基于四维超混沌系统的新型V-Net卷积神经网络医学图像加密

Xiaowei Wang, Shoulin Yin, M. Shafiq, A. Laghari, Shahid Karim, O. Cheikhrouhou, Wajdi Alhakami, Habib Hamam
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引用次数: 12

摘要

在医学图像的传输中,如果对图像不进行处理,极有可能泄露数据和个人隐私,造成不可预测的后果。传统的加密算法处理复杂数据的能力有限。混沌系统具有随机性和遍历性的特点,在图像加密处理中具有传统加密算法无法比拟的优势。提出了一种新的基于四维超混沌系统的V-net卷积神经网络(CNN)用于医学图像加密。首先,将明文医学图像处理成4D超混沌序列图像,包括图像分割、混沌系统处理和伪随机序列生成。然后,利用V-net CNN对混沌序列进行训练,消除混沌序列的周期性。最后,对混沌序列图像进行扩散,改变原始图像像素,实现加密处理。仿真测试分析表明,该算法具有较好的效果、鲁棒性和明文敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New V-Net Convolutional Neural Network Based on Four-Dimensional Hyperchaotic System for Medical Image Encryption
In the transmission of medical images, if the image is not processed, it is very likely to leak data and personal privacy, resulting in unpredictable consequences. Traditional encryption algorithms have limited ability to deal with complex data. The chaotic system is characterized by randomness and ergodicity, which has advantages over traditional encryption algorithms in image encryption processing. A novel V-net convolutional neural network (CNN) based on four-dimensional hyperchaotic system for medical image encryption is presented in this study. Firstly, the plaintext medical images are processed into 4D hyperchaotic sequence images, including image segmentation, chaotic system processing, and pseudorandom sequence generation. Then, V-net CNN is used to train chaotic sequences to eliminate the periodicity of chaotic sequences. Finally, the chaotic sequence image is diffused to change the raw image pixel to realize the encryption processing. Simulation test analysis demonstrates that the proposed algorithm has better effect, robustness, and plaintext sensitivity.
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