GNSS Research Center, Wuhan University, No.129, Luoyu Road, Wuhan 430079, China.
Sensors (Basel). 2018 Oct 12;18(10):3419. doi: 10.3390/s18103419.
Indoor positioning technology based on Received Signal Strength Indicator (RSSI) fingerprints is a potential navigation solution, which has the advantages of simple implementation, low cost and high precision. However, as the radio frequency signals can be easily affected by the environmental change during its transmission, it is quite necessary to build location fingerprint database in advance and update it frequently, thereby guaranteeing the positioning accuracy. At present, the fingerprint database building methods mainly include point collection and line acquisition, both of which are usually labor-intensive and time consuming, especially in a large map area. This paper proposes a fast and efficient location fingerprint database construction and updating method based on a self-developed Unmanned Ground Vehicle (UGV) platform NAVIS, called Automatic Robot Line Collection. A smartphone was installed on NAVIS for collecting indoor Received Signal Strength Indicator (RSSI) fingerprints of Signals of Opportunity (SOP), such as Bluetooth and Wi-Fi. Meanwhile, indoor map was created by 2D LiDAR-based Simultaneous Localization and Mapping (SLAM) technology. The UGV automatically traverse the unknown indoor environment due to a pre-designed full-coverage path planning algorithm. Then, SOP sensors collect location fingerprints and generates grid map during the process of environment-traversing. Finally, location fingerprint database is built or updated by Kriging interpolation. Field tests were carried out to verify the effectiveness and efficiency of our proposed method. The results showed that, compared with the traditional point collection and line collection schemes, the root mean square error of the fingerprinting-based positioning results were reduced by 35.9% and 25.0% in static tests and 30.0% and 21.3% respectively in dynamic tests. Moreover, our UGV can traverse the indoor environment autonomously without human-labor on data acquisition, the efficiency of the automatic robot line collection scheme is 2.65 times and 1.72 times that of the traditional point collection and the traditional line acquisition, respectively.
基于接收信号强度指示 (RSSI) 指纹的室内定位技术是一种有潜力的导航解决方案,具有实现简单、成本低、精度高的优点。然而,由于无线电频率信号在传输过程中很容易受到环境变化的影响,因此有必要预先构建位置指纹数据库,并频繁更新,从而保证定位精度。目前,指纹数据库的构建方法主要包括点采集和线采集,这两种方法通常都需要大量的人力和时间,尤其是在大地图区域。本文提出了一种基于自主开发的无人地面车辆 (UGV) 平台 NAVIS 的快速高效的位置指纹数据库构建和更新方法,称为自动机器人线采集。NAVIS 上安装了一部智能手机,用于采集蓝牙和 Wi-Fi 等机会信号 (SOP) 的室内接收信号强度指示 (RSSI) 指纹。同时,二维激光雷达的同时定位与地图构建 (SLAM) 技术创建室内地图。UGV 由于预先设计的全覆盖路径规划算法,可以自动遍历未知的室内环境。然后,SOP 传感器在环境遍历过程中收集位置指纹并生成网格地图。最后,通过克里金插值构建或更新位置指纹数据库。进行了现场测试,以验证我们提出的方法的有效性和效率。结果表明,与传统的点采集和线采集方案相比,在静态测试中,基于指纹的定位结果的均方根误差分别降低了 35.9%和 25.0%,在动态测试中分别降低了 30.0%和 21.3%。此外,我们的 UGV 可以自主遍历室内环境,无需人工采集数据,自动机器人线采集方案的效率分别是传统点采集和传统线采集的 2.65 倍和 1.72 倍。