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AEKF-SLAM: A New Algorithm for Robotic Underwater Navigation

机译:AEKF-SLAM:机器人水下导航的新算法

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摘要

In this work, we focus on key topics related to underwater Simultaneous Localization and Mapping (SLAM) applications. Moreover, a detailed review of major studies in the literature and our proposed solutions for addressing the problem are presented. The main goal of this paper is the enhancement of the accuracy and robustness of the SLAM-based navigation problem for underwater robotics with low computational costs. Therefore, we present a new method called AEKF-SLAM that employs an Augmented Extended Kalman Filter (AEKF)-based SLAM algorithm. The AEKF-based SLAM approach stores the robot poses and map landmarks in a single state vector, while estimating the state parameters via a recursive and iterative estimation-update process. Hereby, the prediction and update state (which exist as well in the conventional EKF) are complemented by a newly proposed augmentation stage. Applied to underwater robot navigation, the AEKF-SLAM has been compared with the classic and popular FastSLAM 2.0 algorithm. Concerning the dense loop mapping and line mapping experiments, it shows much better performances in map management with respect to landmark addition and removal, which avoid the long-term accumulation of errors and clutters in the created map. Additionally, the underwater robot achieves more precise and efficient self-localization and a mapping of the surrounding landmarks with much lower processing times. Altogether, the presented AEKF-SLAM method achieves reliably map revisiting, and consistent map upgrading on loop closure.
机译:在这项工作中,我们重点关注与水下同时定位和制图(SLAM)应用有关的关键主题。此外,还对文献中的主要研究进行了详细回顾,并提出了我们为解决该问题而提出的解决方案。本文的主要目的是以较低的计算成本来提高基于SLAM的水下机器人导航问题的准确性和鲁棒性。因此,我们提出了一种称为AEKF-SLAM的新方法,该方法采用了基于增强扩展卡尔曼滤波器(AEKF)的SLAM算法。基于AEKF的SLAM方法将机器人姿态和地图界标存储在单个状态向量中,同时通过递归和迭代的估计更新过程估计状态参数。因此,预测和更新状态(在常规EKF中也存在)由新提出的增强阶段进行补充。应用于水下机器人导航的AEKF-SLAM已与经典且流行的FastSLAM 2.0算法进行了比较。关于密集的循环映射和线映射实验,它在地标添加和移除方面在地图管理中显示出更好的性能,避免了在创建的地图中长期积累错误和混乱。此外,水下机器人可实现更精确,更有效的自我定位,并以更少的处理时间绘制周围地标。总之,提出的AEKF-SLAM方法可实现可靠的地图重访,并在闭合回路时实现一致的地图升级。

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