Backdoor Attacks and Defenses on Semantic-Symbol Reconstruction in Semantic Communications (2404.13279v1)
Abstract: Semantic communication is of crucial importance for the next-generation wireless communication networks. The existing works have developed semantic communication frameworks based on deep learning. However, systems powered by deep learning are vulnerable to threats such as backdoor attacks and adversarial attacks. This paper delves into backdoor attacks targeting deep learning-enabled semantic communication systems. Since current works on backdoor attacks are not tailored for semantic communication scenarios, a new backdoor attack paradigm on semantic symbols (BASS) is introduced, based on which the corresponding defense measures are designed. Specifically, a training framework is proposed to prevent BASS. Additionally, reverse engineering-based and pruning-based defense strategies are designed to protect against backdoor attacks in semantic communication. Simulation results demonstrate the effectiveness of both the proposed attack paradigm and the defense strategies.
- Z. Qin, X. Tao, J. Lu, and G. Y. Li, “Semantic communications: Principles and challenges,” arXiv preprint arXiv: 2201.01389v2, 2022.
- D. J. Miller, Z. Xiang, and G. Kesidis, “Adversarial learning targeting deep neural network classification: A comprehensive review of defenses against attacks,” Proc. IEEE, vol. 108, no. 3, pp. 402–433, 2020.
- K. Davaslioglu and Y. E. Sagduyu, “Trojan attacks on wireless signal classification with adversarial machine learning,” in IEEE International Symposium on Dynamic Spectrum Access Networks (DySPAN), pp. 1-6, 2019.
- Yuan Zhou (251 papers)
- Rose Qingyang Hu (61 papers)
- Yi Qian (23 papers)