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Will 6G be Semantic Communications? Opportunities and Challenges from Task Oriented and Secure Communications to Integrated Sensing (2401.01531v1)

Published 3 Jan 2024 in cs.NI, cs.CR, cs.IT, cs.LG, eess.SP, and math.IT

Abstract: This paper explores opportunities and challenges of task (goal)-oriented and semantic communications for next-generation (NextG) communication networks through the integration of multi-task learning. This approach employs deep neural networks representing a dedicated encoder at the transmitter and multiple task-specific decoders at the receiver, collectively trained to handle diverse tasks including semantic information preservation, source input reconstruction, and integrated sensing and communications. To extend the applicability from point-to-point links to multi-receiver settings, we envision the deployment of decoders at various receivers, where decentralized learning addresses the challenges of communication load and privacy concerns, leveraging federated learning techniques that distribute model updates across decentralized nodes. However, the efficacy of this approach is contingent on the robustness of the employed deep learning models. We scrutinize potential vulnerabilities stemming from adversarial attacks during both training and testing phases. These attacks aim to manipulate both the inputs at the encoder at the transmitter and the signals received over the air on the receiver side, highlighting the importance of fortifying semantic communications against potential multi-domain exploits. Overall, the joint and robust design of task-oriented communications, semantic communications, and integrated sensing and communications in a multi-task learning framework emerges as the key enabler for context-aware, resource-efficient, and secure communications ultimately needed in NextG network systems.

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References (15)
  1. M. Kountouris and N. Pappas, “Semantics-empowered communication for networked intelligent systems,” IEEE Communications Magazine, vol. 59, no. 6, pp. 96–102, 2021.
  2. E. Uysal, O. Kaya, A. Ephremides, J. Gross, M. Codreanu, P. Popovski, M. Assaad, G. Liva, A. Munari, T. Soleymani, B. S. Soret, and H. Johansson, “Semantic communications in networked systems,” IEEE Network, vol. 36, no. 4, pp. 233–240, 2022.
  3. D. Gündüz, Z. Qin, I. E. Aguerri, H. S. Dhillon, Z. Yang, A. Yener, K. K. Wong, and C.-B. Chae, “Beyond transmitting bits: Context, semantics, and task-oriented communications,” IEEE Journal on Selected Areas in Communications, vol. 41, no. 1, pp. 5–41, 2023.
  4. Y. Shi, Y. Zhou, D. Wen, Y. Wu, C. Jiang, and K. B. Letaief, “Task-Oriented Communications for 6G: Vision, Principles, and Technologies,” IEEE Wireless Communications, vol. 30, no. 3, pp. 78–85, 2023.
  5. Y. E. Sagduyu, S. Ulukus, and A. Yener, “Task-oriented communications for nextG: End-to-end deep learning and AI security aspects,” IEEE Wireless Communications, vol. 30, no. 3, pp. 52–60, 2023.
  6. H. Xie, Z. Qin, G. Y. Li, and B.-H. Juang, “Deep learning enabled semantic communication systems,” IEEE Transactions on Signal Processing, vol. 69, pp. 2663–2675, 2021.
  7. Y. E. Sagduyu, T. Erpek, S. Ulukus, and A. Yener, “Is semantic communication secure? a tale of multi-domain adversarial attacks,” IEEE Communications Magazine, vol. 61, no. 11, pp. 50–55, 2023.
  8. F. Liu, Y. Cui, C. Masouros, J. Xu, T. X. Han, Y. C. Eldar, and S. Buzzi, “Integrated sensing and communications: Toward dual-functional wireless networks for 6G and beyond,” IEEE Journal on Selected Areas in Communications, vol. 40, no. 6, pp. 1728–1767, 2022.
  9. Y. E. Sagduyu, T. Erpek, A. Yener, and S. Ulukus, “Joint sensing and semantic communications with multi-task deep learning,” arXiv preprint arXiv:2311.05017, 2023.
  10. ——, “Multi-receiver task-oriented communications via multi-task deep learning,” in IEEE Future Networks World Forum, 2023.
  11. M. Mortaheb, C. Vahapoglu, and S. Ulukus, “Personalized federated multi-task learning over wireless fading channels,” Algorithms, vol. 15, no. 11, p. 421, 2022.
  12. D. Adesina, C.-C. Hsieh, Y. E. Sagduyu, and L. Qian, “Adversarial machine learning in wireless communications using RF data: A review,” IEEE Communications Surveys & Tutorials, vol. 25, no. 1, pp. 77–100, 2023.
  13. Y. E. Sagduyu, T. Erpek, S. Ulukus, and A. Yener, “Vulnerabilities of deep learning-driven semantic communications to backdoor (trojan) attacks,” in Conference on Information Sciences and Systems (CISS), 2023.
  14. R. D. Yates, Y. Sun, D. R. Brown, S. K. Kaul, E. Modiano, and S. Ulukus, “Age of information: An introduction and survey,” IEEE Journal on Selected Areas in Communications, vol. 39, no. 5, pp. 1183–1210, 2021.
  15. Y. E. Sagduyu, S. Ulukus, and A. Yener, “Age of information in deep learning-driven task-oriented communications,” in IEEE INFOCOM Age of Information Workshop, 2023.
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