NILGApr 10, 2024

Agent-driven Generative Semantic Communication with Cross-Modality and Prediction

arXiv:2404.06997v325 citationsh-index: 115IEEE Trans Wirel Commun
Originality Incremental advance
AI Analysis

This work addresses data efficiency in wireless networks for applications like intelligent transportation, though it appears incremental by combining existing semantic communication elements with generative AI.

The paper tackles the challenge of high data volume in 6G remote surveillance by proposing an agent-driven generative semantic communication framework that integrates semantic extraction and sampling, achieving performance gains in energy saving and reconstruction accuracy on the UA-DETRAC dataset.

In the era of 6G, with compelling visions of intelligent transportation systems and digital twins, remote surveillance is poised to become a ubiquitous practice. Substantial data volume and frequent updates present challenges in wireless networks. To address these challenges, we propose a novel agent-driven generative semantic communication (A-GSC) framework based on reinforcement learning. In contrast to the existing research on semantic communication (SemCom), which mainly focuses on either semantic extraction or semantic sampling, we seamlessly integrate both by jointly considering the intrinsic attributes of source information and the contextual information regarding the task. Notably, the introduction of generative artificial intelligence (GAI) enables the independent design of semantic encoders and decoders. In this work, we develop an agent-assisted semantic encoder with cross-modality capability, which can track the semantic changes, channel condition, to perform adaptive semantic extraction and sampling. Accordingly, we design a semantic decoder with both predictive and generative capabilities, consisting of two tailored modules. Moreover, the effectiveness of the designed models has been verified using the UA-DETRAC dataset, demonstrating the performance gains of the overall A-GSC framework in both energy saving and reconstruction accuracy.

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