TOAST: Task-Oriented Adaptive Semantic Transmission over Dynamic Wireless Environments
Journal:
arXiv
Published Date:
Jun 27, 2025
Abstract
The evolution toward 6G networks demands a fundamental shift from bit-centric
transmission to semantic-aware communication that emphasizes task-relevant
information. This work introduces TOAST (Task-Oriented Adaptive Semantic
Transmission), a unified framework designed to address the core challenge of
multi-task optimization in dynamic wireless environments through three
complementary components. First, we formulate adaptive task balancing as a
Markov decision process, employing deep reinforcement learning to dynamically
adjust the trade-off between image reconstruction fidelity and semantic
classification accuracy based on real-time channel conditions. Second, we
integrate module-specific Low-Rank Adaptation (LoRA) mechanisms throughout our
Swin Transformer-based joint source-channel coding architecture, enabling
parameter-efficient fine-tuning that dramatically reduces adaptation overhead
while maintaining full performance across diverse channel impairments including
Additive White Gaussian Noise (AWGN), fading, phase noise, and impulse
interference. Third, we incorporate an Elucidating diffusion model that
operates in the latent space to restore features corrupted by channel noises,
providing substantial quality improvements compared to baseline approaches.
Extensive experiments across multiple datasets demonstrate that TOAST achieves
superior performance compared to baseline approaches, with significant
improvements in both classification accuracy and reconstruction quality at low
Signal-to-Noise Ratio (SNR) conditions while maintaining robust performance
across all tested scenarios.