使用视觉表示和深度学习的物联网恶意软件网络流量分类

G. Bendiab, S. Shiaeles, Abdulrahman Alruban, N. Kolokotronis
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引用次数: 39

摘要

随着物联网设备和技术投入使用的增加,恶意软件已经成为一种具有挑战性的威胁,感染率和复杂程度都在增加。如果没有强大的安全机制,大量的敏感数据就会暴露在漏洞中,容易被网络犯罪分子滥用,进行各种非法活动。因此,需要能够执行实时流量分析和减轻恶意流量的高级网络安全机制。为了应对这一挑战,我们提出了一种新的物联网恶意软件流量分析方法,使用深度学习和可视化表示来更快地检测和分类新的恶意软件(零日恶意软件)。在该方法中,恶意网络流量的检测工作在包级别,由于使用了深度学习技术,大大减少了检测时间,结果很有希望。为了评估我们提出的方法的性能,构建了一个数据集,该数据集由从不同网络流量源收集的1000个正常和恶意流量的pcap文件组成。残差神经网络(ResNet50)的实验结果非常有前景,对恶意流量的检测准确率达到94.50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT Malware Network Traffic Classification using Visual Representation and Deep Learning
With the increase of IoT devices and technologies coming into service, Malware has risen as a challenging threat with increased infection rates and levels of sophistication. Without strong security mechanisms, a huge amount of sensitive data are exposed to vulnerabilities, and therefore, easily abused by cybercriminals to perform several illegal activities. Thus, advanced network security mechanisms that are able of performing a real-time traffic analysis and mitigation of malicious traffic are required. To address this challenge, we are proposing a novel IoT malware traffic analysis approach using deep learning and visual representation for faster detection and classification of new malware (zero-day malware). The detection of malicious network traffic in the proposed approach works at the package level, reducing significantly the time of detection with promising results due to the deep learning technologies used. To evaluate our proposed method performance, a dataset is constructed which consists of 1000 pcap files of normal and malware traffic that are collected from different network traffic sources. The experimental results of Residual Neural Network (ResNet50) are very promising, providing a 94.50% accuracy rate for detection of malware traffic.
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