Not All Symbols Are Equal: Importance-Aware Constellation Design for Semantic Communication
Albert Shaju, Christo Kurisummoottil Thomas, Mayukh Roy Chowdhury

TL;DR
This paper introduces a novel semantic-aware constellation design for goal-oriented communication, improving task-critical symbol protection and achieving near-perfect semantic protection probability across various modulation schemes.
Contribution
It proposes a joint semantic-physical layer framework with a learned constellation and new metrics, optimizing the protection of task-relevant information in semantic communication.
Findings
Semantic-aware constellation achieves near 100% SPP at high spectral efficiency.
Proposed method outperforms standard constellations in protecting task-critical symbols.
Framework generalizes across multiple datasets without modification.
Abstract
Semantic communication systems for goal-oriented transmission must protect task-relevant information not only through source compression but also via physical layer mapping. Existing approaches decouple constellation design and semantic encoding, exposing critical symbols to channel errors at the same rate as irrelevant ones. Contrary to this, in this paper, a joint semantic-physical layer framework is proposed, which is composed of a vector quantized-variational autoencoder that extracts discrete latent concepts, a semantic criticality indicator (SCI) that scores each concept by task relevance, and a deep reinforcement learning agent that dynamically selects the transmission subset based on instantaneous channel conditions. At the physical layer, a learned semantic-aware M -QAM constellation assigns symbol positions according to joint co-occurrence statistics and SCI scores, departing…
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