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Paper 2014/228

Cryptanalysis of SP Networks with Partial Non-Linear Layers

Achiya Bar-On and Itai Dinur and Orr Dunkelman and Virginie Lallemand and Nathan Keller and Boaz Tsaban

Abstract

Design of SP networks in which the non-linear layer is applied to only a part of the state in each round was suggested by Gérard et al.~at CHES 2013. Besides performance advantage on certain platforms, such a design allows for more efficient masking techniques that can mitigate side-channel attacks with a small performance overhead. In this paper we present generic techniques for differential and linear cryptanalysis of SP networks with partial non-linear layers, including an automated characteristic search tool and dedicated key-recovery algorithms. Our techniques can be used both for cryptanalysis of such schemes and for proving their security with respect to basic differential and linear cryptanalysis, succeeding where previous automated analysis tools seem to fail. We first apply our techniques to the block cipher Zorro (designed by Gérard et al.~following their methodology), obtaining practical attacks on the cipher which where fully simulated on a single desktop PC in a few days. Then, we propose a mild change to Zorro, and formally prove its security against basic differential and linear cryptanalysis. We conclude that there is no inherent flaw in the design strategy of Gérard et al., and it can be used in future designs, where our tools should prove useful.

Metadata
Available format(s)
PDF
Publication info
A minor revision of an IACR publication in EUROCRYPT 2015
Keywords
Block cipherLightweightZorrodifferential cryptanalysislinear cryptanalysis
Contact author(s)
dinur @ di ens fr
History
2015-05-26: last of 5 revisions
2014-03-29: received
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Short URL
https://ia.cr/2014/228
License
Creative Commons Attribution
CC BY
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