利用k -均值聚类防御椭圆曲线密码中的频率分析

Bh. Padma, D. Chandravathi, Lanka Pratibha
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引用次数: 1

摘要

椭圆曲线密码学(ECC)是基于离散对数硬度的非对称密钥密码学的一次革命。ECC提供了轻量级加密,因为它为较小的密钥提供了相同的安全性,并减少了处理开销。但非对称方案容易受到明文攻击、已知密文攻击等多种密码攻击。频率分析是密文攻击的一种,是一种被动流量分析场景,攻击者通过研究密文中单个字母或一组字母的出现频率或出现频率来预测明文部分。分组密码模式不用于非对称密钥加密,因为使用非对称方案加密许多块确实很慢,并且CBC传播传输错误。因此,在本研究中,我们提出了一种新的方法来防御ECC中的频率分析,使用K-Means聚类来防御频率分析。在这种方法中,ECC对频率分析的安全性是通过对曲线的点进行聚类,并在每次加密时选择不同的聚类来编码文本来实现的。该技术破坏了密文的规律性,从而防范了密文攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defense Against Frequency Analysis In Elliptic Curve Cryptography Using K-Means Clustering
Elliptic Curve Cryptography (ECC) is a revolution in asymmetric key cryptography which is based on the hardness of discrete logarithms. ECC offers lightweight encryption as it presents equal security for smaller keys, and reduces processing overhead. But asymmetric schemes are vulnerable to several cryptographic attacks such as plaintext attacks, known cipher text attacks etc. Frequency analysis is a type of cipher text attack which is a passive traffic analysis scenario, where an opponent studies the frequency or occurrence of single letter or groups of letters in a cipher text to predict the plain text part. Block cipher modes are not used in asymmetric key encryption because encrypting many blocks with an asymmetric scheme is literally slow and CBC propagates transmission errors. Therefore, in this research we present a new approach to defence against frequency analysis in ECC using K-Means clustering to defence against Frequency Analysis. In this proposed methodology, security of ECC against frequency analysis is achieved by clustering the points of the curve and selecting different cluster for encoding a text each time it is encrypted. This technique destroys the regularities in the cipher text and thereby guards against cipher text attacks.
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