Motivated by recent success of machine learning tools at the PHY layer and driven by high bandwidth demands of the next wireless communication standard 6G, the old idea of semantic communication by Weaver from 1949 has received considerable attention. It breaks with the classic design paradigm according to Shannon by aiming to transmit the meaning of a message rather than its exact copy and thus potentially allows for savings in bandwidth. In this work, inspired by Weaver, we propose an information-theoretic framework where the semantic context is explicitly introduced into probabilistic models. In particular, for bandwidth efficient transmission, we define semantic communication system design as an Information Bottleneck optimization problem and consider important implementation aspects. Further, we uncover the restrictions of the classic 5G communication system design w.r.t. semantic context. Notably, based on the example of distributed image classification, we reveal the huge potential of a semantic communication system design. Numerical results show a tremendous saving in bandwidth of 20 dB with our proposed approach ISCNet compared to a classic PHY layer design.
翻译:在PHY层的机器学习工具最近取得成功的推动下,在下一个无线通信标准6G的高带宽需求的驱动下,Weaver1949年以来的语义通信的旧观念受到相当重视,它与香农的典型设计范式相违背,目的是传递电文的含义,而不是其准确副本,从而有可能节省带宽。在Weaver的启发下,我们在这项工作中提出了一个信息理论框架,其中将语义环境明确引入概率模型。特别是,对于带宽高效传输,我们把语义通信系统设计定义为信息波特内克优化问题,并考虑重要的实施方面。此外,我们发现了经典的5G通信系统设计(w.r.t. 语义背景)的限制。值得注意的是,根据分布式图像分类的范例,我们揭示了语义通信系统设计的巨大潜力。数字结果显示,与典型的PHYDY层设计相比,我们提议的ISCNet方法在20 dB带宽度方面节省了巨大的资金。