Title
Binary Classification-Based Side-Channel Analysis
Abstract
We propose a new nonprofiled side-channel analysis (SCA) method called binary classification-based SCA (BCSCA), which accomplishes the tasks of the traditional nonprofiled SCA by solving binary classification problems with the help of neural networks. In addition, to improve the analytical efficiency, we design a new type of neural network and propose a fast implementation of BCSCA. We evaluate BCSCA on both simulated and public side-channel traces and compare BCSCA with correlation power analysis (CPA), mutual information analysis (MIA), and the state-of-the-art nonprofiled SCA method based on neural networks (NNSCA). The experimental results show that BCSCA outperforms NNSCA and MIA in all cases, and it is better than CPA on the nonlinear traces and comparable to CPA on the linear traces.
Year
DOI
Venue
2021
10.1109/AsianHOST53231.2021.9699563
2021 Asian Hardware Oriented Security and Trust Symposium (AsianHOST)
Keywords
DocType
ISBN
nonprofiled side-channel analysis,binary classification,neural networks,fast implementation
Conference
978-1-6654-4186-5
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
Chi Zhang119240.36
Xiangjun Lu200.34
Dawu Gu3644103.50