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Efficient Signature Generation for Classifying Cross-Architecture IoT Malware

机译:用于对跨架构IoT恶意软件进行分类的高效签名生成

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Internet-of-Things IoT devices are increasingly targeted Uy adversaries due to their unique characteristics such as constant online connection, lack of protection, and full integration in people's daily life. As attackers shift their targets towards IoT devices, malware has been developed to compromise IoT devices equipped with different CPU architectures. While malware detection has been a well-studied area for desktop PCs, heterogeneous processor architecture in IoT devices brings in unique challenges. Existing approaches utilize static or dynamic binary analysis for identifying malware characteristics, Uut they all fall short when dealing with IoT malware compiled for different architectures. In this paper, we propose an efficient signature generation method for IoT malware, which generates distinguishable signatures based on high-level structural, statistical and string feature vectors, as high-level features are more robust against code variations across different architectures. The generated signatures for each malware family can be used for developing lightweight malware detection tools to secure IoT devices. Extensive experiments with two datasets of 5,150 recent IoT malware samples show that our scheme can achieve 95.5% detection rate with 0% false positive rate. Moreover, the proposed scheme can achieve 85.2% detection rate in detecting novel IoT malware.
机译:物联网物联网设备因其独特的特性(例如持续的在线连接,缺乏保护以及与人们日常生活的完全融合)而越来越成为Uy对手的目标。随着攻击者将目标转向物联网设备,已经开发了恶意软件来破坏配备有不同CPU架构的物联网设备。尽管恶意软件检测一直是台式PC的研究热点,但IoT设备中的异构处理器体系结构带来了独特的挑战。现有的方法利用静态或动态二进制分析来识别恶意软件特征,但在处理针对不同架构编译的IoT恶意软件时,它们都不足。在本文中,我们提出了一种针对IoT恶意软件的有效签名生成方法,该方法可基于高级结构,统计和字符串特征向量生成可区分的签名,因为高级特征对于不同体系结构之间的代码变化更健壮。为每个恶意软件系列生成的签名可用于开发轻量级恶意软件检测工具,以保护IoT设备的安全。对包含5150个最新IoT恶意软件样本的两个数据集进行的广泛实验表明,我们的方案可以达到95.5%的检测率,误报率为0%。此外,该方案在检测新型物联网恶意软件中可达到85.2%的检测率。

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