
Xinkai Liu
About
My research project
Generative Semantic Communication for Future Wireless NetworksThis project aims to develop efficient generative semantic communication frameworks to optimize wireless resource utilization and enhance communication efficiency in future 6G networks. As 6G transitions from conventional designs centered on transmission rate, latency, and reliability to AI-native architectures, Semantic Communication (SemCom) has emerged as a promising paradigm that prioritizes the transmission of meaning and intent rather than raw data. Leveraging state-of-the-art Generative AI (GenAI) models, which synthesize natural signals such as text, images, and audio with high perceptual quality, this project seeks to integrate GenAI into SemCom to enable more intelligent and resource-efficient communication mechanisms.
Supervisors
This project aims to develop efficient generative semantic communication frameworks to optimize wireless resource utilization and enhance communication efficiency in future 6G networks. As 6G transitions from conventional designs centered on transmission rate, latency, and reliability to AI-native architectures, Semantic Communication (SemCom) has emerged as a promising paradigm that prioritizes the transmission of meaning and intent rather than raw data. Leveraging state-of-the-art Generative AI (GenAI) models, which synthesize natural signals such as text, images, and audio with high perceptual quality, this project seeks to integrate GenAI into SemCom to enable more intelligent and resource-efficient communication mechanisms.
ResearchResearch interests
Semantic Communication & Machine Learning
Research interests
Semantic Communication & Machine Learning
Publications
Generative diffusion models (GDMs) have recently shown great success in synthesizing multimedia signals with high perceptual quality enabling highly efficient semantic communications in future wireless networks. In this paper, we develop an intent-aware generative semantic multicasting framework utilizing pre-trained diffusion models. In the proposed framework, the transmitter decomposes the source signal to multiple semantic classes based on the multi-user intent, i.e. each user is assumed to be interested in details of only a subset of the semantic classes. The transmitter then sends to each user only its intended classes, and multicasts a highly compressed semantic map to all users over shared wireless resources that allows them to locally synthesize the other classes, i.e. non-intended classes, utilizing pre-trained diffusion models. The signal retrieved at each user is thereby partially reconstructed and partially synthesized utilizing the received semantic map. This improves utilization of the wireless resources, with better preserving privacy of the non-intended classes. We design a communication/computation-aware scheme for per-class adaptation of the communication parameters, such as the transmission power and compression rate to minimize the total latency of retrieving signals at multiple receivers, tailored to the prevailing channel conditions as well as the users reconstruction/synthesis distortion/perception requirements. The simulation results demonstrate significantly reduced per-user latency compared with non-generative and intent-unaware multicasting benchmarks while maintaining high perceptual quality of the signals retrieved at the users.