1. A survey of IoT malware and detection methods based on static features
- Author
-
Quoc-Dung Ngo, Huy-Trung Nguyen, Doan-Hieu Nguyen, and Van-Hoang Le
- Subjects
Software_OPERATINGSYSTEMS ,Computer Networks and Communications ,Computer science ,Reliability (computer networking) ,02 engineering and technology ,computer.software_genre ,Computer security ,Domain (software engineering) ,Artificial Intelligence ,0202 electrical engineering, electronic engineering, information engineering ,Static-based ,IoT botnet malware ,lcsh:T58.5-58.64 ,lcsh:Information technology ,business.industry ,Security design ,020208 electrical & electronic engineering ,020206 networking & telecommunications ,Static analysis ,Internet of Things (IoT) ,Microarchitecture ,Hardware and Architecture ,Malware ,Internet of Things ,business ,computer ,Survey detection ,Software ,Information Systems - Abstract
Due to a lack of security design as well as the specific characteristics of IoT devices such as the heterogeneity of processor architecture, IoT malware detection has to deal with very unique challenges, especially on detecting cross-architecture IoT malware. Therefore, the IoT malware detection domain is the focus of research by the security community in recent years. There are many studies taking advantage of well-known dynamic or static analysis for detecting IoT malware; however, static-based methods are more effective when addressing the multi-architecture issue. In this paper, we give a thorough survey of static IoT malware detection. We first introduce the definition, evolution and security threats of IoT malware. Then, we summarize, compare and analyze existing IoT malware detection methods proposed in recent years. Finally, we carry out exactly the methods of existing studies based on the same IoT malware dataset and an experimental configuration to evaluate objectively and increasing the reliability of these studies in detecting IoT malware.
- Published
- 2020
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