车辆定位的实时区间约束传播方法

I. Kueviakoe, A. Lambert, P. Tarroux
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引用次数: 5

摘要

车辆自我定位通常是通过扩展卡尔曼滤波等贝叶斯方法来实现的。基于区间分析的新方法旨在以保证的方式实现相同的目标。他们假设所有的模型误差和测量误差都有已知的边界,而没有对边界之间的概率分布作任何假设。我们把定位问题看作是一个区间约束满足问题(ICSP),用区间约束传播算法求解。本文介绍了一种新的实时ICP校正算法,该算法同时校正位置和航向。该算法采用HC4作为低级算法,并在配备GPS接收器、陀螺仪和里程表的户外车辆上进行了验证。并与HC4和3B算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time interval constraint propagation method for vehicle localization
Vehicle ego-localization is commonly achieved by Bayesian methods like Extended Kalman Filtering. New approaches based on interval analysis intend to achieve the same goal in a guaranteed way. They assume that all model and measurement errors are bounded with known bounds without any other hypothesis on the probability distribution between bounds. We consider the localization as an interval constraint satisfaction problem (ICSP) solved by an Interval Constraint Propagation (ICP) algorithm. This paper introduces a new real-time ICP algorithm which corrects both position and heading. The proposed algorithm uses HC4 as a low level algorithm and has been validated with an outdoor vehicle equipped with a GPS receiver, a gyro and odometers. Furthermore, it is compared with the HC4 and 3B algorithms.
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