Terrain Based GPS Independent Lane-Level Vehicle Localization Using Particle Filter and Dead Reckoning

Hamad Ahmed, Muhammad Tahir, Khurram Ali
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引用次数: 4

Abstract

The need of accurate and reliable positioning in various location-aware safety critical transportation applications is increasing day by day. The Global Positioning System (GPS) is not able to provide lane-level vehicle localization without the aid of differential corrections. It also suffers from signal outages in urban areas resulting in a complete loss of location information. Therefore, GPS independent localization methods are now being developed. In this domain, inertial sensors along with a terrain map have been successfully deployed to achieve sub-meter level accuracy in the longitudinal direction of the vehicle in an urban environment. However, lateral localization of the vehicle with good accuracy and computational efficiency remains a challenging topic. Existing algorithms are computationally intensive, and do not provide location information during the process of lane change by the vehicle. This information is very crucial as the risk of potential conflict with nearby vehicles is higher during lane changes. In this paper, we present a computationally efficient method for achieving lane-level localization in a multi-lane scenario by combining the particle filter with dead- reckoning. The particle filter provides the location information about a single lane while location information during the lane change maneuvers is provided by dead-reckoning. Lane- change maneuvers are detected by constantly observing the yaw rate of the vehicle. Developing a computationally efficient algorithm enables the GPS independent localization algorithm to be run on low cost micro-controllers making its deployment feasible for packaged devices. Experiments performed on an instrumented vehicle show the superiority of the proposed algorithm on the existing ones.
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基于粒子滤波和航位推算的GPS独立车道车辆定位
在各种位置感知安全关键交通应用中,对准确可靠定位的需求日益增加。如果没有差分校正的帮助,全球定位系统(GPS)无法提供车道级车辆定位。它还受到城市地区信号中断的影响,导致位置信息完全丢失。因此,目前正在开发与GPS无关的定位方法。在这个领域,惯性传感器和地形图已经成功地部署在城市环境中,在车辆的纵向上实现了亚米级的精度。然而,如何以较高的精度和计算效率实现车辆的横向定位仍然是一个具有挑战性的课题。现有的算法计算量大,不能在车辆变道过程中提供位置信息。这些信息非常重要,因为在变道期间,与附近车辆发生潜在冲突的风险更高。在本文中,我们提出了一种结合粒子滤波和航位推算实现多车道场景下车道级定位的高效方法。粒子滤波器提供关于单个车道的位置信息,而变道机动期间的位置信息由航位推算提供。变道机动是通过不断观察车辆的偏航率来检测的。开发一种计算效率高的算法使GPS独立定位算法能够在低成本的微控制器上运行,使其部署在封装设备上可行。在一辆仪器车上进行的实验表明,该算法比现有算法具有优越性。
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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