Semantic Communication for Multi-Satellite Massive MIMO Transmission: A Mixture of Cooperative Modes Framework
Yafei Wang, Yuchen Zhang, Yiming Zhu, Vu Nguyen Ha, Rui Ding, Wenjin Wang, Symeon Chatzinotas, Bj\"orn Ottersten

TL;DR
This paper introduces a novel semantic communication framework for multi-satellite massive MIMO systems, integrating image transmission with cooperative modes and dynamic switching for improved performance.
Contribution
It develops two semantic communication frameworks for satellite MIMO systems, incorporating transformer-based neural networks and a dynamic mode switching mechanism.
Findings
Proposed frameworks outperform traditional methods in simulations.
Transformer-based networks enhance semantic extraction and interference management.
Dynamic switching balances performance and complexity effectively.
Abstract
This paper investigates semantic communications (SemComs) for multi-satellite cooperative massive multiple-input multiple-output (MIMO) transmission, where multiple massive-MIMO satellites jointly serve a common set of multi-antenna user terminals. For the first time, SemComs with image transmission task are integrated into satellite massive MIMO and multi-satellite cooperative transmission. For the two representative cooperative modes, namely coherent transmission (CT) and non-coherent transmission (NCT), we develop multi-satellite CT (MSCT) and multi-satellite NCT (MSNCT) SemCom frameworks, respectively. MSCT adopts a symmetric architecture, whereas MSNCT introduces transmitter-side stream allocation and a two-stage receiver design that combines per-stream semantic extraction with cross-stream semantic-interference exploitation. To instantiate MSCT, we further design a symmetric…
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