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.
翻译:语义通信被认为是移动通信的未来,它旨在通过传输数据的语义意义,而不是在接收端逐比特地重构数据来传输超出香农定理通信的数据。语义通信范式旨在弥合现代高容量多媒体应用程序内容传输的带宽限制问题。将人工智能技术与第6G通信网络相结合为基础,为发展基于语义通信的端到端通信系统铺平了道路。在本项研究中,我们实现了一种基于语义通信的端到端图像传输系统,并讨论了在与物理信道特性相结合下开发语义通信系统的潜在设计考虑因素。预训练的GAN网络在接收端用作传输任务,以基于接收器输入的语义分段图像重建逼真图像。编码器端的语义分割任务和解码器端的GAN网络都基于共同的知识库,COCO-Stuff数据集进行训练。研究表明,与传统通信系统相比,通过物理通道传输语义分割映射而不是实际图像时的资源收益是巨大的,以带宽节省的形式体现。此外,研究还研究了物理信道失真和量化噪声对基于语义通信的多媒体内容传输的影响。