Task-Oriented Semantic Communication in Large Multimodal Models-based Vehicle Networks
Journal:
arXiv
Published Date:
May 5, 2025
Abstract
Task-oriented semantic communication has emerged as a fundamental approach
for enhancing performance in various communication scenarios. While recent
advances in Generative Artificial Intelligence (GenAI), such as Large Language
Models (LLMs), have been applied to semantic communication designs, the
potential of Large Multimodal Models (LMMs) remains largely unexplored. In this
paper, we investigate an LMM-based vehicle AI assistant using a Large Language
and Vision Assistant (LLaVA) and propose a task-oriented semantic communication
framework to facilitate efficient interaction between users and cloud servers.
To reduce computational demands and shorten response time, we optimize LLaVA's
image slicing to selectively focus on areas of utmost interest to users.
Additionally, we assess the importance of image patches by combining objective
and subjective user attention, adjusting energy usage for transmitting semantic
information. This strategy optimizes resource utilization, ensuring precise
transmission of critical information. We construct a Visual Question Answering
(VQA) dataset for traffic scenarios to evaluate effectiveness. Experimental
results show that our semantic communication framework significantly increases
accuracy in answering questions under the same channel conditions, performing
particularly well in environments with poor Signal-to-Noise Ratios (SNR).
Accuracy can be improved by 13.4% at an SNR of 12dB and 33.1% at 10dB,
respectively.