同时定位和地图构建集成缓存的特征

Jorge Costa, Filipe Dias, R. Araújo
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引用次数: 1

摘要

定位是自主移动机器人导航中的一个重要问题。为了解决这个问题,机器人还必须能够学习、维护和更新它们所处环境的模型。本文描述了一种同时定位和地图构建(SLAM)方法的完整实现。SLAM是一个自动驾驶汽车从一个未知的位置开始,然后逐步建立一个世界地图,并根据地图估计机器人的绝对姿势的问题。采用扩展卡尔曼滤波(EKF)进行估计和数据融合。在感知方面,该方法结合自适应断点检测器、一阶和二阶分析以及RANSAC算法对激光扫描数据进行鲁棒拟合,以提取由线段及其不确定性组成的模型。为了加快SLAM测量预测和特征匹配阶段的地图搜索速度,在世界模型中引入了动态缓存。在Nomad 200上进行了仿真实验和实际机器人实验,验证了SLAM方法的有效性以及特征缓存方法的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous Localization and Map Building by Integrating a Cache of Features
Localization is an important problem in autonomous mobile robots navigation. To solve this problem, robots must also be able to learn, maintain and update models of their environments. This paper describes a full implementation of a simultaneous localization and map building (SLAM) method. SLAM is the problem of an autonomous vehicle starting at an unknown position which then incrementally builds a world map and estimates the robot absolute pose according to the map. An extended Kalman filter (EKF) is used for estimation and data fusion. For perception, the method combines an adaptive break point detector, first and second order analysis, and the RANSAC algorithm for robust fitting of laser scan data in order to extract a model composed of line segments and their uncertainty. A dynamic cache is proposed and introduced in the world model in order to speedup the map search in the measurement prediction and feature matching phases of SLAM. Experimental results of simulation and real-robot experiments with a Nomad 200 are presented demonstrating the effectiveness of the SLAM methods and improvements attained with the cache of feature method.
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