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Intrusion Traffic Detection and Characterization using Deep Image Learning

机译:使用深度图像学习的入侵流量检测和特征描述

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摘要

The security community has witnessed an unprecedented upsurge in cyber attacks in recent years. These attacks have proved to be successful in achieving their catastrophic objectives. Intrusion detection and prevention systems remain the principal point of defense against these devastating attacks. However, most of the anomaly datasets in the past are neither up-to-date nor reliable. Researchers used various machine learning techniques to classify anomaly-based attacks due to their capability to keep pace with the evolution of such attacks and gave encouraging predictions. Nevertheless, deep neural networks turned out to be revolutionary in detecting and characterizing such intrusions. In this paper, first of all, we propose an imagebased deep neural model to classify various attacks by using two comprehensive datasets called CICIDS2017 and CSE-CICIDS2018. Secondly, we provide a list of best network flow features to identify these attacks. We deploy a convolutional neural network model to classify and characterize different attacks with promising evaluation results.
机译:近年来,安全社区目睹了网络攻击的空前高涨。事实证明,这些攻击可以成功实现其灾难性目标。入侵检测和防御系统仍然是抵御这些破坏性攻击的主要防御点。但是,过去的大多数异常数据集都不是最新的也不可靠。研究人员使用各种机器学习技术对基于异常的攻击进行分类,这是因为它们具有与此类攻击的发展保持同步并做出令人鼓舞的预测的能力。然而,事实证明,深度神经网络在检测和表征此类入侵方面是革命性的。在本文中,首先,我们提出了一个基于图像的深度神经网络模型,该模型使用称为CICIDS2017和CSE-CICIDS2018的两个综合数据集对各种攻击进行分类。其次,我们提供了最佳网络流功能的列表,以识别这些攻击。我们部署了卷积神经网络模型,以对具有前景评估结果的不同攻击进行分类和表征。

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