A visually meaningful medical image encryption scheme based on image steganography and memristive Hopfield neural networks

Yao, Wei, Huang, Xiangyun, Xiao, Jianhua, Yu, Fei and Sun, Yichuang (2026) A visually meaningful medical image encryption scheme based on image steganography and memristive Hopfield neural networks. Chinese Physics B (CPB), 35 (6): 068702. ISSN 1674-1056
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With the advancement of telemedicine technology, the security of digital medical images has become increasingly important. To address this issue, this paper proposes a visually meaningful color medical image encryption algorithm. First, a high-dimensional chaotic sequence is generated using a memristive Hopfield neural network. Subsequently, multi-channel pixel permutation is performed based on a chaos-driven pseudo-random strategy, followed by the implementation of a double-layer diffusion mechanism integrating cellular automata and dynamic deoxyribonucleic acid (DNA) coding. Finally, a chaos-driven cross-channel least significant bit (LSB) embedding approach is adopted. Simulation experiments and security analyses demonstrate that the proposed algorithm achieves excellent encryption performance, a large key space, and strong robustness against noise and data-loss attacks, thereby effectively ensuring the secure transmission of digital medical images.

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