广域网中集成通信与传感的机器学习辅助传感技术:现状与未来方向

Siyuan Shao, Min Fan, Chen Yu, Y. Li, Xiaodong Xu, Haiming Wang
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引用次数: 5

摘要

传感是构建智能环境的关键基础。基于IEEE 802.11物理层的信道状态信息(CSI)应用于无线本地接入网中,具有不侵犯隐私、非接触式、易部署、成本低等优点,是当前传感解决方案中非常有前途的技术。近年来,集成通信与传感(ICAS)技术已成为无线通信和计算机领域的热门研究课题之一。鉴于ICAS取得了丰硕的进展,有必要对这些进展进行回顾,以综合和提供以往的研究经验和参考,以帮助相关研究领域和实际应用的发展(cid:12)。基于此,本文旨在对基于csi的传感技术进行全面的综述。本研究将调查的工作分为基于模型的方法、基于数据的方法和模型-数据混合驱动的方法。介绍了一些重要的物理模型和机器学习算法。根据特定的应用场景,传感功能分为(cid:12)检测、估计和识别。展望了未来的发展方向和挑战。
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MACHINE LEARNING-ASSISTED SENSING TECHNIQUES FOR INTEGRATED COMMUNICATIONS AND SENSING IN WLANS: CURRENT STATUS AND FUTURE DIRECTIONS
|Sensing is a key basis for building an intelligent environment. Using channel state information (CSI) from the IEEE 802.11 physical layer in the wireless local access networks, the CSI-based device-free sensing technique has become very promising to the current sensing solutions because of its non-invasion of privacy, non-contact, easy deployment, and low cost. In recent years, the integrated communication and sensing (ICAS) technology has become one of the popular research topics in both wireless communications and computer areas. Given the fruitful advancements of ICAS, it is essential to review these advancements to synthesize and give previous research experiences and references to aid the development of relevant research (cid:12)elds and real-world applications. Motivated by this, this paper aims to provide a comprehensive survey of CSI-based sensing techniques. This study categorizes the surveyed works into model-based methods, data-based methods, and model-data hybrid-driven methods. Some important physical models and machine learning algorithms are also introduced. The sensing functions are classi(cid:12)ed into detection, estimation, and recognition according to speci(cid:12)c application scenarios. Furthermore, future directions and challenges are discussed.
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