arXiv Open Access 2024

Diff-GO$^\text{n}$: Enhancing Diffusion Models for Goal-Oriented Communications

Suchinthaka Wanninayaka Achintha Wijesinghe Weiwei Wang Yu-Chieh Chao Songyang Zhang +1 lainnya
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Abstrak

The rapid expansion of edge devices and Internet-of-Things (IoT) continues to heighten the demand for data transport under limited spectrum resources. The goal-oriented communications (GO-COM), unlike traditional communication systems designed for bit-level accuracy, prioritizes more critical information for specific application goals at the receiver. To improve the efficiency of generative learning models for GO-COM, this work introduces a novel noise-restricted diffusion-based GO-COM (Diff-GO$^\text{n}$) framework for reducing bandwidth overhead while preserving the media quality at the receiver. Specifically, we propose an innovative Noise-Restricted Forward Diffusion (NR-FD) framework to accelerate model training and reduce the computation burden for diffusion-based GO-COMs by leveraging a pre-sampled pseudo-random noise bank (NB). Moreover, we design an early stopping criterion for improving computational efficiency and convergence speed, allowing high-quality generation in fewer training steps. Our experimental results demonstrate superior perceptual quality of data transmission at a reduced bandwidth usage and lower computation, making Diff-GO$^\text{n}$ well-suited for real-time communications and downstream applications.

Topik & Kata Kunci

Penulis (6)

S

Suchinthaka Wanninayaka

A

Achintha Wijesinghe

W

Weiwei Wang

Y

Yu-Chieh Chao

S

Songyang Zhang

Z

Zhi Ding

Format Sitasi

Wanninayaka, S., Wijesinghe, A., Wang, W., Chao, Y., Zhang, S., Ding, Z. (2024). Diff-GO$^\text{n}$: Enhancing Diffusion Models for Goal-Oriented Communications. https://arxiv.org/abs/2412.06980

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Tahun Terbit
2024
Bahasa
en
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arXiv
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Open Access ✓