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Collaborative Merging of Radio SLAM Maps in View of Crowd-sourced Data Acquisition and Big Data

机译:鉴于人群源数据采集和大数据,无线电泥浆地图的协作融合

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Indoor localization and navigation is a much researched and difficult problem. The best solutions, usually use expensive specialized equipment and/or prior calibration of some form. To the average person with smart or Internet-Of-Things devices, these solutions are not feasible, particularly in large scales. With hardware advancements making Ultra-Wideband devices more accurate and low powered, this unlocks the potential of having such devices in commonplace around factories and homes, enabling an alternative method of navigation. Therefore, indoor anchor calibration becomes a key problem in order to implement these devices efficiently and effectively. In this paper, we present a method to fuse radio SLAM (also known as Time-Of-Arrival self-calibration) maps together in a linear way. In doing so we are then able to collaboratively calibrate the anchor positions in 3D to native precision of the devices. Furthermore, we introduce an automatic scheme to determine which of the maps are best to use to further improve the anchor calibration and its robustness but also show which maps could be discarded. Additionally, when a map is fused in a linear way, it is a very computationally cheap process and produces a reasonable map which is required to push for crowd-sourced data acquisition.
机译:室内本地化和导航是一个很多研究和难题。最好的解决方案,通常使用昂贵的专用设备和/或先前的某种形式的校准。对于具有智能或内容互联网设备的普通人,这些解决方案是不可行的,特别是在大尺度中。由于硬件进步使超宽带设备更加准确,并且功耗低,这解锁了在常规工厂和家庭中拥有这样的设备的可能性,从而实现了替代的导航方法。因此,室内锚校准成为关键问题,以便有效且有效地实现这些设备。在本文中,我们以线性方式介绍了一种熔断器无线电(也称为到达时间校准)地图的方法。这样做,我们能够协同校准3D中的锚定位置到设备的原生精度。此外,我们介绍了一种自动方案,以确定最能使用哪个地图,以进一步改善锚校准及其鲁棒性,而且还显示了哪些地图可以被丢弃。此外,当地图以线性方式融合时,它是一个非常廉价的过程,并且产生了推动人群源数据采集所需的合理地图。

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