PDR and GPS trajectory parts matching for an improved self-contained personal navigation solution with handheld device

Federica Inderst, F. Pascucci, Valérie Renaudin
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引用次数: 1

Abstract

The evolution of smartphones and their embedded sensors motivates research toward the development of handheld device based navigation solutions especially for harsh environments. In this context, Pedestrian Dead Reckoning is usually adopted to compute the pedestrian's trajectory. Step/stride lengths and walking directions are combined in a recursive process. Unfortunately the estimated path suffers from drifting errors due to the sensors' nature and the motion complexity. To reduce this error, map matching strategies are studied and several solutions are proposed in the literature. In this work a Matching Filter is proposed to mitigate the drifting errors. The Matching Filter is a nest filter based on an Extended Kalman Filter and a Complementary filter. The key idea is to match the PDR trajectory with the standalone GPS trajectory during opportune phases in order to estimate a global heading and scale factor errors on the PDR path. The proposed strategy is tested with a 1km walk in a shopping center. A 75% improvement is found as compared to the PDR only trajectory.
PDR和GPS轨迹部分匹配,改进手持设备的自包含个人导航解决方案
智能手机及其嵌入式传感器的发展激发了对基于手持设备的导航解决方案的研究,特别是在恶劣环境下。在这种情况下,通常采用行人航迹推算来计算行人的轨迹。步长/步幅和行走方向在递归过程中组合。不幸的是,由于传感器的性质和运动的复杂性,估计的路径存在漂移误差。为了减少这种误差,研究了地图匹配策略,并提出了几种解决方案。在这项工作中,提出了一种匹配滤波器来减轻漂移误差。匹配滤波器是一种基于扩展卡尔曼滤波器和互补滤波器的嵌套滤波器。关键思想是在适当的阶段将PDR轨迹与独立的GPS轨迹匹配,以估计PDR路径上的全局航向和尺度因子误差。在一个购物中心进行了一公里的步行测试。与仅使用PDR的轨迹相比,改善了75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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