Semantic Communication for Cooperative Multi-Tasking over Rate-Limited Wireless Channels with Implicit Optimal Prior
By: Ahmad Halimi Razlighi, Carsten Bockelmann, Armin Dekorsy
Potential Business Impact:
Lets phones send messages using less data.
In this work, we expand the cooperative multi-task semantic communication framework (CMT-SemCom) introduced in [1], which divides the semantic encoder on the transmitter side into a common unit (CU) and multiple specific units (SUs), to a more applicable design. Our proposed system model addresses real-world constraints by introducing a general design that operates over rate-limited wireless channels. Further, we aim to tackle the rate-limit constraint, represented through the Kullback-Leibler (KL) divergence, by employing the density ratio trick alongside the implicit optimal prior method (IoPm). By applying the IoPm to our multi-task processing framework, we propose a hybrid learning approach that combines deep neural networks with kernelized-parametric machine learning methods, enabling a robust solution for the CMT-SemCom. Our framework is grounded in information-theoretic principles and employs variational approximations to bridge theoretical foundations with practical implementations. Simulation results demonstrate the proposed system's effectiveness in rate-constrained multi-task SemCom scenarios, highlighting its potential for enabling intelligence in next-generation wireless networks.
Similar Papers
Multi-Modal Multi-Task Semantic Communication: A Distributed Information Bottleneck Perspective
Information Theory
Sends messages with less data, more meaning.
Task-Oriented Multimodal Token Transmission in Resource-Constrained Multiuser Networks
Networking and Internet Architecture
Makes AI understand pictures and words faster.
Multi-Modal Multi-Task Semantic Communication: A Distributed Information Bottleneck Perspective
Information Theory
Sends messages with less data, keeping meaning.