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一种基于分形朱利亚集和三维洛伦兹混沌映射的新型混合安全图像加密方法。

A Novel Hybrid Secure Image Encryption Based on Julia Set of Fractals and 3D Lorenz Chaotic Map.

作者信息

Masood Fawad, Ahmad Jawad, Shah Syed Aziz, Jamal Sajjad Shaukat, Hussain Iqtadar

机构信息

Department of Electrical Engineering, Institute of Space Technology, Islamabad Highway 1, Islamabad 44000, Pakistan.

School of Computing, Edinburgh Napier University, Edinburgh EH10 5DT, UK.

出版信息

Entropy (Basel). 2020 Feb 28;22(3):274. doi: 10.3390/e22030274.

DOI:10.3390/e22030274
PMID:33286048
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7516729/
Abstract

Chaos-based encryption schemes have attracted many researchers around the world in the digital image security domain. Digital images can be secured using existing chaotic maps, multiple chaotic maps, and several other hybrid dynamic systems that enhance the non-linearity of digital images. The combined property of confusion and diffusion was introduced by Claude Shannon which can be employed for digital image security. In this paper, we proposed a novel system that is computationally less expensive and provided a higher level of security. The system is based on a shuffling process with fractals key along with three-dimensional Lorenz chaotic map. The shuffling process added the confusion property and the pixels of the standard image is shuffled. Three-dimensional Lorenz chaotic map is used for a diffusion process which distorted all pixels of the image. In the statistical security test, means square error (MSE) evaluated error value was greater than the average value of 10000 for all standard images. The value of peak signal to noise (PSNR) was 7.69(dB) for the test image. Moreover, the calculated correlation coefficient values for each direction of the encrypted images was less than zero with a number of pixel change rate (NPCR) higher than 99%. During the security test, the entropy values were more than 7.9 for each grey channel which is almost equal to the ideal value of 8 for an 8-bit system. Numerous security tests and low computational complexity tests validate the security, robustness, and real-time implementation of the presented scheme.

摘要

基于混沌的加密方案在数字图像安全领域吸引了世界各地的众多研究人员。可以使用现有的混沌映射、多个混沌映射以及其他一些增强数字图像非线性的混合动态系统来保护数字图像的安全。克劳德·香农引入了混淆和扩散的组合特性,可用于数字图像安全。在本文中,我们提出了一种计算成本较低且安全性更高的新型系统。该系统基于带有分形密钥的置乱过程以及三维洛伦兹混沌映射。置乱过程增加了混淆特性,对标准图像的像素进行了置乱。三维洛伦兹混沌映射用于扩散过程,使图像的所有像素发生扭曲。在统计安全测试中,所有标准图像的均方误差(MSE)评估误差值均大于10000的平均值。测试图像的峰值信噪比(PSNR)为7.69(dB)。此外,加密图像各个方向的计算相关系数值均小于零,像素变化率(NPCR)高于99%。在安全测试期间,每个灰度通道的熵值均大于7.9,几乎等于8位系统的理想值8。大量的安全测试和低计算复杂度测试验证了所提方案的安全性、鲁棒性和实时可实现性。

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