Error correction capabilities in block ciphers

A. Belal, B. Owaidat, N. Saleh, R. Jaber
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引用次数: 2

Abstract

In information theory, the Hamming distance between two strings of equal length is the number of positions at which the corresponding symbols are different. It measures the minimum number of substitutions required to change one string into the other, or the number of errors that transformed one string into the other. The process of detecting errors in a sequence of bits is determined by comparing this sequence to a dictionary of encodings, if found then the pattern is correct, otherwise an error has occurred. In order to correct the errors, the original pattern is substituted with the closest pattern in the dictionary, i.e. the pattern with the smallest hamming distance from the original. A code having a minimum Hamming distance d, can typically detect up to d - 1 and correct up to (d - 1)/2 errors in a code word. In this paper we are going to study the possibility to design an encoding scheme by using random patterns in the dictionary that are created by a secure encryption algorithm, and we are going to test the error correction capabilities of our code. For our study, we used a model in which the code words are represented by whole numbers and an error of size r will change the message number by ± r. So, for example, a single error in the message x=7 will change the value of x to 8 or 6, and if x=7 is received as y=10 then an error of size 3 has occurred. The study will be as follows: if we have K numbers selected randomly from {1, 2, 3 ... N} where K<;N, what is the expected minimum distance between the numbers that we will get? To reach our objective, we designed a tool that will find the smallest distance between some K selected numbers out of N, and we were able to show theoretically and practically that for any N, there exist K<;N such that the minimum distance between those K selected numbers is definitely going to be 1, and therefore we cannot detect or correct any error.
分组密码中的纠错能力
在信息论中,两个长度相等的字符串之间的汉明距离是对应符号不同的位置的数目。它测量将一个字符串转换为另一个字符串所需的最小替换次数,或者将一个字符串转换为另一个字符串所需的错误次数。在位序列中检测错误的过程是通过将该序列与编码字典进行比较来确定的,如果找到则模式正确,否则发生错误。为了纠正错误,将原始模式替换为字典中最接近的模式,即与原始模式汉明距离最小的模式。具有最小汉明距离d的码通常可以检测到d - 1并纠正码字中最多(d - 1)/2的错误。在本文中,我们将研究通过使用由安全加密算法创建的字典中的随机模式来设计编码方案的可能性,并且我们将测试我们的代码的纠错能力。在我们的研究中,我们使用了一个模型,其中码字用整数表示,大小为r的错误将使消息数改变±r。因此,例如,消息x=7中的单个错误将使x的值改变为8或6,如果接收到x=7为y=10,则发生了大小为3的错误。研究将如下:如果我们从{1,2,3…N}其中K<;N,我们得到的两个数之间的期望最小距离是多少?为了达到我们的目标,我们设计了一个工具,可以从N中找出K个选定数之间的最小距离,并且我们能够从理论上和实践上证明,对于任何N,都存在K<;N,使得这K个选定数之间的最小距离肯定是1,因此我们无法检测或纠正任何错误。
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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