Utilizing Machine Learning Models to Determine the Security Level of Different Cryptosystems

Kantipudi Pranathi, Bodepudi Lakshmi Priya, A. Y. Felix
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Abstract

Due to recent developments in multimedia technology, digital data security has emerged as an important concern. To improve upon the state of the art in terms of security, researchers often recommend modifications to procedures that have previously been implemented. However, many suggested encryption algorithms have proved unsafe over the previous several decades, putting sensitive data at risk. It is crucial to use the most suitable encryption strategy to defend against such attacks; nevertheless, the type of data being protected might affect the method that is most appropriate for each given situation. However, systematically evaluating various cryptosystems to choose the optimal one may consume significant computational effort. To rapidly and reliably choose the appropriate algorithm, an SVM (support vector machine) is proposed as a security-level identification tool for photo encryption algorithms. In this research, a dataset was compiled with the help of common encryption security criteria, including Security, Peak signal to noise ratio, Homogeneity, Correlation, Contrast, Energy, Entropy, and Mean Square Error. These values are used as extracted characteristics from various cypher pictures. There are three tiers of security for dataset labels: strong, acceptable, and weak. For evaluating the effectiveness of the proposed model, the calculated accuracy and results demonstrate the value of this SVM system.
利用机器学习模型确定不同密码系统的安全级别
由于多媒体技术的发展,数字数据的安全已成为一个重要的问题。为了提高安全性方面的技术水平,研究人员经常建议对以前实现的程序进行修改。然而,许多人认为,在过去的几十年里,加密算法被证明是不安全的,将敏感数据置于危险之中。使用最合适的加密策略来防御此类攻击至关重要;然而,受保护的数据类型可能会影响最适合每种给定情况的方法。然而,系统地评估各种密码系统以选择最优密码系统可能会消耗大量的计算工作量。为了快速、可靠地选择合适的算法,提出了一种支持向量机(SVM)作为照片加密算法的安全级别识别工具。在本研究中,利用常见的加密安全标准,包括安全性、峰值信噪比、同质性、相关性、对比度、能量、熵和均方误差,编制了一个数据集。这些值被用作从各种密码图像中提取的特征。数据集标签的安全性有三层:强、可接受和弱。为了评价模型的有效性,计算精度和结果验证了该支持向量机系统的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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