Chiang Kai-Wei, Liao Jhen-Kai, Tsai Guang-Je, Chang Hsiu-Wen
Department of Geomatics, National Cheng-Kung University, 1 University Road, Tainan 701, Taiwan.
Sensors (Basel). 2015 Dec 28;16(1):34. doi: 10.3390/s16010034.
Hardware sensors embedded in a smartphone allow the device to become an excellent mobile navigator. A smartphone is ideal for this task because its great international popularity has led to increased phone power and since most of the necessary infrastructure is already in place. However, using a smartphone for indoor pedestrian navigation can be problematic due to the low accuracy of sensors, imprecise predictability of pedestrian motion, and inaccessibility of the Global Navigation Satellite System (GNSS) in some indoor environments. Pedestrian Dead Reckoning (PDR) is one of the most common technologies used for pedestrian navigation, but in its present form, various errors tend to accumulate. This study introduces a fuzzy decision tree (FDT) aided by map information to improve the accuracy and stability of PDR with less dependency on infrastructure. First, the map is quickly surveyed by the Indoor Mobile Mapping System (IMMS). Next, Bluetooth beacons are implemented to enable the initializing of any position. Finally, map-aided FDT can estimate navigation solutions in real time. The experiments were conducted in different fields using a variety of smartphones and users in order to verify stability. The contrast PDR system demonstrates low stability for each case without pre-calibration and post-processing, but the proposed low-complexity FDT algorithm shows good stability and accuracy under the same conditions.
嵌入智能手机的硬件传感器使该设备成为出色的移动导航器。智能手机非常适合这项任务,因为它在全球广受欢迎,这使得手机性能得到提升,而且大多数必要的基础设施已经就绪。然而,由于传感器精度低、行人运动的可预测性不精确以及在某些室内环境中无法使用全球导航卫星系统(GNSS),使用智能手机进行室内行人导航可能会出现问题。行人航位推算(PDR)是用于行人导航的最常用技术之一,但就其目前的形式而言,各种误差往往会累积。本研究引入了一种借助地图信息的模糊决策树(FDT),以提高PDR的准确性和稳定性,同时减少对基础设施的依赖。首先,通过室内移动测绘系统(IMMS)快速勘测地图。其次,安装蓝牙信标以实现任意位置的初始化。最后,基于地图的FDT可以实时估计导航解决方案。为了验证稳定性,在不同场景下使用各种智能手机和用户进行了实验。对比PDR系统在未进行预校准和后处理的情况下,每种情况的稳定性都很低,但所提出的低复杂度FDT算法在相同条件下显示出良好的稳定性和准确性。