Image Transmission
Image transmission research focuses on efficiently and reliably sending images across various channels, prioritizing both fidelity and semantic meaning. Current efforts concentrate on deep learning-based joint source-channel coding (JSCC) methods, often employing autoencoders, variational autoencoders, diffusion models, and transformers to achieve high compression ratios and robust reconstruction even under noisy conditions. These advancements leverage semantic information extraction and generative models to improve perceptual quality and adaptability to different bandwidths and channel characteristics, impacting fields like 6G communication and multimedia applications. The development of new metrics for evaluating semantic similarity is also a key area of investigation.
Papers
Wireless End-to-End Image Transmission System using Semantic Communications
Maheshi Lokumarambage, Vishnu Gowrisetty, Hossein Rezaei, Thushan Sivalingam, Nandana Rajatheva, Anil Fernando
Joint Task and Data Oriented Semantic Communications: A Deep Separate Source-channel Coding Scheme
Jianhao Huang, Dongxu Li, Chuan Huang, Xiaoqi Qin, Wei Zhang
Recovering Sign Bits of DCT Coefficients in Digital Images as an Optimization Problem
Ruiyuan Lin, Sheng Liu, Jun Jiang, Shujun Li, Chengqing Li, C. -C. Jay Kuo
WITT: A Wireless Image Transmission Transformer for Semantic Communications
Ke Yang, Sixian Wang, Jincheng Dai, Kailin Tan, Kai Niu, Ping Zhang