학술논문

Static Multi Feature-Based Malware Detection Using Multi SPP-net in Smart IoT Environments
Document Type
Periodical
Source
IEEE Transactions on Information Forensics and Security IEEE Trans.Inform.Forensic Secur. Information Forensics and Security, IEEE Transactions on. 19:2487-2500 2024
Subject
Signal Processing and Analysis
Computing and Processing
Communication, Networking and Broadcast Technologies
Malware
Feature extraction
Behavioral sciences
Internet of Things
Codes
Analytical models
Static analysis
Malware detection
malware image
static analysis
smart IoT
spatial pyramid pooling network (SPP-net)
static feature
Language
ISSN
1556-6013
1556-6021
Abstract
With the steady increase in the demand for Internet of Things (IoT) devices in diverse industries, such as manufacturing, medical care, and transportation infrastructure, the production of malware tailored for Smart IoT environments is also increasing. Accordingly, various malware detection studies are being conducted to detect not only known malware but also variant malware. However, it is difficult to detect malware transformed in a way that hides malicious behavior by changing and deleting bytes or modifying the assembly code. Therefore, in this study, we propose a malware detection for static security service (Mal3S) scheme that provides a secure Smart IoT environment by accurately detecting various types of malware. Mal3S extracts bytes, opcodes, API calls, strings, and dynamic link libraries (DLLs) through static analysis and then generates five types of images. Images of various sizes are trained on a multi spatial pyramid pooling network (SPP-net) model to detect malware. When evaluating the performance of Mal3S using three malware datasets, the average detection accuracy was 98.02% and the classification accuracy was 98.43%, showing better performance than existing malware detection techniques. In addition, Mal3S has demonstrated effective generalization capabilities for various types of malware.