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A Visual-aided Inertial Navigation and Mapping System

机译:一种可视化辅助惯性导航和映射系统

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State estimation is a fundamental necessity for any application involving autonomous robots. This paper describes a visual-aided inertial navigation and mapping system for application to autonomous robots. The system, which relies on Kalman filtering, is designed to fuse the measurements obtained from a monocular camera, an inertial measurement unit (IMU) and a position sensor (GPS). The estimated state consists of the full state of the vehicle: the position, orientation, their first derivatives and the parameter errors of the inertial sensors (i.e., the bias of gyroscopes and accelerometers). The system also provides the spatial locations of the visual features observed by the camera. The proposed scheme was designed by considering the limited resources commonly available in small mobile robots, while it is intended to be applied to cluttered environments in order to perform fully vision-based navigation in periods where the position sensor is not available. Moreover, the estimated map of visual features would be suitable for multiple tasks: i) terrain analysis; ii) three-dimensional (3D) scene reconstruction; iii) localization, detection or perception of obstacles and generating trajectories to navigate around these obstacles; and iv) autonomous exploration. In this work, simulations and experiments with real data are presented in order to validate and demonstrate the performance of the proposal.
机译:国家估计是涉及自治机器人的任何应用的基本必要性。本文介绍了一种可视化辅助惯性导航和用于自主机器人的映射系统。依赖于卡尔曼滤波的系统被设计为熔化从单眼相机,惯性测量单元(IMU)和位置传感器(GPS)获得的测量。估计的状态包括车辆的全部状态:惯性传感器的位置,取向,第一衍生物和惯性传感器的参数误差(即陀螺仪和加速度计的偏差)。该系统还提供了相机观察到的视觉特征的空间位置。通过考虑小型移动机器人通常可用的有限资源,旨在旨在旨在应用于杂乱的环境,以便在位置传感器不可用的周期内进行完全视觉的导航。此外,视觉特征的估计地图适用于多项任务:i)地形分析; ii)三维(3D)场景重建; iii)障碍物的定位,检测或感知和产生轨迹,以导航这些障碍;和iv)自治探索。在这项工作中,提出了使用实际数据的模拟和实验,以验证和展示该提案的性能。

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