中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
back propagation neural network based leakage characterization for practical security analysis of cryptographic implementations

文献类型:会议论文

作者Yang Shuguo ; Zhou Yongbin ; Liu Jiye ; Chen Danyang
出版日期2012
会议名称14th International Conference on Information Security and Cryptology, ICISC 2011
会议日期November 30, 2011 - December 2, 2011
会议地点Seoul, Korea, Republic of
关键词Cryptography Neural networks Security of data
页码169-185
中文摘要Side-channel attacks have posed serious threats to the physical security of cryptographic implementations. However, the effectiveness of these attacks strongly depends on the accuracy of underlying side-channel leakage characterization. Known leakage characterization models do not always apply into the real scenarios as they are working on some unrealistic assumptions about the leaking devices. In light of this, we propose a back propagation neural network based power leakage characterization attack for cryptographic devices. This attack makes full use of the intrinsic advantage of neural network in profiling non-linear mapping relationship as one basic machine learning tool, transforms the task of leakage profiling into a neural-network-supervised study process. In addition, two new attacks using this model have also been proposed, namely BP-CPA and BP-MIA. In order to justify the validity and accuracy of proposed attacks, we perform a series of experiments and carry out a detailed comparative study of them in multiple scenarios, with twelve typical attacks using mainstream power leakage characterization attacks, the results of which are measured by quantitative metrics such as SR, GE and DL. It has been turned out that BP neural network based power leakage characterization attack can largely improve the effectiveness of the attacks, regardless of the impact of noise and the limited number of power traces. Taking CPA only as one example, BP-CPA is 16.5% better than existing non-linear leakage characterized based attacks with respect to DL, and is 154% better than original CPA. © 2012 Springer-Verlag.
英文摘要Side-channel attacks have posed serious threats to the physical security of cryptographic implementations. However, the effectiveness of these attacks strongly depends on the accuracy of underlying side-channel leakage characterization. Known leakage characterization models do not always apply into the real scenarios as they are working on some unrealistic assumptions about the leaking devices. In light of this, we propose a back propagation neural network based power leakage characterization attack for cryptographic devices. This attack makes full use of the intrinsic advantage of neural network in profiling non-linear mapping relationship as one basic machine learning tool, transforms the task of leakage profiling into a neural-network-supervised study process. In addition, two new attacks using this model have also been proposed, namely BP-CPA and BP-MIA. In order to justify the validity and accuracy of proposed attacks, we perform a series of experiments and carry out a detailed comparative study of them in multiple scenarios, with twelve typical attacks using mainstream power leakage characterization attacks, the results of which are measured by quantitative metrics such as SR, GE and DL. It has been turned out that BP neural network based power leakage characterization attack can largely improve the effectiveness of the attacks, regardless of the impact of noise and the limited number of power traces. Taking CPA only as one example, BP-CPA is 16.5% better than existing non-linear leakage characterized based attacks with respect to DL, and is 154% better than original CPA. © 2012 Springer-Verlag.
收录类别EI
会议主办者National Security Research Institute (NSRI); Electronics and Telecommunications Research Institute (ETRI); Korea Internet and Security Agency (KISA); Ministry of Public Administration and Security (MOPAS)
会议录Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
语种英语
ISSN号0302-9743
ISBN号9783642319112
源URL[http://ir.iscas.ac.cn/handle/311060/15743]  
专题软件研究所_软件所图书馆_会议论文
推荐引用方式
GB/T 7714
Yang Shuguo,Zhou Yongbin,Liu Jiye,et al. back propagation neural network based leakage characterization for practical security analysis of cryptographic implementations[C]. 见:14th International Conference on Information Security and Cryptology, ICISC 2011. Seoul, Korea, Republic of. November 30, 2011 - December 2, 2011.

入库方式: OAI收割

来源:软件研究所

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