计算机科学
语义计算
通信系统
发射机
编码器
频道(广播)
计算机网络
人工智能
多媒体
语义网
操作系统
作者
Maheshi Lokumarambage,Vishnu Gowrisetty,Hossein Rezaei,Thushan Sivalingam,Nandana Rajatheva,Anil Fernando
出处
期刊:IEEE Access
[Institute of Electrical and Electronics Engineers]
日期:2023-01-01
卷期号:11: 37149-37163
被引量:17
标识
DOI:10.1109/access.2023.3266656
摘要
Semantic communication is considered the future of mobile communication, which aims to transmit data beyond Shannon's theorem of communications by transmitting the semantic meaning of the data rather than the bit-by-bit reconstruction of the data at the receiver's end.The semantic communication paradigm aims to bridge the gap of limited bandwidth problems in modern high-volume multimedia application content transmission.Integrating AI technologies with the 6G communications networks paved the way to develop semantic communication-based end-to-end communication systems.In this study, we have implemented a semantic communication-based end-to-end image transmission system, and we discuss potential design considerations in developing semantic communication systems in conjunction with physical channel characteristics.A Pre-trained GAN network is used at the receiver as the transmission task to reconstruct the realistic image based on the Semantic segmented image at the receiver input.The semantic segmentation task at the transmitter (encoder) and the GAN network at the receiver (decoder) is trained on a common knowledge base, the COCO-Stuff dataset.The research shows that the resource gain in the form of bandwidth saving is immense when transmitting the semantic segmentation map through the physical channel instead of the ground truth image in contrast to conventional communication systems.Furthermore, the research studies the effect of physical channel distortions and quantization noise on semantic communication-based multimedia content transmission.
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