一种融合建筑平面图与PDR位移估计的回溯粒子滤波器

Widyawan, M. Klepal, S. Beauregard
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引用次数: 125

摘要

众所周知,粒子滤波和地图滤波技术可以用来提高定位系统的性能,如行人航位推算(PDR)。在以往的室内导航研究中,通常假设有详细的建筑平面图。然而,在许多紧急/救援情况下,手头可能只有有限的建筑平面图信息。本文的目的是展示一种新的回溯粒子滤波器(Backtracking Particle Filter, BPF)如何与不同层次的建筑平面图细节相结合,以提高PDR性能。我们使用了真实的PDR步幅和容易出错的步幅方位角数据,这些数据是在一个小办公楼的进出路径上多次行走时收集的。PDR位移数据被输入到BPF估计器中,BPF估计器反过来使用建筑平面信息来约束粒子运动。BPF可以利用远程(几何)约束信息,并在详细的建筑平面图信息下产生出色的定位性能(平均二维误差1.32 m)。更重要的是,与仅使用pdr、无地图基准情况(平均2D误差8.04 m)相比,仅使用外墙信息的相同滤波器可显著提高定位性能(平均2D误差1.89 m)。这种效果可能很好地发生在许多其他现实的墙壁布局和路径几何形状。此外,这一结果具有重要的实际意义,因为在许多紧急情况下,这种级别的建筑平面图细节可以快速而轻松地生成。
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A Backtracking Particle Filter for fusing building plans with PDR displacement estimates
It is known that Particle Filter and Map Filtering techniques can be used to improve the performance of positioning systems, such as Pedestrian Dead Reckoning (PDR). In previous research on indoor navigation, it was generally assumed that detailed building plans were available. However, in many emer gency / rescue scenarios, there may be only limited building plan information on hand. The purpose of this paper is to show how a novel Backtracking Particle Filter (BPF) can be combined with different levels of building plan detail to improve PDR performance. We use real PDR stride length and blunder-prone stride azimuth data which were collected from multiple walks along paths in and out of a small office building. The PDR displacement data is input to the BPF estimator that in turn uses the building plan information to constrain particle motions. The BPF can take advantage of long-range (geometrical) constraint information and yields excellent positioning performance (1.32 m mean 2D error) with detailed building plan information. More significantly, this same filter using only external wall information produces dramatically improved positioning performance (1.89 m mean 2D error) relative to a PDR-only, no map base case (8.04 m mean 2D error). This effect may very well occur for many other realistic wall layouts and path geometries. Moreover, this result has a substantial practical significance since this level of building plan detail could be quickly and easily generated in many emergency instances.
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