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Indoor Real-Time Localisation for Multiple Autonomous Vehicles Fusing Vision, Odometry and IMU Data

机译:多种自治车辆融合视觉,内径和IMU数据的室内实时定位

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摘要

Due to the increasing usage of service and industrial autonomous vehicles, a precise localisation is an essential component required in many applications, e.g. indoor robot navigation. In open outdoor environments, differential GPS systems can provide precise positioning information. However, there are many applications in which GPS cannot be used, such as indoor environments. In this work, we aim to increase robot autonomy providing a localisation system based on passive markers, that fuses three kinds of data through extended Kalman filters. With the use of low cost devices, the optical data are combined with other robots’ sensor signals, i.e. odometry and inertial measurement units (IMU) data, in order to obtain accurate localisation at higher tracking frequencies. The entire system has been developed fully integrated with the Robotic Operating System (ROS) and has been validated with real robots.
机译:由于服务和工业自治车辆的使用量增加,精确的定位是许多应用中所需的必要组件,例如,室内机器人导航。在开放式户外环境中,差分GPS系统可以提供精确定位信息。但是,有许多应用程序,其中GPS不能使用,例如室内环境。在这项工作中,我们的目标是增加基于被动标记的机器人自主提供定位系统,通过扩展卡尔曼滤波器来融合三种数据。通过使用低成本装置,光学数据与其他机器人的传感器信号组合,即ODOMERY和惯性测量单元(IMU)数据,以便在更高的跟踪频率下获得精确的定位。整个系统已经与机器人操作系统(ROS)完全集成,并已用真正的机器人验证。

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