地图辅助SLAM在邻里环境中的应用

K. Lee, W. S. Wijesoma, J. Ibañez-Guzmán
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引用次数: 8

摘要

对于智能车辆在主题公园、工业园区、大学校园等社区环境中的应用来说,鲁棒和准确的定位是一个非常重要的问题。基于全球定位系统(GPS)的传统和经典方法在封闭空间(如邻里环境)中使用时,由于信号阻塞和多路径效应而存在问题。基于特征的定位技术存在特征检测失败的问题,特别是当特征稀疏或不可识别时。航位推算和惯性方法必须处理传感器漂移问题,才能在长时间运行中可靠地定位。为了实现车辆可靠、鲁棒和准确的定位,需要一个融合不同定位技术的框架,为此,提出了一种基于通用贝叶斯概率估计理论框架的路网拓扑约束统一定位方案。通过在大型小区环境中行驶的车辆的实验结果,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Map aided SLAM in neighbourhood environments
Robust and accurate localization is a very important issue for the application of smart vehicles in neighbourhood environments such as theme parks, industrial estates, university campuses, etc. Conventional and classical approaches based on global positioning system (GPS) when used in closed spaces like neighbourhood environments pose problems due to signal blockages and multiple path effects. Feature based localization techniques suffer from feature detection failures, especially when features are sparse or not recognisable. Dead reckoning and inertial methods have to deal with the problem of drift in the sensors to be able to localize reliably over long periods of operation. To localize a vehicle reliably, robustly and accurately, a framework that enables the fusion of the different localization techniques is thus required, for this purpose, a road network topology constrained unified localization scheme is proposed based on the general Bayesian probabilistic estimation theoretic framework. The experimental results obtained from a vehicle driven in a large neighbourhood environment are presented to demonstrate the effectiveness of the proposed methodology.
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