A radical paradigm shift of wireless networks from ``connected things'' to ``connected intelligence'' undergoes, which coincides with the Shanno and Weaver's envisions: Communications will transform from the technical level to the semantic level. This article proposes a semantic communication method with artificial intelligence tasks (SC-AIT). First, the architecture of SC-AIT is elaborated. Then, based on the proposed architecture, we implement SC-AIT for a image classifications task. A prototype of SC-AIT is also established for surface defect detection, is conducted. Experimental results show that SC-AIT has much lower bandwidth requirements, and can achieve more than $40\%$ classification accuracy gains compared with the communications at the technical level. Future trends and key challenges for semantic communications are also identified.
翻译:无线网络从“连通事物”到“连通情报”的彻底范式转变,这与尚诺和韦弗的构想相吻合:通信将从技术层面转变为语义层面。本文章建议采用带有人工智能任务的语义通信方法(SC-AIT)。首先,详细制定了SC-AIT的架构。然后,根据拟议的架构,我们为图像分类任务实施SC-AIT。还建立了SC-AIT的原型,用于表面缺陷检测。实验结果表明,SC-AIT的带宽要求要低得多,与技术层面的通信相比,分类准确性可以超过40美元。还确定了语言通信的未来趋势和关键挑战。