Learnable Residual-based Latent Denoising in Semantic Communication
- URL: http://arxiv.org/abs/2502.07319v1
- Date: Tue, 11 Feb 2025 07:29:32 GMT
- Title: Learnable Residual-based Latent Denoising in Semantic Communication
- Authors: Mingkai Xu, Yongpeng Wu, Yuxuan Shi, Xiang-Gen Xia, Wenjun Zhang, Ping Zhang,
- Abstract summary: ASemCom framework is proposed for robust image transmission over noisy channels.
By incorporating a learnable latent denoiser into the receiver, the received signals are preprocessed to remove the channel noise.
- Score: 27.49223957484401
- License:
- Abstract: A latent denoising semantic communication (SemCom) framework is proposed for robust image transmission over noisy channels. By incorporating a learnable latent denoiser into the receiver, the received signals are preprocessed to effectively remove the channel noise and recover the semantic information, thereby enhancing the quality of the decoded images. Specifically, a latent denoising mapping is established by an iterative residual learning approach to improve the denoising efficiency while ensuring stable performance. Moreover, channel signal-to-noise ratio (SNR) is utilized to estimate and predict the latent similarity score (SS) for conditional denoising, where the number of denoising steps is adapted based on the predicted SS sequence, further reducing the communication latency. Finally, simulations demonstrate that the proposed framework can effectively and efficiently remove the channel noise at various levels and reconstruct visual-appealing images.
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