Efficient implementation of image representation, visual geometry group with 19 layers and residual network with 152 layers for intrusion detection from UNSW‐NB15 dataset

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Youssef F. Sallam, Samy Abd El-Nabi, W. El-shafai, HossamEl-din H. Ahmed, A. Saleeb, Nirmeen A. El-Bahnasawy, F. A. Abd El-Samie
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引用次数: 1

Abstract

The Internet offers humanity many distinctive and indispensable services, whether for individuals or for institutions and companies. This great role has attracted the Internet attackers to develop their mechanisms to capture and obtain the data by illegal methods. This growth in the number of cyber‐attacks made scientists in a real challenge, to find advanced methods to face this danger. Due to the shortcomings of traditional data security means such as firewalls, encryption, and so forth, the motivation became to develop alternative systems to detect smart attacks. Intrusion detection systems (IDSs) have made remarkable progress in cyber‐security. They monitor the traffic in real time and continuously to detect the network attacks, giving alerts to the network administrator. In this article, two IDSs are introduced based on principles of transfer learning (TL) with convolutional neural networks. Our systems are built using the visual geometry group (VGG19) and residual network with 152 layers (ResNet152). UNSW‐NB15 intrusion detection dataset is used to evaluate the models. The proposals achieve high levels of precision, recall, and F1_score as 99%, 99%, and 99%, respectively. These achievements prove the efficiency of the proposed models in capturing cyber‐attacks with low alert rates.
从UNSW‐NB15数据集高效实现图像表示、19层视觉几何组和152层残差网络,用于入侵检测
互联网为人类提供了许多独特而不可或缺的服务,无论是为个人还是为机构和公司。这一巨大作用吸引了互联网攻击者开发他们的机制,通过非法方法捕获和获取数据。网络攻击数量的增长使科学家们面临着真正的挑战,要找到应对这种危险的先进方法。由于传统数据安全手段(如防火墙、加密等)的缺点,人们开始开发替代系统来检测智能攻击。入侵检测系统(IDS)在网络安全方面取得了显著进展。他们实时、连续地监控流量,以检测网络攻击,并向网络管理员发出警报。在本文中,基于卷积神经网络的迁移学习(TL)原理,介绍了两个IDS。我们的系统是使用视觉几何组(VGG19)和具有152层的残差网络(ResNet152)构建的。UNSW‐NB15入侵检测数据集用于评估模型。这些提案分别实现了99%、99%和99%的高精度、召回率和F1_score。这些成就证明了所提出的模型在捕捉低警报率的网络攻击方面的效率。
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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