基于深度学习模型的兴趣区域检测的新型密码分析平台

Zakaria Tolba, M. Derdour, R. Menassel
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引用次数: 4

摘要

密码分析是一个审计步骤,引导设计人员开发更健壮的密码算法并评估算法的整体性能。最根本的问题是,在这个过程中,人类对密码分析结果的评估是必不可少的。如果它基于更好的标准,它可以选择性地允许向有希望的结果显著收敛,因为它不允许找到任何解决方案。为了克服这一过程中的人为干预,我们在这项工作中提出了一个新的基于有效部分检测(roi)的图像置换密码分析平台,实现了遗传算法和两个基于深度学习的模型:用于目标检测的Faster R-cnn和用于分割的Mask R-cnn。这是为了使解密密钥评估过程自动化,并最小化搜索空间,从而可以直接确定密钥的排列或其大部分。这项工作适用于彩色(RGB)图像加密的像素排列技术。它独立于排列算法,仅基于密文攻击,利用这些模型的优点,发现相邻像素之间的相关性,并通过遗传算法改善这种显著相关性。
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Towards a Novel Cryptanalysis Platform based Regions Of Interest Detection via Deep Learning models
Cryptanalysis is an audit step that leads designers to develop more robust cryptographic algorithms and assess algorithms’ overall performance. The fundamental problem is that the human evaluation of the cryptanalysis results is essential in this process. It optionally allows the remarkable convergence towards a promising result if it is based on better criteria, as it does not allow to find any solutions.To overcome the human intervention in this process we propose, in this work, a new cryptanalysis platform of image permutation-only cipher based on the detection of significant parts (ROIs) implementing the genetic algorithm and two models based on deep learning namely: Faster R-cnn for object detection and Mask R-cnn for segmentation.This is to automate the process of decryption keys evaluation and minimize the search space, which makes it possible to directly determine the permutation key or the most part of it. This work is applicable to color (RGB) images encrypted by pixel permutation techniques. It is independent of the permutation algorithm and it based on cipher text only attack by the advantages of those models exploitation to discover the correlation between adjacent pixels and to ameliorate this significant correlation by the genetic algorithm.
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