Image Semantic Communication with Quadtree Partition-based Coding
Yinhuan Huang, Zhijin Qin

TL;DR
This paper introduces Quad-DeepSC, a novel deep learning-based semantic communication system using quadtree partitioning that outperforms traditional methods in high-resolution image transmission while maintaining low complexity.
Contribution
The paper presents a new quadtree partition-based joint semantic-channel coding framework, Quad-DeepSC, achieving state-of-the-art performance with low computational complexity.
Findings
Quad-DeepSC surpasses conventional systems in transmission quality.
The system maintains low latency suitable for real-time applications.
Extensive experiments validate its superior performance across datasets.
Abstract
Deep learning based semantic communication (DeepSC) system has emerged as a promising paradigm for efficient wireless transmission. However, existing image DeepSC methods, frequently encounter challenges in balancing rate-distortion performance and computational complexity, and often exhibit inferior performance compared to traditional schemes, especially on high-resolution datasets. To address these limitations, we propose a novel image DeepSC system, using quadtree partition-based joint semantic-channel coding, named Quad-DeepSC, which maintains low complexity while achieving state-of-the-art transmission performance. Based on maturing learned image compression technologies, we establish a unified DeepSC system design and training pipeline. The proposed Quad-DeepSC integrates quadtree partition-based entropy estimation and feature coding modules with lightweight feature extraction and…
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Taxonomy
TopicsWireless Signal Modulation Classification · Advanced Data Compression Techniques · Digital Media Forensic Detection
