MedicalFuzzySec:一种新的隐写技术,利用模糊逻辑来确保医学图像中电子患者数据(EPD)的隐藏

Moh Rosy Haqqy Aminy , Ntivuguruzwa Jean De La Croix , Tohari Ahmad , Emmanuel Bugingo , François Xavier Rugema
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引用次数: 0

摘要

医疗诊断系统产生敏感的患者信息,在传输和存储过程中需要最佳的保护。图像隐写术提供了一种嵌入秘密数据的安全方法,使其作为原始图像的一部分无法被肉眼察觉。然而,将普通图像隐写技术直接应用于医学图像会降低传输数据的质量,并且这些失真会使承载秘密信息的图像在医学解释中显得可疑和不准确。医学图像中的隐写术还处于早期阶段,主要侧重于基本的数据隐藏技术,安全性增强有限。本研究引入MedicalFuzzySec,一个专用的隐写框架,通过模糊逻辑引导差分展开来隐藏医学图像中的电子患者数据(EPD)。MedicalFuzzySec的独创性在于其自适应嵌入机制,利用模糊推理规则选择性地识别最佳像素区域,在对诊断图像质量影响最小的情况下确保高数据安全性。MedicalFuzzySec通过提供针对临床图像标准量身定制的安全、高保真解决方案,解决了现有方法的局限性,包括图像退化和有效载荷处理不足。实验结果证实,MedicalFuzzySec始终保持着较高的不可见性和鲁棒性,PSNR值在56.06 dB ~ 76.29 dB之间,SSIM值在0.989 ~ 0.999之间,是医疗系统中EPD安全传输的最先进解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MedicalFuzzySec: A novel steganography technique using fuzzy logic to secure electronic patient data (EPD) concealment in medical images
Medical diagnostic systems generate sensitive patient information that requires optimal protection during transmission and storage. Image steganography provides a secure method for embedding secret data, making it imperceptible to the naked eye as part of the original image. However, applying general image steganography directly to medical images can compromise the quality of the transmitted data, and the distortions make the image hosting the secret information appear suspicious and inaccurate for medical interpretation. Steganography in medical images is in its early stages, focusing primarily on basic data-hiding techniques with limited security enhancements. This study introduces MedicalFuzzySec, a dedicated steganographic framework for concealing Electronic Patient Data (EPD) in medical images through fuzzy logic-guided difference expansion. The originality of MedicalFuzzySec lies in its adaptive embedding mechanism, which selectively identifies optimal pixel regions using fuzzy inference rules to ensure high data security with minimal impact on diagnostic image quality. MedicalFuzzySec addresses the limitations of existing approaches, including image degradation and insufficient payload handling, by offering a secure, high-fidelity solution tailored to clinical image standards. Experimental results confirm that MedicalFuzzySec consistently achieves high imperceptibility and robustness, with PSNR values ranging from 56.06 dB to 76.29 dB and SSIM values from 0.989 to 0.999, positioning it as a state-of-the-art solution for secure EPD transmission in medical systems.
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