Image encryption algorithm using chaotic maps and cellular automata

Lanhang Li, Yuling Luo, Shubin Tang, Lvchen Cao, Xue Ouyang
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Abstract

Nowadays, some encryption schemes are not sensitive enough to plain-image, which leads to poor robustness and the scheme is vulnerability to attacks. By employing chaotic maps and cellular automata (CA), a novel image encryption algorithm is presented in this work to increase the sensitivity to plain-image and improve the security. Firstly, initial values of the two-dimensional Logistic-Sine-coupling map (2D-LSCM) and the Logistic-Sine-Cosine map (LSC) are calculated by the SHA-256 hash value of original image, and the process of diffusion is conducted next. Secondly, the key matrices are produced by iterating chaotic map in the process of permutation. The diffused image is scrambled by the index matrices, which are produced by sorting every row or column of the key matrices. Finally, the previous scrambled image is transformed into cipher-image by using CA. The experimental results and theoretical analysis prove that the proposed scheme owns good security as it can effectively resist a variety of attacks.
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使用混沌映射和元胞自动机的图像加密算法
目前,一些加密方案对明文图像不够敏感,鲁棒性差,容易受到攻击。本文利用混沌映射和元胞自动机(CA),提出了一种新的图像加密算法,以提高对普通图像的灵敏度和安全性。首先,利用原始图像的SHA-256哈希值计算二维logistic -正弦耦合映射(2D-LSCM)和logistic -正弦-余弦映射(LSC)的初始值,然后进行扩散处理。其次,在置换过程中通过迭代混沌映射生成关键矩阵;扩散图像被索引矩阵打乱,索引矩阵是通过对键矩阵的每一行或每一列进行排序而产生的。最后,利用CA将之前的加扰图像转换为密码图像。实验结果和理论分析证明,所提出的方案能够有效抵御各种攻击,具有良好的安全性。
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