Arbula Damir, Ljubic Sandi
University of Rijeka, Faculty of Engineering, 51000 Rijeka, Croatia.
Sensors (Basel). 2020 Nov 4;20(21):6278. doi: 10.3390/s20216278.
Accurate, inexpensive, and reliable real-time indoor localization holds the key to the full potential of the context-aware applications and location-based Internet of Things (IoT) services. State-of-the-art indoor localization systems are coping with the complex non-line-of-sight (NLOS) signal propagation which hinders the use of proven multiangulation and multilateration methods, as well as with prohibitive installation costs, computational demands, and energy requirements. In this paper, we present a novel sensor utilizing low-range infrared (IR) signal in the line-of-sight (LOS) context providing high precision angle-of-arrival (AoA) estimation. The proposed sensor is used in the pragmatic solution to the localization problem that avoids NLOS propagation issues by exploiting the powerful concept of the wireless sensor network (WSN). To demonstrate the proposed solution, we applied it in the challenging context of the supermarket cart navigation. In this specific use case, a proof-of-concept navigation system was implemented with the following components: IR-AoA sensor prototype and the corresponding WSN used for cart localization, server-side application programming interface (API), and client application suite consisting of smartphone and smartwatch applications. The localization performance of the proposed solution was assessed in, altogether, four evaluation procedures, including both empirical and simulation settings. The evaluation outcomes are ranging from centimeter-level accuracy achieved in static-1D context up to 1 m mean localization error obtained for a mobile cart moving at 140 cm/s in a 2D setup. These results show that, for the supermarket context, appropriate localization accuracy can be achieved, along with the real-time navigation support, using readily available IR technology with inexpensive hardware components.
准确、廉价且可靠的实时室内定位是上下文感知应用和基于位置的物联网(IoT)服务充分发挥潜力的关键。最先进的室内定位系统正应对着复杂的非视距(NLOS)信号传播问题,这阻碍了成熟的多边测量和多角测量方法的使用,同时还面临着高昂的安装成本、计算需求和能源需求。在本文中,我们提出了一种新型传感器,它在视距(LOS)环境中利用低量程红外(IR)信号,可提供高精度的到达角(AoA)估计。所提出的传感器被用于解决定位问题的实用方案中,该方案通过利用无线传感器网络(WSN)这一强大概念避免了NLOS传播问题。为了演示所提出的解决方案,我们将其应用于超市购物车导航这一具有挑战性的场景中。在这个特定的用例中,实现了一个概念验证导航系统,其组件如下:IR-AoA传感器原型以及用于购物车定位的相应WSN、服务器端应用程序编程接口(API),以及由智能手机和智能手表应用组成的客户端应用套件。总共通过四个评估程序对所提出解决方案的定位性能进行了评估,包括实证和模拟设置。评估结果范围从在静态一维环境中实现的厘米级精度到在二维设置中以140厘米/秒速度移动的移动购物车获得的1米平均定位误差。这些结果表明,对于超市场景,使用现成的红外技术和廉价硬件组件,在提供实时导航支持的同时,可以实现适当的定位精度。