使用物联网的视障人士室内定位框架

P. T. Mahida, S. Shahrestani, Hon Cheung
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引用次数: 4

摘要

为了克服全球定位系统(GPS)在室内环境中的局限性,人们开发了各种室内定位系统,包括Wi-Fi、蓝牙、超宽带(UWB)和射频识别(RFID)。其中,Wi-Fi技术最常用于室内导航。由于障碍物和无法到达的覆盖范围,Wi-Fi信号可能在某些地区不可用。尽管如此,Wi-Fi的精度在5-15米之间,这对视障人士来说是不利的。定位信标和内置惯性传感器的智能手机的普及对开发潜在的室内导航系统起着至关重要的作用。本文提出了一种基于智能手机惯性传感器和蓝牙信标的视障人士识别框架。建筑物中的信标/接近传感器可以通过转弯导航帮助行人在两个地标/兴趣点之间导航。然而,在建筑物的某些区域,在大走廊或黑暗的小巷中,外部传感是缺乏的。该模型证明了惯性传感器在黑暗区域跟踪VIP是有用的。也。最大限度地减少两个地标/信标之间使用外部传感器。通过在智能手机上进行轨迹测试,验证了该框架与融合算法在android应用中的性能。行走轨迹的实验结果表明,该系统具有较高的定位精度,平均位置误差约为1.5 ~ 2 m,采用基于磁力计的位置学习技术可以进一步提高定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indoor positioning framework for visually impaired people using Internet of Things
To overcome the limitation of Global positioning system (GPS) in indoor environments, various indoor positioning system have been developed using Wi-Fi, Bluetooth, Ultrawideband (UWB) and radio-frequency identification (RFID). Amongst them, Wi-Fi technologies are most commonly used for indoor navigation. Wi-Fi signals may be unavailable in some areas due to obstacles and unreachable coverages. Despite of it, the accuracy achieved by Wi-Fi is between 5–15 m that is unfavorable for visually impaired people. The popularity of beacons for positioning and smartphones with built-in inertial sensors plays a vital role in developing potential indoor navigation system. This paper presents a framework for visually impaired person (VIP) based on inertial sensors of smartphones and Bluetooth beacons. Beacons/proximity sensors in a building can help a pedestrian to navigate between two landmarks/points of interest via turn-by-turn navigation. However, there are certain areas in the building where external sensing is absent in a big hallway or dark alley. This model demonstrates that inertial sensors are useful to track a VIP in dark areas. Also. minimizes the use of external sensors between two landmarks/beacons. The performance of the proposed framework with the fusion algorithm in an android application is examined by conducting trajectory test on a smartphone. The experimental results of the walking traces show that the system has high accuracy with almost 1.5-2 m mean position error which could be improved further by implementing magnetometer based position learning techniques.
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