Cracking a hierarchical chaotic image encryption algorithm based on permutation
May 02, 2015 Β· Declared Dead Β· π Signal Processing
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Authors
Chengqing Li
arXiv ID
1505.00335
Category
cs.CR: Cryptography & Security
Citations
170
Venue
Signal Processing
Last Checked
4 months ago
Abstract
In year 2000, an efficient hierarchical chaotic image encryption (HCIE) algorithm was proposed, which divides a plain-image of size $M\times N$ with $T$ possible value levels into $K$ blocks of the same size and then operates position permutation on two levels: intra-block and inter-block. As a typical position permutation-only encryption algorithm, it has received intensive attention. The present paper analyzes specific security performance of HCIE against ciphertext-only attack and known/chosen-plaintext attack. It is found that only $O(\lceil\log_T(M\cdot N/K) \rceil)$ known/chosen plain-images are sufficient to achieve a good performance, and the computational complexity is $O(M\cdot N\cdot \lceil\log_T(M\cdot N/K) \rceil)$, which effectively demonstrates that hierarchical permutation-only image encryption algorithms are less secure than normal (i.e., non-hierarchical) ones. Detailed experiment results are given to verify the feasibility of the known-plaintext attack. In addition, it is pointed out that the security of HCIE against ciphertext-only attack was much overestimated.
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