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Autonomous Urban Localization and Navigation with Limited Information

机译:信息有限的自治城市定位和导航

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Urban environments offer a challenging scenario for autonomous driving. Globally localizing information, such as a GPS signal, can be unreliable due to signal shadowing and multipath errors. Detailed a priori maps of the environment with sufficient information for autonomous navigation typically require driving the area multiple times to collect large amounts of data, substantial post-processing on that data to obtain the map, and then maintaining updates on the map as the environment changes. This paper addresses the issue of autonomous driving in an urban environment by investigating algorithms and an architecture to enable fully functional autonomous driving with limited information. An algorithm to autonomously navigate urban roadways with little to no reliance on an a priori map or GPS is developed. Localization is performed with an extended Kalman filter with odometry, compass, and sparse landmark measurement updates. Navigation is accomplished by a compass-based navigation control law. Key results from Monte Carlo studies show success rates of urban navigation under different environmental conditions. Experiments validate the simulated results and demonstrate that, for given test conditions, an expected range can be found for a given success rate.
机译:城市环境为自动驾驶提供了具有挑战性的方案。由于信号阴影和多径错误,全球定位信息(例如GPS信号)可能不可靠。详细的先验环境地图以及足够的信息来进行自动导航,通常需要多次驱动该区域以收集大量数据,对该数据进行大量后处理才能获得地图,然后随着环境的变化保持地图上的更新。本文通过研究用于在有限信息下实现全功能自动驾驶的算法和体系结构,解决了城市环境中的自动驾驶问题。开发了一种算法,可以在几乎不依赖先验地图或GPS的情况下自主导航城市道路。使用具有里程表,指南针和稀疏地标测量更新的扩展卡尔曼滤波器执行定位。导航是通过基于罗盘的导航控制律来完成的。蒙特卡洛研究的主要结果表明,在不同环境条件下城市航行的成功率。实验验证了模拟结果,并证明了在给定的测试条件下,可以找到给定的成功率的预期范围。

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