SPAIMay 18, 2023

Rate-Adaptive Coding Mechanism for Semantic Communications With Multi-Modal Data

arXiv:2305.10773v148 citations
Originality Incremental advance
AI Analysis

This work addresses the bandwidth demands in multi-modal communication systems for applications like speech, text, and image transmission, though it is incremental as it builds on existing semantic communication concepts.

The paper tackles the incompatibility of existing end-to-end neural network-based semantic communication frameworks with modern digital communication systems and their task-specific limitations by proposing a distributed multi-modal semantic communication framework with a rate-adaptive coding mechanism. The results show that this mechanism outperforms conventional and existing semantic systems in task performance, inference delay, and deployment complexity.

Recently, the ever-increasing demand for bandwidth in multi-modal communication systems requires a paradigm shift. Powered by deep learning, semantic communications are applied to multi-modal scenarios to boost communication efficiency and save communication resources. However, the existing end-to-end neural network (NN) based framework without the channel encoder/decoder is incompatible with modern digital communication systems. Moreover, most end-to-end designs are task-specific and require re-design and re-training for new tasks, which limits their applications. In this paper, we propose a distributed multi-modal semantic communication framework incorporating the conventional channel encoder/decoder. We adopt NN-based semantic encoder and decoder to extract correlated semantic information contained in different modalities, including speech, text, and image. Based on the proposed framework, we further establish a general rate-adaptive coding mechanism for various types of multi-modal semantic tasks. In particular, we utilize unequal error protection based on semantic importance, which is derived by evaluating the distortion bound of each modality. We further formulate and solve an optimization problem that aims at minimizing inference delay while maintaining inference accuracy for semantic tasks. Numerical results show that the proposed mechanism fares better than both conventional communication and existing semantic communication systems in terms of task performance, inference delay, and deployment complexity.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes