初始对应未知的多机器人SLAM:机器人交会案例

Xun S. Zhou, S. Roumeliotis
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引用次数: 233

摘要

本文提出了一种解决多机器人地图对齐问题的新方法,该方法使机器人团队能够在不知道其相对姿态的情况下构建联合地图。这项工作的关键贡献是一种最优算法,用于合并(不一定重叠)由不同机器人独立创建的地图。对机器人之间的相对姿态测量进行处理,以计算任意两个地图之间的坐标变换。机器人对机器人观测中的噪声,通过地图对齐过程传播,增加了转换后的地标位置估计的误差,并降低了合并地图的整体精度。当两个地图之间存在重叠时,出现两次的地标以约束的形式提供了额外的信息,从而提高了对齐精度。通过快速最近邻匹配算法识别重复的地标。为了降低搜索过程的计算复杂度,使用kd-tree来表示原始地图中的地标。用于匹配任何两个地标的标准是马氏距离。作为一种验证手段,我们展示了两个机器人绘制4800平方米区域的实验结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-robot SLAM with Unknown Initial Correspondence: The Robot Rendezvous Case
This paper presents a new approach to the multi-robot map-alignment problem that enables teams of robots to build joint maps without initial knowledge of their relative poses. The key contribution of this work is an optimal algorithm for merging (not necessarily overlapping) maps that are created by different robots independently. Relative pose measurements between pairs of robots are processed to compute the coordinate transformation between any two maps. Noise in the robot-to-robot observations, propagated through the map-alignment process, increases the error in the position estimates of the transformed landmarks, and reduces the overall accuracy of the merged map. When there is overlap between the two maps, landmarks that appear twice provide additional information, in the form of constraints, which increases the alignment accuracy. Landmark duplicates are identified through a fast nearest-neighbor matching algorithm. In order to reduce the computational complexity of this search process, a kd-tree is used to represent the landmarks in the original map. The criterion employed for matching any two landmarks is the Mahalanobis distance. As a means of validation, we present experimental results obtained from two robots mapping an area of 4,800 m2
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