Fast Detection of Distributed Denial of Service Attacks in VoIP Networks Using Convolutional Neural Networks

Nazih, Waleed and Hifny, Yasser and S. Elkilani, Wail and Mostafa, Tamer (2020) Fast Detection of Distributed Denial of Service Attacks in VoIP Networks Using Convolutional Neural Networks. International Journal of Intelligent Computing and Information Sciences, 20 (2). pp. 125-138. ISSN 2535-1710

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Abstract

Voice over Internet Protocol (VoIP) is a recent technology used to transfer media and voice over Internet Protocol (IP). Many organizations moved to VoIP services instead of the traditional telephone systems because of its low cost and variety of introduced services. The Session Initiation Protocol (SIP) is the most used protocol for signaling functions in VoIP networks. It has simple implantation but suffers from less protection against attacks. The Distributed Denial of Service (DDoS) attack is a dangerous attack that preventing legitimate users from using VoIP services and draining their resources. In this paper, we proposed an approach that utilizes deep learning to detect DDoS attacks. The proposed approach uses token embedding to improve the extracted features of SIP messages. Then, Convolutional Neural Network (CNN) was used to detect DDoS attacks with different intensities. Furthermore, a real VoIP dataset that contains different scenarios of attacks was used to evaluate the proposed approach. Our experiments find that the CNN model achieved a high F1 score (99-100\%) as another deep learning approach that utilizes Recurrent Neural Network (RNN) but with less detection time. Also, it outperforms another system that depends on classical machine learning in case of low-rate DDoS attacks.

Item Type: Article
Subjects: Librbary Digital > Computer Science
Depositing User: Unnamed user with email support@librbarydigit.com
Date Deposited: 27 Jun 2023 06:52
Last Modified: 12 Sep 2024 04:57
URI: http://info.openarchivelibrary.com/id/eprint/1053

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