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Indoor localization for pedestrians with real-time capability using multi-sensor smartphones

机译:使用多传感器智能手机为具有实时功能的行人进行室内定位

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摘要

The localization of persons or objects usually refers to a position determined in a spatial reference system. Outdoors, this is usually accomplished with Global Navigation Satellite Systems (GNSS). However, the automatic positioning of people in GNSS-free environments, especially inside of buildings (indoors) poses a huge challenge. Indoors, satellite signals are attenuated, shielded or reflected by building components (e.g. walls or ceilings). For selected applications, the automatic indoor positioning is possible based on different technologies (e.g. WiFi, RFID, or UWB). However, a standard solution is still not available. Many indoor positioning systems are only suitable for specific applications or are deployed under certain conditions, e.g. additional infrastructures or sensor technologies. Smartphones, as popular cost-effective multi-sensor systems, is a promising indoor localization platform for the mass-market and is increasingly coming into focus. Today’s devices are equipped with a variety of sensors that can be used for indoor positioning. In this contribution, an approach to smartphone-based pedestrian indoor localization is presented. The novelty of this approach refers to a holistic, real-time pedestrian localization inside of buildings based on multi-sensor smartphones and easy-to-install local positioning systems. For this purpose, the barometric altitude is estimated in order to derive the floor on which the user is located. The 2D position is determined subsequently using the principle of pedestrian dead reckoning based on user's movements extracted from the smartphone sensors. In order to minimize the strong error accumulation in the localization caused by various sensor errors, additional information is integrated into the position estimation. The building model is used to identify permissible (e.g. rooms, passageways) and impermissible (e.g. walls) building areas for the pedestrian. Several technologies contributing to higher precision and robustness are also included. For the fusion of different linear and non-linear data, an advanced algorithm based on the Sequential Monte Carlo method is presented.
机译:人或物体的定位通常是指在空间参考系统中确定的位置。在户外,这通常是通过全球导航卫星系统(GNSS)完成的。但是,在没有GNSS的环境中,尤其是在建筑物(室内)内部人员的自动定位提出了巨大的挑战。在室内,卫星信号被建筑部件(例如墙壁或天花板)衰减,屏蔽或反射。对于选定的应用,可以基于不同的技术(例如WiFi,RFID或UWB)自动进行室内定位。但是,标准解决方案仍然不可用。许多室内定位系统仅适用于特定应用或在某些条件下部署,例如其他基础架构或传感器技术。智能手机作为流行的具有成本效益的多传感器系统,是面向大众市场的有希望的室内本地化平台,并且越来越受到关注。当今的设备配备了各种传感器,可用于室内定位。在此贡献中,提出了一种基于智能手机的行人室内定位的方法。这种方法的新颖性是指基于多传感器智能手机和易于安装的本地定位系统的建筑物内部实时整体行人定位。为此,估算大气高度以导出用户所在的楼层。随后根据行人航位推算原理基于从智能手机传感器提取的用户移动来确定2D位置。为了最小化由各种传感器错误引起的定位中的强错误累积,将附加信息集成到位置估计中。该建筑模型用于识别行人的允许(例如房间,通道)和不允许(例如墙壁)建筑区域。还包括有助于提高精度和鲁棒性的几种技术。针对不同线性和非线性数据的融合,提出了一种基于顺序蒙特卡罗方法的改进算法。

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