TONARI:利用未授权的 LPWAN 信号对近距离物理接触进行反应式检测

IF 3.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS ACM Transactions on Internet of Things Pub Date : 2024-02-15 DOI:10.1145/3648572
Chenglong Shao, Osamu Muta
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引用次数: 0

摘要

识别两个物体是否有密切的物理接触(CPC)是各种物联网服务的基础,如车辆接近警报和减少辐射照射。传统上,这是通过量身定制的接近传感器来实现的,这些传感器会主动发射无线信号并分析来自物体的反射。尽管这种方法可行,但在过去几年中,无需自发信号传输、只需利用从目标接收到的无线信号的被动式 CPC 检测技术得到了蓬勃发展。与需要额外使用多天线、专用信号发射器、人工干预或后端服务器的现有方法不同,本文介绍的 TONARI 是一种以被动方式执行的轻松 CPC 检测框架。TONARI 首次使用 LoRa(未授权低功耗广域网 (LPWAN) 技术的代表)作为 CPC 检测的无线信号进行开发。TONARI 的核心是一个新颖的特征仲裁器,它通过区分不同类型的基于 LoRa 的啁啾加法采样幅度序列来决定两个设备是否处于 CPC 中。基于软件定义无线电的实验表明,在大多数实际情况下,通过 TONARI 实现的 CPC 检测准确率可达 100%。
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TONARI: Reactive Detection of Close Physical Contact using Unlicensed LPWAN Signals
Recognizing if two objects are in close physical contact (CPC) is the basis of various Internet-of-Things services such as vehicle proximity alert and radiation exposure reduction. This is achieved traditionally through tailor-made proximity sensors that proactively transmit wireless signals and analyze the reflection from an object. Despite its feasibility, the past few years have witnessed the prosperity of reactive CPC detection techniques that do not need spontaneous signal transmission and merely exploit received wireless signals from a target. Unlike existing approaches entailing additional effort of multiple antennas, dedicated signal emitters, human intervention, or a back-end server, this paper presents TONARI, an effortless CPC detection framework that performs in a reactive manner. TONARI is developed for the first time with LoRa, the representative of unlicensed low-power wide area network (LPWAN) technologies, as the wireless signal for CPC detection. At the heart of TONARI lies a novel feature arbitrator that decides whether two devices are in CPC or not by distinguishing different types of LoRa chirp-based additive sample magnitude sequences. Software-defined radio-based experiments are conducted to show that the achievable CPC detection accuracy via TONARI can reach 100% in most practical cases.
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CiteScore
5.20
自引率
3.70%
发文量
0
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