this work, we concentrate on the optimizer hyperparameter, and we show that this hyperparameter has a significant role in the attack performance. Our results show that common choices of optimizers (Adam and RMSprop) indeed work well, but they easily overfit, which means that we must use short train...
Deep learning represents a powerful set of techniques for profiling side-channel analysis. The resul...
In recent years, the advent of deep neural networks opened new perspectives for security evaluations...
The adoption of deep neural networks for profiled side-channel attacks provides powerful options for...
With the recent increase in computational power, deep learning is being applied in many different fi...
The use of deep learning techniques to perform side-channel analysis attracted the attention of many...
International audienceThe use of deep learning techniques to perform side-channel analysis attracted...
One of the main promoted advantages of deep learning in profiling sidechannel analysis is the possib...
A side-channel attack (SCA) recovers secret data from a device by exploiting unintended physical lea...
Recently, several studies have been published on the application of deep learning to enhance Side-Ch...
In recent years, many papers have shown that deep learning can be beneficial for profiled side-chann...
The usage of deep learning in profiled side-channel analysis requires a careful selection of neural ...
Side-channel attacks (SCA) aim to extract a secret cryptographic key from a device, based on uninten...
Side-channel attacks represent one of the most powerful category of attacks on cryptographic devic...
Deep learning represents a powerful set of techniques for profiling side-channel analysis. The resul...
In recent years, the advent of deep neural networks opened new perspectives for security evaluations...
The adoption of deep neural networks for profiled side-channel attacks provides powerful options for...
With the recent increase in computational power, deep learning is being applied in many different fi...
The use of deep learning techniques to perform side-channel analysis attracted the attention of many...
International audienceThe use of deep learning techniques to perform side-channel analysis attracted...
One of the main promoted advantages of deep learning in profiling sidechannel analysis is the possib...
A side-channel attack (SCA) recovers secret data from a device by exploiting unintended physical lea...
Recently, several studies have been published on the application of deep learning to enhance Side-Ch...
In recent years, many papers have shown that deep learning can be beneficial for profiled side-chann...
The usage of deep learning in profiled side-channel analysis requires a careful selection of neural ...
Side-channel attacks (SCA) aim to extract a secret cryptographic key from a device, based on uninten...
Side-channel attacks represent one of the most powerful category of attacks on cryptographic devic...
Deep learning represents a powerful set of techniques for profiling side-channel analysis. The resul...
In recent years, the advent of deep neural networks opened new perspectives for security evaluations...
The adoption of deep neural networks for profiled side-channel attacks provides powerful options for...