{"title":"Knowledge-Based Ultra-Low-Latency Semantic Communications for Robotic Edge Intelligence","authors":"Qunsong Zeng;Zhanwei Wang;You Zhou;Hai Wu;Lin Yang;Kaibin Huang","doi":"10.1109/TCOMM.2024.3511931","DOIUrl":null,"url":null,"abstract":"The <italic>sixth-generation</i> (6G) mobile networks will feature the widespread deployment of <italic>artificial intelligence</i> (AI) algorithms at the network edge, which provides a platform for supporting robotic edge intelligence systems. In such a system, a large-scale <italic>knowledge graph</i> (KG) is operated at an edge server as a “remote brain” to guide remote robots on environmental exploration or task execution. In this paper, we present a new air-interface framework targeting the said systems, called knowledge-based robotic <italic>semantic communications</i> (SemCom), which consists of a protocol and relevant transmission techniques. First, the proposed robotic SemCom protocol defines a sequence of system operations for executing a given robotic task. They include identification of all task-relevant <italic>knowledge paths</i> (KPs) on the KG, semantic matching between KG and object classifier, and uploading of robot’s observations for objects recognition and feasible KP identification. Next, to support <italic>ultra-low-latency (observation) feature transmission</i> (ULL-FT), we propose a novel transmission approach that exploits classifier’s robustness, which is measured by <italic>classification margin</i>, to compensate for a high <italic>bit error probability</i> (BEP) resulting from ultra-low-latency transmission (e.g., short packet and/or no coding). By utilizing the tractable <italic>Gaussian mixture</i> (GM) model, we mathematically derive the relation between BEP and classification margin under constraints on classification accuracy and transmission latency. The result sheds light on system requirements to support ULL-FT. Furthermore, for the case where the classification margin is insufficient for coping with channel distortion, we enhance the ULL-FT approach by studying retransmission and multi-view classification for enlarging the margin and further quantifying corresponding requirements. Finally, experiments using deep neural networks as classifier models and real datasets are conducted to demonstrate the effectiveness of ULL-FT in communication latency reduction while providing a guarantee on accurate feasible KP identification.","PeriodicalId":13041,"journal":{"name":"IEEE Transactions on Communications","volume":"73 7","pages":"4925-4940"},"PeriodicalIF":8.3000,"publicationDate":"2024-12-16","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE Transactions on Communications","FirstCategoryId":"94","ListUrlMain":"https://ieeexplore.ieee.org/document/10804598/","RegionNum":2,"RegionCategory":"计算机科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"ENGINEERING, ELECTRICAL & ELECTRONIC","Score":null,"Total":0}
引用次数: 0
Abstract
The sixth-generation (6G) mobile networks will feature the widespread deployment of artificial intelligence (AI) algorithms at the network edge, which provides a platform for supporting robotic edge intelligence systems. In such a system, a large-scale knowledge graph (KG) is operated at an edge server as a “remote brain” to guide remote robots on environmental exploration or task execution. In this paper, we present a new air-interface framework targeting the said systems, called knowledge-based robotic semantic communications (SemCom), which consists of a protocol and relevant transmission techniques. First, the proposed robotic SemCom protocol defines a sequence of system operations for executing a given robotic task. They include identification of all task-relevant knowledge paths (KPs) on the KG, semantic matching between KG and object classifier, and uploading of robot’s observations for objects recognition and feasible KP identification. Next, to support ultra-low-latency (observation) feature transmission (ULL-FT), we propose a novel transmission approach that exploits classifier’s robustness, which is measured by classification margin, to compensate for a high bit error probability (BEP) resulting from ultra-low-latency transmission (e.g., short packet and/or no coding). By utilizing the tractable Gaussian mixture (GM) model, we mathematically derive the relation between BEP and classification margin under constraints on classification accuracy and transmission latency. The result sheds light on system requirements to support ULL-FT. Furthermore, for the case where the classification margin is insufficient for coping with channel distortion, we enhance the ULL-FT approach by studying retransmission and multi-view classification for enlarging the margin and further quantifying corresponding requirements. Finally, experiments using deep neural networks as classifier models and real datasets are conducted to demonstrate the effectiveness of ULL-FT in communication latency reduction while providing a guarantee on accurate feasible KP identification.
期刊介绍:
The IEEE Transactions on Communications is dedicated to publishing high-quality manuscripts that showcase advancements in the state-of-the-art of telecommunications. Our scope encompasses all aspects of telecommunications, including telephone, telegraphy, facsimile, and television, facilitated by electromagnetic propagation methods such as radio, wire, aerial, underground, coaxial, and submarine cables, as well as waveguides, communication satellites, and lasers. We cover telecommunications in various settings, including marine, aeronautical, space, and fixed station services, addressing topics such as repeaters, radio relaying, signal storage, regeneration, error detection and correction, multiplexing, carrier techniques, communication switching systems, data communications, and communication theory. Join us in advancing the field of telecommunications through groundbreaking research and innovation.