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Contrastive Language-Image Pre-Training Model-based Semantic Communication Performance Optimization
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Contrastive Language-Image Pre-Training Model-based Semantic Communication Performance Optimization

Shaoran Yang, Dongyu Wei, Hanzhi Yu, Zhaohui Yang, Yuchen Liu and Mingzhe Chen
IEEE Global Communications Conference (Online), pp.4107-4112
2025-12-08

Abstract

Data models Neural networks Receivers Resource management Semantic communication Simulation Training Transmitters Wireless communication Noise
In this paper, a novel contrastive language-image pre-training (CLIP) model based on semantic The communication framework is designed. Compared to a standard neural network (e.g., convolutional neural network) based semantic encoders and decoders that require joint training over a common dataset, Our CLIP model-based method does not require any training procedures, thus enabling a transmitter to extract data meanings of the original data without neural network model training, and the receiver to train a neural network for follow-up task implementation without the communications with the transmitter. Next, we investigate the deployment of the CLIP model-based semantic framework over a noisy wireless network. Since the semantic information generated by the CLIP model is susceptible to wireless noise and the spectrum used for semantic information transmission are limited; it is necessary to optimize CLIP jointly model architecture and spectrum resource block (RB) allocation to maximize semantic communication performance while considering wireless noise, the delay and energy used for semantic communication. To achieve this goal, we use a proximal policy optimization (PPO) based reinforcement learning (RL) algorithm to learn how wireless noise affects the semantic communication performance, thus finding optimal CLIP model and RB for each user. Simulation results show that our proposed method improves the convergence rate by up to 40%, and the accumulated reward by 4x compared to soft actor-critic.

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