학술논문

TANTRA: Timing-Based Adversarial Network Traffic Reshaping Attack
Document Type
Periodical
Source
IEEE Transactions on Information Forensics and Security IEEE Trans.Inform.Forensic Secur. Information Forensics and Security, IEEE Transactions on. 17:3225-3237 2022
Subject
Signal Processing and Analysis
Computing and Processing
Communication, Networking and Broadcast Technologies
Feature extraction
Telecommunication traffic
Perturbation methods
Network intrusion detection
Deep learning
Behavioral sciences
Delays
Network intrusion
adversarial attack
neural networks
deep learning
Language
ISSN
1556-6013
1556-6021
Abstract
Network intrusion attacks are a known threat. To detect such attacks, network intrusion detection systems (NIDSs) have been developed and deployed. These systems apply machine learning models to high-dimensional vectors of features extracted from network traffic to detect intrusions. Advances in NIDSs have made it challenging for attackers, who must execute attacks without being detected by these systems. Prior research on bypassing NIDSs has mainly focused on perturbing the features extracted from the attack traffic to fool the detection system, however, this may jeopardize the attack’s functionality. In this work, we present TANTRA, a novel end-to-end Timing-based Adversarial Network Traffic Reshaping Attack that can bypass a variety of NIDSs. Our evasion attack utilizes a long short-term memory (LSTM) deep neural network (DNN) which is trained to learn the time differences between the target network’s benign packets. The trained LSTM is used to set the time differences between the malicious traffic packets (attack), without changing their content, such that they will “behave” like benign network traffic and will not be detected as an intrusion. We evaluate TANTRA on eight common intrusion attacks and three state-of-the-art NIDS systems, achieving an average success rate of 99.99% in network intrusion detection system evasion. We also propose a novel mitigation technique to address this new evasion attack.