基于动态模型的基于实时数据的地形车辆定位

Emil Laftchiev, C. Lagoa, S. Brennan
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引用次数: 10

摘要

本文介绍了一种利用车载传感器获得的车辆俯仰数据进行道路车辆定位的新方法。该方法使用线性动力学模型对路线图数据进行编码,然后在行驶过程中,通过对先前获得的线性模型的不断验证来识别车辆位置。与文献中先前的方法相比,所提出的方法有几个优点,即计算负担更小,位置估计更确定,以及处理常见类型噪声的简化和更直接的方法。这些优点有可能提高定位的速度,并降低基于地形的定位的实施成本。该方法在模拟测试中使用在美国州立大学PA收集的真实世界道路数据。在无噪声环境和有噪声环境下均展示了该算法的性能,并给出了收敛距离的一个界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Terrain-based vehicle localization from real-time data using dynamical models
This paper describes a novel method for the location of road vehicles using vehicle pitch data obtained from on-board sensors. The method encodes the road map data using linear dynamical models, and then, during travel, identifies the vehicle location through continuous validation of the previously obtained linear models. The approach presented has several advantages over previous approaches in the literature, namely a smaller computational burden, a more definitive location estimate, and a simplified and more direct way of handling common types of noise. These benefits have the potential to both increase the speed of the localization and to reduce the implementation cost of terrain-based localization. The method is tested in simulation using real-world road data collected in State College PA, USA. Performance is demonstrated both in a noise-free and noisy environments, and a bound is shown on the convergence distance.
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