DocumentCode
717008
Title
Neural network based attack on a masked implementation of AES
Author
Gilmore, Richard ; Hanley, Neil ; O´Neill, Maire
Author_Institution
Center for Secure Inf. Technol., Queen´s Univ. Belfast, Belfast, UK
fYear
2015
fDate
5-7 May 2015
Firstpage
106
Lastpage
111
Abstract
Masked implementations of cryptographic algorithms are often used in commercial embedded cryptographic devices to increase their resistance to side channel attacks. In this work we show how neural networks can be used to both identify the mask value, and to subsequently identify the secret key value with a single attack trace with high probability. We propose the use of a pre-processing step using principal component analysis (PCA) to significantly increase the success of the attack. We have developed a classifier that can correctly identify the mask for each trace, hence removing the security provided by that mask and reducing the attack to being equivalent to an attack against an unprotected implementation. The attack is performed on the freely available differential power analysis (DPA) contest data set to allow our work to be easily reproducible. We show that neural networks allow for a robust and efficient classification in the context of side-channel attacks.
Keywords
cryptography; neural nets; pattern classification; principal component analysis; AES; Advanced Encryption Standard; DPA; PCA; cryptographic algorithms; differential power analysis contest data set; embedded cryptographic devices; machine learning; mask value identification; masked implementation; neural network based attack; principal component analysis; secret key value identification; side channel attacks; Artificial neural networks; Cryptography; Error analysis; Hardware; Power demand; Principal component analysis; Training; AES; SCA; machine learning; masking; neural network;
fLanguage
English
Publisher
ieee
Conference_Titel
Hardware Oriented Security and Trust (HOST), 2015 IEEE International Symposium on
Conference_Location
Washington, DC
Type
conf
DOI
10.1109/HST.2015.7140247
Filename
7140247
Link To Document