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A Novel Combined SLAM Based on RBPF-SLAM and EIF-SLAM for Mobile System Sensing in a Large Scale Environment

机译:基于RBPF-SLAM和EIF-SLAM的新型组合SLAM用于大规模环境中的移动系统感知

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摘要

Mobile autonomous systems are very important for marine scientific investigation and military applications. Many algorithms have been studied to deal with the computational efficiency problem required for large scale Simultaneous Localization and Mapping (SLAM) and its related accuracy and consistency. Among these methods, submap-based SLAM is a more effective one. By combining the strength of two popular mapping algorithms, the Rao-Blackwellised particle filter (RBPF) and extended information filter (EIF), this paper presents a Combined SLAM—an efficient submap-based solution to the SLAM problem in a large scale environment. RBPF-SLAM is used to produce local maps, which are periodically fused into an EIF-SLAM algorithm. RBPF-SLAM can avoid linearization of the robot model during operating and provide a robust data association, while EIF-SLAM can improve the whole computational speed, and avoid the tendency of RBPF-SLAM to be over-confident. In order to further improve the computational speed in a real time environment, a binary-tree-based decision-making strategy is introduced. Simulation experiments show that the proposed Combined SLAM algorithm significantly outperforms currently existing algorithms in terms of accuracy and consistency, as well as the computing efficiency. Finally, the Combined SLAM algorithm is experimentally validated in a real environment by using the Victoria Park dataset.
机译:移动自主系统对于海洋科学研究和军事应用非常重要。已经研究了许多算法来解决大规模同时定位和映射(SLAM)所需的计算效率问题及其相关的准确性和一致性。在这些方法中,基于子图的SLAM是一种更有效的方法。通过结合两种常用的映射算法(Rao-Blackwellised粒子滤波器(RBPF)和扩展信息滤波器(EIF))的优势,本文提出了一种组合式SLAM,这是一种在大规模环境中基于有效子图的SLAM问题解决方案。 RBPF-SLAM用于生成局部地图,这些地图会定期融合到EIF-SLAM算法中。 RBPF-SLAM可以避免操作过程中机器人模型的线性化并提供可靠的数据关联,而EIF-SLAM可以提高整体计算速度,并避免RBPF-SLAM过于自信的趋势。为了进一步提高实时环境中的计算速度,引入了一种基于二叉树的决策策略。仿真实验表明,所提出的Combined SLAM算法在准确性和一致性以及计算效率方面均明显优于现有算法。最后,通过使用Victoria Park数据集,在实际环境中对组合SLAM算法进行了实验验证。

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