Abstract:
Privacy information theft traffic is usually detected using traffic classification methods, and deep learning-based detection methods are effective for this task. However...Show MoreMetadata
Abstract:
Privacy information theft traffic is usually detected using traffic classification methods, and deep learning-based detection methods are effective for this task. However, these methods have complex preprocessing processes as well as tend to ignore the deep features of network traffic, while the generalization ability is not outstanding. In this paper, a network traffic classification and detection model TCCN (Traffic Classification Capsule Network) based on capsule network is proposed. Meanwhile, PacketCGAN-based data balancing method is introduced to assist TCCN in traffic classification. A new feature graph vectorization method is used to improve the efficiency of TCCN. In addition, TCCN uses dynamic routing mechanism that can retain more valid traffic characteristics. In parallel, this paper proposes a new loss function to improve the generalization performance of TCCN. The results show that TCCN can show good performance in different experimental scenarios. After effective training, TCCN can also show high detection accuracy in new datasets, and the generalization ability of the model reaches a relatively excellent level.
Date of Conference: 28 May 2023 - 01 June 2023
Date Added to IEEE Xplore: 23 October 2023
ISBN Information:
Electronic ISSN: 1938-1883