Long Keliu, Nsalo Kong Darryl Franck, Zhang Kun, Tian Chuan, Shen Chong
State Key Laboratory of Marine Resources Utilization in South China Sea, School of Information and Communication Engineering, Hainan University, Haikou 570228, China.
School of Information and Communication Engineering, Hainan University, Haikou 570228, China.
Sensors (Basel). 2021 Sep 27;21(19):6447. doi: 10.3390/s21196447.
A fingerprint-based localization system is an economic way to solve an indoor positioning problem. However, the traditional off-line fingerprint collection stage is a time-consuming and laborious process which limits the use of fingerprint-based localization systems. In this paper, based on ubiquitous Wireless Fidelity (Wi-Fi) equipment and a low-cost Ultra-Wideband (UWB) ranging system (with only one UWB anchor), a ready-to-use indoor localization system is proposed to realize long-term and high-accuracy indoor positioning. More specifically, in this system, it is divided into two stages: (1) an initial stage, and (2) a positioning stage. In the initial stage, an Inertial Measure Unit (IMU) is used to calculate the position using Pedestrian Dead Reckon (PDR) algorithm within a preset number of steps, and the location-related fingerprints are collected to train a Convolutional Neural Network (CNN) regression model; simultaneously, in order to make the UWB ranging system adapt to the Non-Line-of-Sight (NLoS) environment, the increments of acceleration and angular velocity in IMU and the increments of single UWB ranging measures are correlated to pre-train a Supported Vector Regression (SVR). After reaching the threshold of time or step number, the system is changed into a positioning stage, and the CNN predicts the position calibrated by corrected UWB ranging. At last, a series of practical experiments are conducted in the real environment; the experiment results show that, due to the corrected UWB ranging measures calibrating the CNN parameters in every positioning period, this system has stable localization results in a comparative long-term range. Additionally, it has the advantages of stability, low cost, anti-noise, etc.
基于指纹的定位系统是解决室内定位问题的一种经济方式。然而,传统的离线指纹采集阶段是一个耗时费力的过程,这限制了基于指纹的定位系统的应用。本文基于无处不在的无线保真(Wi-Fi)设备和低成本的超宽带(UWB)测距系统(仅一个UWB锚点),提出了一种现成的室内定位系统,以实现长期高精度的室内定位。更具体地说,该系统分为两个阶段:(1)初始阶段,(2)定位阶段。在初始阶段,使用惯性测量单元(IMU)在预设步数内通过行人航位推算(PDR)算法计算位置,并收集与位置相关的指纹以训练卷积神经网络(CNN)回归模型;同时,为了使UWB测距系统适应非视距(NLoS)环境,将IMU中的加速度和角速度增量与单个UWB测距测量的增量进行关联,以预训练支持向量回归(SVR)。达到时间或步数阈值后,系统进入定位阶段,CNN预测由校正后的UWB测距校准的位置。最后,在真实环境中进行了一系列实际实验;实验结果表明,由于在每个定位周期中通过校正后的UWB测距测量来校准CNN参数,该系统在较长的时间段内具有稳定的定位结果。此外,它还具有稳定性好、成本低、抗噪声等优点。