Lightweight IoT Malware Detection Solution Using CNN Classification

Ahmad Zaza, Suleiman K. Kharroub, K. Abualsaud
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引用次数: 9

Abstract

Internet of Things (IoT) is becoming more frequently used in more applications as the number of connected devices is in a rapid increase. More connected devices result in bigger challenges in terms of scalability, maintainability and most importantly security especially when it comes to 5G networks. The security aspect of IoT devices is an infant field, which is why it is our focus in this paper. Multiple IoT device manufacturers do not consider securing the devices they produce for different reasons like cost reduction or to avoid using energy-harvesting components. Such potentially malicious devices might be exploited by the adversary to do multiple harmful attacks. Therefore, we developed a system that can recognize malicious behavior of a specific IoT node on the network. Through convolutional neural network and monitoring, we were able to provide malware detection for IoT using a central node that can be installed within the network. The achievement shows how such models can be generalized and applied easily to any network while clearing out any stigma regarding deep learning techniques.
使用CNN分类的轻量级物联网恶意软件检测解决方案
随着连接设备数量的快速增加,物联网(IoT)在更多应用中的应用越来越频繁。更多的连接设备会在可扩展性、可维护性和最重要的安全性方面带来更大的挑战,尤其是在5G网络方面。物联网设备的安全方面是一个新兴领域,这就是为什么它是我们在本文中的重点。多个物联网设备制造商出于降低成本或避免使用能量收集组件等不同原因,不考虑保护他们生产的设备。这种潜在的恶意设备可能被对手利用来进行多种有害攻击。因此,我们开发了一个系统,可以识别网络上特定物联网节点的恶意行为。通过卷积神经网络和监控,我们能够使用可以安装在网络中的中心节点为物联网提供恶意软件检测。这一成就表明,这些模型可以很容易地推广和应用于任何网络,同时消除了与深度学习技术有关的任何污点。
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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