使用车辆安全传感器的可扩展导航解决方案的性能分析

Scott M. Martin, C. Rose, J. Britt, D. Bevly, Z. Popovic
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引用次数: 5

摘要

GPS接收器的性能在城市峡谷和茂密的树叶等恶劣环境中会受到影响。惯性传感器提供GPS更新之间的信息,可以增强GPS/INS架构中的位置解决方案。来自车辆上已有的安全传感器的附加信息,如车道偏离警告(LDW)传感器,可以通过限制惯性误差进一步增强导航解决方案,即使在存在GPS误差的情况下。本文概述了一种可扩展的导航解决方案,该解决方案可以结合使用GPS、简化惯性传感器、全惯性数据、车辆can数据和视觉传感器,具体取决于在困难环境中可用的数据。数据是在密歇根州底特律市收集的,收集的环境多种多样,包括茂密的树叶、高速公路和市中心地区,其比例代表了典型驾驶的预期。该方法的验证包括对覆盖在该区域地图上的最终轨迹进行定性分析,以及对拟议系统和参考系统产生的轨迹进行定量比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance analysis of a scalable navigation solution using vehicle safety sensors
GPS receiver performance can suffer in difficult environments such as urban canyons and heavy foliage. Inertial sensors provide information between GPS updates and can enhance the position solution in a GPS/INS architecture. Additional information from safety sensors already on the vehicle, such as lane departure warning (LDW) sensors, can enhance the navigation solution further by constraining inertial errors even in the presence of GPS errors. This paper outlines a scalable navigation solution that can use a combination of GPS, reduced inertial sensors, full inertial data, vehicle CAN data, and vision sensors, depending on what data is available in difficult environments. Data was collected in Detroit, Michigan in a diverse mix of environments that includes heavy foliage, highway, and downtown areas, in proportions representative of what is expected in typical driving. Validation of the approach consists of both a qualitative analysis of the resulting trajectories overlaid on a map of the area and quantitative comparison of the trajectories produced by the proposed system and the reference system.
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