IoT DoS and DDoS Attack Detection using ResNet
December 02, 2020 Β· Declared Dead Β· π 2020 IEEE 23rd International Multitopic Conference (INMIC)
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Authors
Faisal Hussain, Syed Ghazanfar Abbas, Muhammad Husnain, Ubaid Ullah Fayyaz, Farrukh Shahzad, Ghalib A. Shah
arXiv ID
2012.01971
Category
cs.CR: Cryptography & Security
Citations
144
Venue
2020 IEEE 23rd International Multitopic Conference (INMIC)
Last Checked
4 months ago
Abstract
The network attacks are increasing both in frequency and intensity with the rapid growth of internet of things (IoT) devices. Recently, denial of service (DoS) and distributed denial of service (DDoS) attacks are reported as the most frequent attacks in IoT networks. The traditional security solutions like firewalls, intrusion detection systems, etc., are unable to detect the complex DoS and DDoS attacks since most of them filter the normal and attack traffic based upon the static predefined rules. However, these solutions can become reliable and effective when integrated with artificial intelligence (AI) based techniques. During the last few years, deep learning models especially convolutional neural networks achieved high significance due to their outstanding performance in the image processing field. The potential of these convolutional neural network (CNN) models can be used to efficiently detect the complex DoS and DDoS by converting the network traffic dataset into images. Therefore, in this work, we proposed a methodology to convert the network traffic data into image form and trained a state-of-the-art CNN model, i.e., ResNet over the converted data. The proposed methodology accomplished 99.99\% accuracy for detecting the DoS and DDoS in case of binary classification. Furthermore, the proposed methodology achieved 87\% average precision for recognizing eleven types of DoS and DDoS attack patterns which is 9\% higher as compared to the state-of-the-art.
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