Real-time traffic intrusion detection based on CNN-LSTM deep neural networks

Runjie Liu, Yinpu Ma, Xu Gao, Lianji Zhang
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Abstract

As Internet technology is developed and applied, the problems of large amounts of real-time traffic data and many unknown attacks are becoming increasingly serious, and intrusion detection systems have increased in efficiency and effectiveness. In this paper, a real-time traffic intrusion detection method based on Inception-LSTM deep neural network combining CNN and LSTM is proposed for improving label-based intrusion detection performance. Network traffic records are converted into 2D gray scale graphs. It extracts network traffic features using image processing techniques with high generalization ability. Experimental validation is performed on the publicly available CIC-IDS-2017 dataset, and the results show that the proposed Inception-LSTM neural network improves the detection accuracy and F1-score by 0.5% and 0.7%, respectively; the results of the comparison between the detection done on real-time captured traffic data and the network security devices show that the method is effective and feasible.
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基于 CNN-LSTM 深度神经网络的实时流量入侵检测
随着互联网技术的发展和应用,海量实时流量数据和众多未知攻击的问题日益严重,入侵检测系统的效率和效果也随之提高。本文提出了一种基于 Inception-LSTM 深度神经网络的实时流量入侵检测方法,将 CNN 和 LSTM 相结合,提高了基于标签的入侵检测性能。网络流量记录被转换成二维灰度图。它利用图像处理技术提取网络流量特征,具有较高的泛化能力。在公开的 CIC-IDS-2017 数据集上进行了实验验证,结果表明,所提出的 Inception-LSTM 神经网络的检测准确率和 F1 分数分别提高了 0.5% 和 0.7%;在实时捕获的流量数据和网络安全设备上进行的检测对比结果表明,该方法是有效和可行的。
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