Deep Neural Networks for Enhanced Security: Detecting Metamorphic Malware in IoT Devices

被引:2
|
作者
Habib, Faiza [1 ]
Shirazi, Syed Hamad [2 ]
Aurangzeb, Khursheed [3 ]
Khan, Asfandyar [2 ]
Bhushan, Bharat [4 ]
Alhussein, Musaed [3 ]
机构
[1] Abasyn Univ, Dept Comp Sci, Islamabad Campus, Islamabad 44000, Pakistan
[2] Hazara Univ Mansehra, Dept Comp Sci, Mansehra 21300, Pakistan
[3] King Saud Univ, Coll Comp & Informat Sci, Dept Comp Engn, Riyadh 11543, Saudi Arabia
[4] Sharda Univ, Sch Engn & Technol, Dept Comp Sci & Engn, Greater Noida 201310, India
关键词
Malware; Internet of Things; Deep learning; Internet; Codes; Biological system modeling; Training; Security; Computer security; IoT security; metamorphic malware detection; deep learning; Malimg dataset; cyber security; DYNAMIC-ANALYSIS; INTERNET;
D O I
10.1109/ACCESS.2024.3383831
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Today Internet of Things (IoT) has become a key part of the modern world as it enables web-based IoT devices to collect, transfer, and analyze the data of individuals, companies, and industries. IoT provides numerous services and applications via a massive number of interconnected devices and has become an innovative attack vector for cyber-attacks and threats such as malware attacks that are currently regarded as serious dangers to the security of IoT devices and systems. Such threats are sufficient to infiltrate individual private information that inflicts harm to both the financial standing and reputation in an organization. In literature, researchers have used multiple machine learning and deep learning models to tackle this security threat, however, still accurate classification and detection of metamorphic malware in IoT devices remains a challenge. In this article, we used a deep learning model to accurately detect metamorphic malware in IoT devices. We have employed six models including (VGG16, InceptionV3, CNN, ResNet50, MobileNet, and Efficient NetB0 on Malimg publicly available malware image dataset. The Internet of Things (IoT) would benefit from having a method that could identify metamorphic malware. It isn't possible to rely on detection techniques that are fixed or signature-based. Throughout this research, a straightforward technique for carrying out dynamic analysis to comprehend the behavior of code is suggested. To determine if executable are malicious, it is necessary to first measure the behavior of executable and then utilize this information to make that determination. Additionally, the purpose of this study is to create a classifier that makes utilization of deep learning techniques to analyze complicated behavior reports. The obtained results depict that the proposed model achieves a promising accuracy of 99% and F1-score of 97% employed on the standard Malimg dataset as compared to other existing machine and deep learning models.
引用
收藏
页码:48570 / 48582
页数:13
相关论文
共 50 条
  • [31] Developing a Hybrid Approach with Whale Optimization and Deep Convolutional Neural Networks for Enhancing Security in Smart Home Environments' Sustainability Through IoT Devices
    Jothi, Kavitha Ramaswami
    Vaithiyanathan, Balamurugan
    SUSTAINABILITY, 2024, 16 (24)
  • [32] Classification of Android Apps and Malware Using Deep Neural Networks
    Nix, Robin
    Zhang, Jian
    2017 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2017, : 1871 - 1878
  • [33] A Framework for Enhancing Deep Neural Networks Against Adversarial Malware
    Li, Deqiang
    Li, Qianmu
    Ye, Yanfang
    Xu, Shouhuai
    IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING, 2021, 8 (01): : 736 - 750
  • [34] Ensemble Malware Classification System Using Deep Neural Networks
    Narayanan, Barath Narayanan
    Davuluru, Venkata Salini Priyamvada
    ELECTRONICS, 2020, 9 (05)
  • [35] Malware detection approach based on deep convolutional neural networks
    El Merabet, Hoda
    Hajraoui, Abderrahmane
    INTERNATIONAL JOURNAL OF INFORMATION AND COMPUTER SECURITY, 2023, 20 (1-2) : 145 - 157
  • [36] Adversary Resistant Deep Neural Networks with an Application to Malware Detection
    Wang, Qinglong
    Guo, Wenbo
    Zhang, Kaixuan
    Ororbia, Alexander G., II
    Xing, Xinyu
    Liu, Xue
    Giles, C. Lee
    KDD'17: PROCEEDINGS OF THE 23RD ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2017, : 1145 - 1153
  • [37] Android Malware Detection using Convolutional Deep Neural Networks
    Bourebaa, Fatima
    Benmohammed, Mohamed
    2020 4TH INTERNATIONAL CONFERENCE ON ADVANCED ASPECTS OF SOFTWARE ENGINEERING (ICAASE'2020): 4TH INTERNATIONAL CONFERENCE ON ADVANCED ASPECTS OF SOFTWARE ENGINEERING, 2020, : 52 - 58
  • [38] Universal backdoor attack on deep neural networks for malware detection
    Zhang, Yunchun
    Feng, Fan
    Liao, Zikun
    Li, Zixuan
    Yao, Shaowen
    APPLIED SOFT COMPUTING, 2023, 143
  • [39] Malware visualization methods based on deep convolution neural networks
    Zhuojun Ren
    Guang Chen
    Wenke Lu
    Multimedia Tools and Applications, 2020, 79 : 10975 - 10993
  • [40] Intelligent Monitoring of IoT Devices using Neural Networks
    Chawla, Ashima
    Babu, Pradeep
    Gawande, Trushnesh
    Aumayr, Erik
    Jacob, Paul
    Fallon, Sheila
    2021 24TH CONFERENCE ON INNOVATION IN CLOUDS, INTERNET AND NETWORKS AND WORKSHOPS (ICIN), 2021,