LGNIFeb 25, 2025

Task-Driven Semantic Quantization and Imitation Learning for Goal-Oriented Communications

arXiv:2502.17842v22 citationsh-index: 6ICC 2025 - IEEE International Conference on Communications
Originality Incremental advance
AI Analysis

This work addresses bandwidth efficiency for semantic communication systems, but it appears incremental as it builds on existing VQ-VAE and imitation learning methods.

The authors tackled the problem of bandwidth reduction in semantic communication by proposing a goal-oriented framework (GOS-VAE) that extracts task-critical semantics, resulting in improved bandwidth efficiency as demonstrated experimentally.

Semantic communication marks a new paradigm shift from bit-wise data transmission to semantic information delivery for the purpose of bandwidth reduction. To more effectively carry out specialized downstream tasks at the receiver end, it is crucial to define the most critical semantic message in the data based on the task or goal-oriented features. In this work, we propose a novel goal-oriented communication (GO-COM) framework, namely Goal-Oriented Semantic Variational Autoencoder (GOS-VAE), by focusing on the extraction of the semantics vital to the downstream tasks. Specifically, we adopt a Vector Quantized Variational Autoencoder (VQ-VAE) to compress media data at the transmitter side. Instead of targeting the pixel-wise image data reconstruction, we measure the quality-of-service at the receiver end based on a pre-defined task-incentivized model. Moreover, to capture the relevant semantic features in the data reconstruction, imitation learning is adopted to measure the data regeneration quality in terms of goal-oriented semantics. Our experimental results demonstrate the power of imitation learning in characterizing goal-oriented semantics and bandwidth efficiency of our proposed GOS-VAE.

Foundations

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