Multi-Sensor SLAM for efficient Navigation of a Mobile Robot

Muhammad Shahzad Alam Khan, Danish Hussian, Yasir Ali, Faisal Rehman, A. B. Aqeel, U. S. Khan
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引用次数: 1

Abstract

In this work, localization of the landmarks has been solved without prior knowledge of the environment. A well-known SLAM technique (Extended Kalman Filter and RGBD-SLAM) has been used to solve the localization of landmarks and to build 2D and 3D maps of the environment. SLAM techniques are implemented on a two-wheeled mobile robot by using an encoder to measure the feedback. The robot is programmed intelligently to autonomously navigate in an indoor static environment. A Sonar sensor is installed for for obstacle avoidance which reduces the computational cost. LiDAR and Microsoft Kinect (RGBD) sensors are used to localize the landmarks as well as to build the maps individually whenever an obstacle is detected. Experimental results show that the robot is capable to effectively determine the position of the landmarks and build a map in a Robotic operating system (ROS).
基于多传感器SLAM的移动机器人高效导航
在这项工作中,在没有事先了解环境的情况下解决了地标的定位问题。一种著名的SLAM技术(扩展卡尔曼滤波和RGBD-SLAM)已被用于解决地标的定位和建立二维和三维环境地图。利用编码器测量反馈,在两轮移动机器人上实现了SLAM技术。机器人经过智能编程,可以在室内静态环境中自主导航。安装声纳传感器进行避障,减少了计算成本。激光雷达和微软Kinect (RGBD)传感器用于定位地标,并在检测到障碍物时单独构建地图。实验结果表明,该机器人能够在机器人操作系统(ROS)中有效地确定地标的位置并构建地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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