论文标题
创新的语义通信系统
Innovative semantic communication system
论文作者
论文摘要
传统的通信系统专注于传输过程,而与上下文相关的含义也被忽略了。 5G系统已接近香农限制以及增加数据量的事实将导致通信瓶颈,例如增加的延迟问题。受到人工智能理解语义的能力的启发,我们提出了一种新的交流范式,该范式整合了人工智能和通信,语义通信系统。语义通信是基于香农和Weaver \ cite {6197583}的第二级通信,该{6197583}保留了传输信息的语义特征,并在接收器处恢复了信号,从而在不丢失重要信息的情况下压缩通信流量。与其他语义通信系统不同,所提出的系统不仅传输语义信息,还会传输语义解码器。此外,还提出了一般的语义指标来衡量语义通信系统的质量。特别是,图像的语义通信系统,即AESC-I,旨在验证新范式的可行性。使用MNIST和CIFAR10数据集在我们的系统上使用添加剂白色高斯噪声(AWGN)进行仿真。实验结果表明,DEEPSC-I可以有效提取语义信息并在相对较低的SNR下重建图像。
Traditional communication systems focus on the transmission process, and the context-dependent meaning has been ignored. The fact that 5G system has approached Shannon limit and the increasing amount of data will cause communication bottleneck, such as the increased delay problems. Inspired by the ability of artificial intelligence to understand semantics, we propose a new communication paradigm, which integrates artificial intelligence and communication, the semantic communication system. Semantic communication is at the second level of communication based on Shannon and Weaver\cite{6197583}, which retains the semantic features of the transmitted information and recovers the signal at the receiver, thus compressing the communication traffic without losing important information. Different from other semantic communication systems, the proposed system not only transmits semantic information but also transmits semantic decoder. In addition, a general semantic metrics is proposed to measure the quality of semantic communication system. In particular, the semantic communication system for image, namely AESC-I, is designed to verify the feasibility of the new paradigm. Simulations are conducted on our system with the additive white Gaussian noise (AWGN) and the multipath fading channel using MNIST and Cifar10 datasets. The experimental results show that DeepSC-I can effectively extract semantic information and reconstruct images at a relatively low SNR.