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Indoor Pedestrian Dead Reckoning Calibration by Visual Tracking and Map Information

机译:室内行人通过视觉跟踪和地图信息重新计算校准

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Currently, Pedestrian Dead Reckoning (PDR) systems are becoming an important tool in indoor navigation. This is mainly due to the development of affordable and portable Micro Electro-Mechanical Systems (MEMS) on smartphones and decreased requirement of additional infrastructures in indoor areas. The main drawback to this technology remains the problem of drift accumulation and the need for support from external positioning systems. Vision-aided inertial navigation is one possible solution to that problem. This solution has become more popular in indoor localization with improved satisfaction compared to individual PDR system. Previous studies have used fixed platforms and visual tracking employed feature-extraction-based methods. This paper proposes a distributed implementation of positioning system and uses deep learning for visual tracking. Meanwhile, as both inertial navigation and optical systems can provide only relative positioning information, this paper proposes a method to integrate digital maps with real geographical coordinates to supply absolute location. This hybrid system has been tested on two common operation systems of smartphones using iOS and Android systems, based on corresponding data collection apps respectively, in order to test the robustness of method. It also uses two different methods for calibration, by time synchronization of positions and heading calibration based on time steps. Results demonstrate that localization information collected from both operating systems can be significantly improved after integrating with visual tracking data.
机译:目前,行人死亡的估算(PDR)系统正在成为室内导航的重要工具。这主要是由于在智能手机上开发了经济实惠和便携式的微机电系统(MEMS),并降低了室内区域的附加基础设施的要求。该技术的主要缺点仍然是漂移积累的问题,并且需要从外部定位系统的支持。视觉辅助惯性导航是对该问题的一种可能解决方案。与个体PDR系统相比,这种解决方案在室内定位方面变得更加流行,并改善了满意。以前的研究使用了固定平台和视觉跟踪采用基于特征提取的方法。本文提出了定位系统的分布式实施,并使用深度学习进行视觉跟踪。同时,随着惯性导航和光学系统的仅可以提供相对定位信息,本文提出了一种与实际地理坐标集成数字地图以提供绝对位置的方法。该混合系统已经在使用IOS和Android系统的两个智能手机操作系统上测试,用于分别基于相应的数据收集应用程序,以测试方法的稳健性。它还使用两种不同的校准方法,按时间同步基于时间步骤同步位置和标题校准。结果表明,在与视觉跟踪数据集成之后,可以显着改善从两个操作系统中收集的本地化信息。

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