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Simultaneous Localization and Mapping Based on Kalman Filter and Extended Kalman Filter

机译:基于卡尔曼滤波器和扩展卡尔曼滤波器的同时定位和映射

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For more than two decades, the issue of simultaneous localization and mapping (SLAM) has gained more attention from researchers and remains an influential topic in robotics. Currently, various algorithms of the mobile robot SLAM have been investigated. However, the probability-based mobile robot SLAM algorithm is often used in the unknown environment. In this paper, the authors proposed two main algorithms of localization. First is the linear Kalman Filter (KF) SLAM, which consists of five phases, such as (a) motionless robot with absolute measurement, (b) moving vehicle with absolute measurement, (c) motionless robot with relative measurement, (d) moving vehicle with relative measurement, and (e) moving vehicle with relative measurement while the robot location is not detected. The second localization algorithm is the SLAM with the Extended Kalman Filter (EKF). Finally, the proposed SLAM algorithms are tested by simulations to be efficient and viable. The simulation results show that the presented SLAM approaches can accurately locate the landmark and mobile robot.
机译:超过二十年,同时本地化和映射(SLAM)的问题越来越关注研究人员,并仍然是机器人中的有影响力的话题。目前,已经研究了移动机器人SLAM的各种算法。然而,基于概率的移动机器人SLAM算法通常用于未知环境。在本文中,作者提出了两个定位的主要算法。首先是线性卡尔曼滤波器(KF)SLAM,由五个阶段组成,例如(a)具有绝对测量的一动机,(b)移动车辆,具有绝对测量的移动车辆,(c)与相对测量的一动机机器人,(d)移动具有相对测量的车辆,并且(e)未检测到机器人位置的相对测量的移动车辆。第二本地化算法是具有扩展卡尔曼滤波器(EKF)的SLAM。最后,通过模拟测试所提出的SLAM算法,以高效和可行。仿真结果表明,所呈现的SLAM方法可以准确地定位地标和移动机器人。

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