Environment Model Generation And Localisation Of Mobile Indoor Autonomous Robots

Dhiya Maria, Ebey Sibi, Sharon Jerome, Yadukrishna N Kumar, Saju Nampoothiri, R. Anurag, C. K. Jayadas, P. S. Nijesh
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Abstract

Autonomous Mobile Robots (AMR) are gaining traction owing to their ability to perform complicated tasks that require navigation in complex and dynamic indoor environments, thus, leading to the replacement of manual workforce with an efficient and affordable robotic system with greater precision, accuracy and minimal error. This paper focuses on developing a system which is based on the two important aspects that determine the performance of an indoor AMR i.e. environment model generation and localisation of an indoor AMR. The perception system is based on the representation and processing of the data obtained from proprioceptive sensors. So far, the Bayesian Occupancy Grid (OG) mapping is the best approach for environment model generation in mobile robotics. The grid mapping approach is used owing to its higher efficiency, better accuracy, faster implementation and probabilistic framework. Localisation is complicated in indoor environments such as warehouses as GPS is not reliable. This is achieved using Hector Simultaneous Localisation And Mapping (SLAM) and Adaptive Monte Carlo Localisation (AMCL) techniques using data received from a 2D-Light Detection And Ranging (LiDAR). Robot Operating System (ROS) is used as the core to design the mobile robot system with high performance and scalability. The simulation environment and robot are created in Gazebo, and visualised using Rviz. The generated OG and localisation results are compared with the ground truth, and its performance analysis is done.
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移动室内自主机器人的环境模型生成与定位
自主移动机器人(AMR)由于能够在复杂和动态的室内环境中执行需要导航的复杂任务而获得牵引力,从而导致用更高精度,准确性和最小误差的高效且负担得起的机器人系统取代人工劳动力。本文的重点是开发一个基于两个重要方面的系统,这两个方面决定了室内AMR的性能,即环境模型的生成和室内AMR的定位。感知系统是基于本体感觉传感器获得的数据的表示和处理。迄今为止,贝叶斯占用网格(OG)映射是移动机器人环境模型生成的最佳方法。网格映射方法具有效率高、精度高、实现速度快和概率框架等优点。在仓库等室内环境中,定位是复杂的,因为GPS不可靠。这是通过使用Hector同步定位和测绘(SLAM)和自适应蒙特卡罗定位(AMCL)技术实现的,这些技术使用从2d光探测和测距(LiDAR)接收的数据。以机器人操作系统(ROS)为核心,设计高性能、可扩展性强的移动机器人系统。仿真环境和机器人是在Gazebo中创建的,并使用Rviz进行可视化。将生成的OG和定位结果与地面真实值进行了比较,并对其进行了性能分析。
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