In a partially known navigation and localization environment

R. Cristi
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引用次数: 2

Abstract

An algorithm for autonomous navigation of a vehicle using sonar sensors is presented. The main feature is that it is designed to operate in mapped environments in the presence of unmapped obstacles. Key requirements are: 1) robust localization in the presence of unknown features and vehicle motion, 2) estimation of deterministic disturbances such as currents, and 3) localization of unknown objects. The approach is based on a suitable potential function describing the environment and on extended Kalman filtering techniques to provide recursive estimation of the vehicle location.
在部分已知的导航和定位环境中
提出了一种基于声纳传感器的车辆自主导航算法。其主要特点是,它被设计为在地图环境中运行,存在未映射的障碍物。关键要求是:1)在未知特征和车辆运动存在下的鲁棒定位,2)对确定性干扰(如电流)的估计,以及3)未知物体的定位。该方法基于描述环境的合适势函数和扩展卡尔曼滤波技术来提供车辆位置的递归估计。
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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