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Generative Semantic Communication via Textual Prompts: Latency Performance Tradeoffs

Mengmeng Ren, Li Qiao, Long Yang, Zhen Gao, Jian Chen, Mahdi Boloursaz Mashhadi, Pei Xiao, Rahim Tafazolli, Mehdi Bennis

2025IEEE Transactions on Vehicular Technology11 citationsDOI

Abstract

This paper develops an edge-device collaborative Generative Semantic Communications (Gen SemCom) framework leveraging pre-trained Multi-modal/Vision Language Models (M/VLMs) for ultra-low-rate semantic communication via textual prompts. The proposed framework optimizes the use of M/VLMs on the wireless edge/device to generate high-fidelity textual prompts through visual captioning/question answering, which are then transmitted over a wireless channel for SemCom. Specifically, we develop a multi-user Gen SemCom framework using pre-trained M/VLMs, and formulate a joint optimization problem of prompt generation offloading, communication and computation resource allocation to minimize the latency and maximize the resulting semantic quality. Due to the non-convex nature of the problem with highly coupled discrete and continuous variables, we decompose it as a two-level problem and propose a low-complexity swap/leaving/joining (SLJ)-based matching algorithm. Simulation results demonstrate significant performance improvements over the conventional semantic-unaware/ non-collaborative generation offloading benchmarks.

Topics & Concepts

Computer scienceLatency (audio)Generative grammarNatural language processingArtificial intelligenceSpeech recognitionComputer architectureHuman–computer interactionTelecommunicationsTopic ModelingSpeech and dialogue systemsNatural Language Processing Techniques
Generative Semantic Communication via Textual Prompts: Latency Performance Tradeoffs | Litcius