Spatial-Temporal Feature with Dual-Attention Mechanism for Encrypted Malicious Traffic Detection

Autor: Jianyi Liu, Lanting Wang, Wei Hu, Yating Gao, Yaofu Cao, Bingjie Lin, Ru Zhang
Jazyk: angličtina
Rok vydání: 2023
Předmět:
Zdroj: Security and Communication Networks.
ISSN: 1939-0114
DOI: 10.1155/2023/7117863
Popis: While encryption ensures the confidentiality and integrity of user data, more and more attackers try to hide attack behaviours through encryption, which brings new challenges to malicious traffic identification. How to effectively detect encrypted malicious traffic without decrypting traffic and protecting user privacy has become an urgent problem to be solved. Most of the current research only uses a single CNN, RNN, and SAE network to detect encrypted malicious traffic, which does not consider the forward and backward correlation between data packets, so it is difficult to effectively identify malicious features in encrypted traffic. This study proposes an approach that combines spatial-temporal feature with dual-attention mechanism, which is called TLARNN. Specifically, first we use 1D-CNN and BiGRU to extract spatial features in encrypted traffic packets and temporal features between encrypted streams, respectively, which enriches the features of different dimensions, and then, the soft attention mechanism is focused on the encrypted data packets to extract features. Ultimately, the second layer of the soft attention mechanism is used for aggregating malicious features. Several comparative experiments are designed to prove the effectiveness of the proposed scheme. The experimental results demonstrate that the proposed scheme has a significant performance improvement compared to existing ones.
Databáze: OpenAIRE