A Multi-Layer Data Encryption and Decryption Mechanism Employing Cryptography and Steganography

Tahsina Tabassum, Md. Ashiq Mahmood
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引用次数: 1

Abstract

Information protection is a significant matter for both oneself and companies involved in one manner of communication or the other, particularly in cyberspace, due to the development of digital computing and communication. As a result, Steganography and Cryptography have become some of the most complementary procedures in data protection. In this modern technology era, individually employing Cryptography or Steganography will not afford the expected security from intruders. Our proposed method employs a unification of Steganography and Cryptography, which utilizes the Blowfish algorithm, the Advanced Encryption Standard algorithm and remarkable features of the residue numbering system, the Least Significant Bit algorithm and the operators of Genetic Algorithm. The outcomes show that more than 70% minimal error is reduced (for stego images) compared to the previous methods in terms of Peak Signal to Noise Ratio (PSNR) and Mean Square Error (MSE). This approach above is less complicated concerning runtime and consumes less power. Higher NPCR/UACI value in the result indicates an increased level of security.
采用密码学和隐写术的多层数据加解密机制
由于数字计算和通信的发展,信息保护对个人和涉及一种或另一种通信方式的公司来说都是一件重要的事情,特别是在网络空间。因此,隐写术和密码学已成为数据保护中最互补的程序。在这个现代技术时代,单独使用加密或隐写术将无法提供入侵者预期的安全性。该方法采用隐写与密码学的统一,利用了Blowfish算法、高级加密标准算法和剩余编号系统的显著特性、最低有效位算法和遗传算法的算子。结果表明,在峰值信噪比(PSNR)和均方误差(MSE)方面,与之前的方法相比,最小误差减少了70%以上(对于隐写图像)。上述方法在运行时方面不那么复杂,功耗也更低。结果中NPCR/UACI值越高,说明安全等级越高。
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