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A Data Association Algorithm for SLAM Based on Central Difference Joint Compatibility Criterion and Clustering

机译:基于中心差关节兼容性标准和聚类的SLAM数据关联算法

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摘要

A data association algorithm for simultaneous localization and mapping (SLAM) based on central difference joint compatibility (CDJC) criterion and clustering is proposed to obtain the data association results. Firstly, CDJC criterion is designed to calculate joint Mahalanobis distance. Secondly, ordering points to identify the clustering structure is used to divide all observed features into several groups. Thirdly, CDJC branch and bound method is designed to be performed in each group. The results based on simulation data and benchmark dataset show that the proposed algorithm has low computational complexity and provide accurate association results for SLAM of mobile robot.
机译:提出了一种基于中心差异关节兼容性(CDJC)标准和群集的同时定位和映射(SLAM)的数据关联算法,以获得数据关联结果。 首先,CDJC标准旨在计算联合马哈拉诺比斯距离。 其次,用于识别群集结构的排序点用于将所有观察到的特征划分为几个组。 第三,设计CDJC分支和绑定方法以在每个组中执行。 基于仿真数据和基准数据集的结果表明,该算法的计算复杂性低,为移动机器人庞大提供了准确的关联结果。

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