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A distributed multi robot SLAM system for environment learning

机译:一种用于环境学习的分布式多机器人SLAM系统

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This paper presents a multi mobile robot simultaneous localization and mapping (SLAM) system for feature based environment learning by using team of exploring robots. The environmental information is measured through the dynamic sensor network in the shape of moving robots with unknown initial poses. Each robot is equipped with 2D laser scanner and a webcam and it serves as a moving sensor node to perceive horizontal and vertical line features respectively. All the moving nodes are responsible to build the informational structured space. The proposed system is using a unified Extended Kalman Filter (EKF) based SLAM framework for each robot which eventually builds a line feature based partial 3D model of the environment. Each moving robotic sensor node then shares its feature based map model to other moving nodes which are in communication range. A global map model is then transformed after getting mutual pose estimation of the robots by matching mutual common map features in addition by taking visual confirmation of other robot. The proposed system has been tested in an indoor environment and results are shown in the paper.
机译:本文通过探索机器人团队介绍了基于特征的环境学习的多移动机器人同时定位和映射(SLAM)系统。通过具有未知初始姿势的移动机器人的动态传感器网络来测量环境信息。每个机器人都配备有2D激光扫描仪和网络摄像头,并且它用作移动传感器节点,以分别感知水平和垂直线特征。所有移动节点都负责构建信息化结构。该系统正在使用基于统一的扩展卡尔曼滤波器(EKF)基于机器人的SLAM框架,其最终构建基于环境的部分3D模型的基于线的部分3D模型。然后,每个移动的机器人传感器节点基于其特征的地图模型与在通信范围内的其他移动节点共享。然后通过匹配相互常见的常见地图特征,通过拍摄其他机器人的视觉确认,在机器人相互姿势估计之后改变全局地图模型。所提出的系统已经在室内环境中进行了测试,结果显示在纸张中。

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